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Data Mining

                   Data Warehousing




November 5, 2012                      1
Data Warehousing and OLAP
        Technology for Data Mining


       What is a data warehouse?

       A multi-dimensional data model

       Data warehouse architecture

       Data warehouse implementation

       From data warehousing to data mining

November 5, 2012                               2
What is Data Warehouse?

    Defined in many different ways, but not rigorously.
       A decision support database that is maintained

        separately from the organization’s operational
        database
       Supports information processing by providing a solid

        platform of consolidated, historical data for analysis.
    “A data warehouse is a subject-oriented, integrated,

     time-variant, and nonvolatile collection of data in support
     of management’s decision-making process.”—W. H.
     Inmon
    Data warehousing:

       The process of constructing and using data

        warehouses
November 5, 2012                                      3
Data Warehouse—Subject-Oriented

      Organized around major subjects, such as customer,
       product, sales.
      Focusing on the modeling and analysis of data for
       decision makers, not on daily operations or transaction
       processing.
      Provide a simple and concise view around particular
       subject issues by excluding data that are not useful in the
       decision support process.

November 5, 2012                                      4
Data Warehouse—Integrated
      Constructed by integrating multiple, heterogeneous
       data sources
         relational databases, flat files, on-line transaction

          records
      Data cleaning and data integration techniques are
       applied.
         Ensure consistency in naming conventions,

          encoding structures, attribute measures, etc. among
          different data sources
               E.g., Hotel price: currency, tax, breakfast covered, etc.
          When data is moved to the warehouse, it is
           converted.

November 5, 2012                                                   5
Data Warehouse—Time Variant

     The time horizon for the data warehouse is significantly
      longer than that of operational systems.
         Operational database: current value data.
         Data warehouse data: provide information from a
          historical perspective (e.g., past 5-10 years)
     Every key structure in the data warehouse
         Contains an element of time, explicitly or implicitly
         But the key of operational data may or may not contain
          “time element”.
November 5, 2012                                         6
Data Warehouse—Non-Volatile

     A physically separate store of data transformed from the
      operational environment.
     Operational update of data does not occur in the data
      warehouse environment.
         Does not require transaction processing, recovery,
          and concurrency control mechanisms
         Requires only two operations in data accessing:
           
               initial loading of data and access of data.

November 5, 2012                                             7
Data Warehouse vs. Heterogeneous DBMS


     Traditional heterogeneous DB integration:
         Build wrappers/mediators on top of heterogeneous databases
         Query driven approach
           
               When a query is posed to a client site, a meta-dictionary is
               used to translate the query into queries appropriate for
               individual heterogeneous sites involved, and the results are
               integrated into a global answer set
     Data warehouse: update-driven, high performance
         Information from heterogeneous sources is integrated in advance
          and stored in warehouses for direct query and analysis


November 5, 2012                                                8
Data Warehouse vs. Operational DBMS
     OLTP (on-line transaction processing)
         Major task of traditional relational DBMS
         Day-to-day operations: purchasing, inventory, banking,
          manufacturing, payroll, registration, accounting, etc.
     OLAP (on-line analytical processing)
         Major task of data warehouse system
         Data analysis and decision making
     Distinct features (OLTP vs. OLAP):
         User and system orientation: customer vs. market
         Data contents: current, detailed vs. historical, consolidated
         Database design: ER + application vs. star + subject
         View: current, local vs. evolutionary, integrated
         Access patterns: update vs. read-only but complex queries
November 5, 2012                                                 9
OLTP vs. OLAP
                        OLTP                        OLAP
   users                clerk, IT professional      knowledge worker
   function             day to day operations       decision support
   DB design            application-oriented        subject-oriented
   data                 current, up-to-date         historical,
                        detailed, flat relational   summarized, multidimensional
                        isolated                    integrated, consolidated
   usage                repetitive                  ad-hoc
   access               read/write                  lots of scans
                        index/hash on prim. key
   unit of work         short, simple transaction   complex query
   # records accessed   tens                        millions
   #users               thousands                   hundreds
   DB size              100MB-GB                    100GB-TB
   metric               transaction throughput      query throughput, response

November 5, 2012                                                         10
Why Separate Data Warehouse?
   High performance for both systems
      DBMS— tuned for OLTP: access methods, indexing,

       concurrency control, recovery
      Warehouse—tuned for OLAP: complex OLAP queries,

       multidimensional view, consolidation.
   Different functions and different data:

      missing data: Decision support requires historical data

       which operational DBs do not typically maintain
      data consolidation: DS requires consolidation

       (aggregation, summarization) of data from
       heterogeneous sources
      data quality: different sources typically use inconsistent

       data representations, codes and formats which have to
       be reconciled
November 5, 2012                                       11
Data Warehousing and OLAP
        Technology for Data Mining


       What is a data warehouse?

       A multi-dimensional data model

       Data warehouse architecture

       Data warehouse implementation

       From data warehousing to data mining

November 5, 2012                               12
Conceptual Modeling of
             Data Warehouses
     Modeling data warehouses: dimensions & measures
         Star schema: A fact table in the middle connected to a
          set of dimension tables
         Snowflake schema: A refinement of star schema
          where some dimensional hierarchy is normalized into a
          set of smaller dimension tables, forming a shape
          similar to snowflake
         Fact constellations: Multiple fact tables share
          dimension tables, viewed as a collection of stars,
       therefore called galaxy schema or fact constellation
November 5, 2012                                   13
Example of Star Schema
 time
 time_key                                              item
 day                                                 item_key
 day_of_the_week              Sales    Fact Table    item_name
 month                                               brand
 quarter                                time_key     type
 year                                                supplier_type
                                         item_key
                                       branch_key
        branch                                       location
                                      location_key
        branch_key                                   location_key
        branch_name                    units_sold    street
        branch_type                                  city
                                      dollars_sold   province_or_street
                                                     country
                                        avg_sales
                   Measures

November 5, 2012                                           14
Example of Snowflake Schema
 time
 time_key                                        item
 day                                           item_key             supplier
 day_of_the_week        Sales     Fact Table   item_name            supplier_key
 month                                         brand                supplier_type
 quarter                          time_key     type
 year                              item_key    supplier_key

                                 branch_key
                                               location
   branch                       location_key
                                               location_key
    branch_key
                                 units_sold    street
    branch_name
                                               city_key            city
    branch_type
                                dollars_sold
                                                                   city_key
                                  avg_sales                        city
                                                                   province_or_street
             Measures                                              country

November 5, 2012                                              15
Example of Fact Constellation
time
time_key                                       item              Shipping Fact Table
day                                         item_key
day_of_the_week       Sales    Fact Table   item_name                time_key
month                                       brand
quarter                   time_key          type                       item_key
year                                        supplier_type            shipper_key
                              item_key
                                                                   from_location
                       branch_key
 branch                  location_key       location                  to_location
 branch_key                                 location_key             dollars_cost
 branch_name                  units_sold
                                            street
 branch_type              dollars_sold      city                    units_shipped
                                            province_or_street
                              avg_sales     country                      shipper
           Measures                                                      shipper_key
                                                                         shipper_name
                                                                         location_key
November 5, 2012                                                    16   shipper_type
Measures: Three Categories
     distributive: if the result derived by applying the function to
      n aggregate values is the same as that derived by
      applying the function on all the data without partitioning.
             E.g., count(), sum(), min(), max().
     algebraic: if it can be computed by an algebraic function
      with M arguments (where M is a bounded integer), each
      of which is obtained by applying a distributive aggregate
      function.
          
              E.g., avg(), min_N(), standard_deviation().
     holistic: if there is no constant bound on the storage size
      needed to describe a subaggregate.
             E.g., median(), mode(), rank().
November 5, 2012                                            17
A Concept Hierarchy: Dimension (location)

 all                                  all


region                   Europe             ...        North_America


country        Germany      ...   Spain             Canada     ...   Mexico


 city        Frankfurt   ...          Vancouver ...          Toronto


 office                           L. Chan     ...   M. Wind

November 5, 2012                                              18
View of Warehouses and Hierarchies




November 5, 2012                     19
From Tables and
             Spreadsheets to Data Cubes

       A data warehouse is based on a multidimensional data model
        which views data in the form of a data cube
       A data cube, such as sales, allows data to be modeled and viewed
        in multiple dimensions
            Dimension tables, such as item (item_name, brand, type), or
             time(day, week, month, quarter, year)
            Fact table contains measures (such as dollars_sold) and keys
             to each of the related dimension tables
       In data warehousing literature, an n-D base cube is called a base
        cuboid. The top most 0-D cuboid, which holds the highest-level of
        summarization, is called the apex cuboid. The lattice of cuboids
        forms a data cube.
November 5, 2012                                              20
Multidimensional Data
            Sales volume as a function of product, month,
             and region
                                   Dimensions: Product, Location, Time
                                   Hierarchical summarization paths
         on
      gi




                                       Industry Region          Year
   Re




                                       Category Country Quarter
   Product




                                       Product    City     Month       Week

                                                  Office        Day


              Month
November 5, 2012                                           21
A Sample Data Cube
                                                  Total annual sales
                             Date                  of TV in U.S.A.
               1Qtr   2Qtr    3Qtr   4Qtr   sum
        t
      uc


          TV
    od




        PC                                        U.S.A
  Pr




      VCR




                                                            Country
    sum
                                                  Canada

                                                  Mexico


                                                   sum




November 5, 2012                                           22
Cuboids Corresponding to the Cube

                             all
                                                                    0-D(apex) cuboid
            product        date           country
                                                                    1-D cuboids

    product,date        product,country             date, country
                                                                    2-D cuboids


                                                                    3-D(base) cuboid
                      product, date, country




November 5, 2012                                                          23
Typical OLAP Operations

      Roll up (drill-up): summarize data
           by climbing up hierarchy or by dimension reduction
      Drill down (roll down): reverse of roll-up
           from higher level summary to lower level summary or detailed
            data, or introducing new dimensions
      Slice and dice:
           project and select
      Pivot (rotate):
           reorient the cube, visualization, 3D to series of 2D planes.
      Other operations
           drill across: involving (across) more than one fact table
           drill through: through the bottom level of the cube to its back-
            end relational tables (using SQL)
November 5, 2012                                                  24
Data Warehousing and OLAP
        Technology for Data Mining


       What is a data warehouse?

       A multi-dimensional data model

       Data warehouse architecture

       Data warehouse implementation

       From data warehousing to data mining

November 5, 2012                               25
Multi-Tiered Architecture

                               Monitor
                                  &          OLAP Server
  other          Metadata
  source                      Integrator
  s                                                        Analysis
 Operational   Extract                                     Query
               Transform      Data             Serve       Reports
 DBs           Load
               Refresh
                            Warehouse                      Data mining




                             Data Marts


Data Sources     Data Storage              OLAP Engine Front-End Tools
November 5, 2012                                          26
Three Data Warehouse Models
    Enterprise warehouse
       collects all of the information about subjects spanning

        the entire organization
    Data Mart
       a subset of corporate-wide data that is of value to a

        specific groups of users. Its scope is confined to
        specific, selected groups, such as marketing data mart
         
             Independent vs. dependent (directly from warehouse) data mart
  Virtual warehouse
     A set of views over operational databases

     Only some of the possible summary views may be

      materialized
November 5, 2012                                27
Data Warehouse Development:
        A Recommended Approach
                                           Multi-Tier Data
                                           Warehouse
              Distributed
              Data Marts


                                                Enterprise
       Data            Data
                                                Data
       Mart            Mart
                                                Warehouse

          Model refinement   Model refinement


        Define a high-level corporate data model
November 5, 2012                                             28
OLAP Server Architectures
    Relational OLAP (ROLAP)
       Use relational or extended-relational DBMS to store and manage

        warehouse data and OLAP middle ware to support missing pieces
       Include optimization of DBMS backend, implementation of

        aggregation navigation logic, and additional tools and services
       Greater scalability

    Multidimensional OLAP (MOLAP)
       Array-based multidimensional storage engine (sparse matrix

        techniques)
       Fast indexing to pre-computed summarized data

    Hybrid OLAP (HOLAP)
       User flexibility, e.g., low level: relational, high-level: array

    Specialized SQL servers
       Specialized support for SQL queries over star/snowflake schemas

November 5, 2012                                            29
Data Warehousing and OLAP
        Technology for Data Mining


       What is a data warehouse?

       A multi-dimensional data model

       Data warehouse architecture

       Data warehouse implementation

       From data warehousing to data mining

November 5, 2012                               30
Efficient Data Cube Computation


     Data cube can be viewed as a lattice of cuboids
         The bottom-most cuboid is the base cuboid
         The top-most cuboid (apex) contains only one cell
         How many cuboids in an n-dimensional cube?


                                 n
                             2

November 5, 2012                                      31
Problem: How to Implement Data
           Cube Efficiently?
      Physically materialize the whole data cube
          Space consuming in storage and time consuming in
           construction
          Indexing overhead
      Materialize nothing
          No extra space needed but unacceptable response time
      Materialize only part of the data cube
          Intuition: precompute frequently-asked queries?
          However: each cell of data cube is an aggregation, the value of
           many cells are dependent on the values of other cells in the
           data cube
          A better approach: materialize queries which can help answer
           many other queries quickly
November 5, 2012                                               32
Motivating example

      Assume the data cube:
         Stored in a relational DB (MDDB is not very

          scalable)
         Different cuboids are assigned to different tables

         The cost of answering a query is proportional to the

          number of rows examined
      Use TPC-D decision-support benchmark
         Attributes: part, supplier, and customer

         Measure: total sales

         3-D data cube: cell (p, s ,c)


November 5, 2012                                     33
Motivating example (cont.)

    Hypercube lattice: the eight views (cuboids) constructed
     by grouping on some of part, supplier, and customer


                           Finding total sales grouped by part
                           Processing 6 million rows if cuboid pc is
                           materialized
                           Processing 0.2 million rows if cuboid p is
                           materialized
                           Processing 0.8 million rows if cuboid ps is
                           materialized


November 5, 2012                                          34
Motivating example (cont.)
   How to find a good set of queries?
    How many views must be materialized to get

     reasonable performance?
    Given space S, what views should be

     materialized to get the minimal average query
     cost?
    If we are willing to tolerate an X% degradation

     in average query cost from a fully materialized
     data cube, how much space can we save over
     the fully materialized data cube?
November 5, 2012                             35
Dependence relation

   The dependence relation on queries:
    Q1  Q2 iff Q1 can be answered using only the results
         _
     of query Q2 (Q1 is dependent on Q2).
     In which
       _ is a partial order, and
        
       There is a top element, a view upon which is

        dependent (base cuboid)
    Example:

       (part) _ (part, customer)
                
       (part) _ (customer) and (customer) _ part)
                                            (

November 5, 2012                                  36
Lattice notation
      A lattice with set of elements L and
       dependance relation _ is denoted by <L, _>
                                      
      a  b means that a _ b, and a ≠ b
                               
      ancestor(a) = {b | a _  }b
      descendant(a) = {b | b _  }a
      next(a) = {b | a  ∃ c, a c , c b}
                            b,           
      Lattice diagrams: a lattice can be represented
       as a graph, where the lattice elements (views)
       are nodes and there is an edge from a below b
       iff b is in next(a).
November 5, 2012                             37
Hierarchies

      Dimensions of a data cube consist of more than
       one attribute, organized as hierarchies
      Operations on hierarchies: roll up and drill down
      Hierarchies are not all total orders but partial
       orders on the dimension:
        Consider the time dimension with the hierarchy
          day, week, month, and year :
        (month) _ (week) and (week) _ (month)
                                       
        Since month (year) can’t be divided by weeks

November 5, 2012                               38
Hierachies (cont.)




November 5, 2012           39
The lattice framework:
       Composite lattices

      Query dependencies can be:
          caused by the interaction of the different dimensions (hyp
          within a dimension caused by attribute hierarchies
       
           across attribute hierarchies of different dimensions
      Views can be represented as an n-tuple (a 1, a2,
       … ,an), where ai is a point in the hierachy for the
       i-th dimension
      (a1, a2, … ,an) _  1, b2, … ,bn) iff ai _ bi  all i
                         (b                          for

November 5, 2012                                       40
The lattice framework:
      Composite lattices (cont.)
   Combining two hierarchical dimensions

                            (n, s) _ (c, s)
                                   




    Dimension hierarchies

                                                Lattice framework
                                              (Direct-product of lattices)

November 5, 2012                                          41
The advantages of lattice framework

      Provide a clean framework to reason with
       dimensional hierarchies
      We can model the common queries asked by
       users better
      Tells us in what order to materialize the views




November 5, 2012                               42
The linear cost model
      For <L, _>, Q _ QA, C(Q) is the number of rows in the
                       
       table for that query QA used to compute Q
        This linear relationship can be expressed as:
                             T=m*S+c
       (m: time/size ratio; c: query overhead; S: size of the view)
        Validation of the model using TPC-D data:




November 5, 2012                                               43
The benefit of a materialized view
      Denote the benefit of a materialized view v, relative to
       some set of views S, as B(v, S)
      For each w _ v, define BW by:
                   
         Let C(v) be the cost of view v

         Let u be the view of least cost in S such that w _ u
                                                           
          (such u must exist)
         B = C(u) – C(v)           if C(v) < C(u)
            W

              =0                    if C(v) ≥ C(u)
         B is the benefit that it can obtain from v
            W
      Define B(v, S) = Σ w < v Bw which means how v can
       improve the cost of evaluating views, including itself

November 5, 2012                                       44
The greedy algorithm

      Objective
         Assume materializing a fixed number of views, regardless of

          the space they use
         How to minimize the average time taken to evaluate a view?

      The greedy algorithm for materializing a set of k views




      Performance: Greedy/Optimal ≥ 1 – (1 – 1/k) k ≥ (e - 1) / e
November 5, 2012                                                45
Greedy algorithm: example 1
      Suppose we want to choose three views (k = 3)




      The selection is optimal (reduce cost from 800 to 420)
November 5, 2012                                     46
Greedy algorithm: example 2
     Suppose k = 2
        Greedy algorithm picks c and b: benefit = 101*41+100*21 = 6241

        Optimal selection is b and d: benefit = 100*41+100*41 = 8200

        However, greedy/optimal = 6241/8200 > 3/4




November 5, 2012                                            47
An experiment: how many views
        should be materialized?
       Time and space for the greedy selection for the TPC-
        D-based example (full materialization is not efficient)




                                             Number of materialized views
November 5, 2012                                           48
Indexing OLAP Data: Bitmap Index
       Index on a particular column
       Each value in the column has a bit vector: bit-op is fast
       The length of the bit vector: # of records in the base table
       The i-th bit is set if the i-th row of the base table has the value for
        the indexed column
       not suitable for high cardinality domains

  Base table              Index on Region                   Index on Type
Cust   Region    Type RecID Asia Europe America RecID Retail Dealer
C1     Asia      Retail 1    1     0      0       1     1      0
C2     Europe    Dealer 2    0     1      0       2     0      1
C3     Asia      Dealer 3    1     0      0       3     0      1
C4     America   Retail 4    0     0      1       4     1      0
C5     Europe    Dealer 5    0     1      0       5     0      1
November 5, 2012                                                   49
Indexing OLAP Data: Join Indices
   Join index: JI(R-id, S-id) where R (R-id, …)  S
    (S-id, …)
   Traditional indices map the values to a list of
    record ids
      It materializes relational join in JI file and

        speeds up relational join — a rather costly
        operation
   In data warehouses, join index relates the values
    of the dimensions of a start schema to rows in
    the fact table.
      E.g. fact table: Sales and two dimensions city

        and product
           A join index on city maintains for each

            distinct city a list of R-IDs of the tuples
            recording the Sales in the city
      Join indices can span multiple dimensions

November 5, 2012                                          50
Efficient Processing of OLAP Queries

   Determine which operations should be performed on the
    available cuboids:
       transform drill, roll, etc. into corresponding SQL and/or
        OLAP operations, e.g, dice = selection + projection
   Determine to which materialized cuboid(s) the relevant
    operations should be applied.
   Exploring indexing structures and compressed vs. dense
    array structures in MOLAP

November 5, 2012                                        51
Metadata Repository
    Meta data is the data defining warehouse objects. It has the following
     kinds
       Description of the structure of the warehouse

              schema, view, dimensions, hierarchies, derived data defn, data mart
               locations and contents
         Operational meta-data
              data lineage (history of migrated data and transformation path),
               currency of data (active, archived, or purged), monitoring information
               (warehouse usage statistics, error reports, audit trails)
         The algorithms used for summarization
         The mapping from operational environment to the data warehouse
         Data related to system performance
              warehouse schema, view and derived data definitions
         Business data
              business terms and definitions, ownership of data, charging policies
November 5, 2012                                                        52
Data Warehouse Back-End Tools and
          Utilities
    Data extraction:
         get data from multiple, heterogeneous, and external
          sources
    Data cleaning:
         detect errors in the data and rectify them when
          possible
    Data transformation:
         convert data from legacy or host format to warehouse
          format
    Load:
         sort, summarize, consolidate, compute views, check
          integrity, and build indicies and partitions
    Refresh
     propagate the updates from the data sources to the
      

     warehouse
November 5, 2012                                 53
Data Warehousing and OLAP
        Technology for Data Mining


       What is a data warehouse?

       A multi-dimensional data model

       Data warehouse architecture

       Data warehouse implementation

       From data warehousing to data mining

November 5, 2012                               54
Data Warehouse Usage
      Three kinds of data warehouse applications
          Information processing
            
                supports querying, basic statistical analysis, and reporting
                using crosstabs, tables, charts and graphs
          Analytical processing
            
                multidimensional analysis of data warehouse data
            
                supports basic OLAP operations, slice-dice, drilling,
                pivoting
          Data mining
               knowledge discovery from hidden patterns
            
                supports associations, constructing analytical models,
                performing classification and prediction, and presenting the
                mining results using visualization tools.
November 5, 2012                                                 55
From On-Line Analytical Processing
           to On Line Analytical Mining
           (OLAM)

      Why online analytical mining?
          High quality of data in data warehouses
            
              DW contains integrated, consistent, cleaned data
          Available information processing structure
           surrounding data warehouses
            
              ODBC, OLEDB, Web accessing, service facilities,
              reporting and OLAP tools
          OLAP-based exploratory data analysis
             mining with drilling, dicing, pivoting, etc.

          On-line selection of data mining functions
             integration and swapping of multiple mining

              functions, algorithms, and tasks.
November 5, 2012                                    56
An OLAM Architecture
 Mining query                                 Mining result      Layer4
                                                              User Interface
                          User GUI API
                                                                 Layer3
        OLAM                                    OLAP
        Engine                                  Engine        OLAP/OLAM

                           Data Cube API


                                                                 Layer2
                             MDDB
                                                                 MDDB
                                                Meta
                                                Data
  Filtering&Integration    Database API         Filtering
                                                                 Layer1
                            Data cleaning     Data
          Databases                                               Data
                           Data integration Warehouse
November 5, 2012                                              57Repository
Summary
      Data warehouse
           A subject-oriented, integrated, time-variant, and nonvolatile collection of
            data in support of management’s decision-making process
      A multi-dimensional model of a data warehouse
           Star schema, snowflake schema, fact constellations
           A data cube consists of dimensions & measures
      OLAP operations: drilling, rolling, slicing, dicing and pivoting
      OLAP servers: ROLAP, MOLAP, HOLAP
      Efficient computation of data cubes
           Partial vs. full vs. no materialization
           Multiway array aggregation
           Bitmap index and join index implementations
      Further development of data cube technology
           Discovery-drive and multi-feature cubes
           From OLAP to OLAM (on-line analytical mining)
November 5, 2012                                                                58

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Data warehousing

  • 1. Data Mining Data Warehousing November 5, 2012 1
  • 2. Data Warehousing and OLAP Technology for Data Mining  What is a data warehouse?  A multi-dimensional data model  Data warehouse architecture  Data warehouse implementation  From data warehousing to data mining November 5, 2012 2
  • 3. What is Data Warehouse?  Defined in many different ways, but not rigorously.  A decision support database that is maintained separately from the organization’s operational database  Supports information processing by providing a solid platform of consolidated, historical data for analysis.  “A data warehouse is a subject-oriented, integrated, time-variant, and nonvolatile collection of data in support of management’s decision-making process.”—W. H. Inmon  Data warehousing:  The process of constructing and using data warehouses November 5, 2012 3
  • 4. Data Warehouse—Subject-Oriented  Organized around major subjects, such as customer, product, sales.  Focusing on the modeling and analysis of data for decision makers, not on daily operations or transaction processing.  Provide a simple and concise view around particular subject issues by excluding data that are not useful in the decision support process. November 5, 2012 4
  • 5. Data Warehouse—Integrated  Constructed by integrating multiple, heterogeneous data sources  relational databases, flat files, on-line transaction records  Data cleaning and data integration techniques are applied.  Ensure consistency in naming conventions, encoding structures, attribute measures, etc. among different data sources  E.g., Hotel price: currency, tax, breakfast covered, etc.  When data is moved to the warehouse, it is converted. November 5, 2012 5
  • 6. Data Warehouse—Time Variant  The time horizon for the data warehouse is significantly longer than that of operational systems.  Operational database: current value data.  Data warehouse data: provide information from a historical perspective (e.g., past 5-10 years)  Every key structure in the data warehouse  Contains an element of time, explicitly or implicitly  But the key of operational data may or may not contain “time element”. November 5, 2012 6
  • 7. Data Warehouse—Non-Volatile  A physically separate store of data transformed from the operational environment.  Operational update of data does not occur in the data warehouse environment.  Does not require transaction processing, recovery, and concurrency control mechanisms  Requires only two operations in data accessing:  initial loading of data and access of data. November 5, 2012 7
  • 8. Data Warehouse vs. Heterogeneous DBMS  Traditional heterogeneous DB integration:  Build wrappers/mediators on top of heterogeneous databases  Query driven approach  When a query is posed to a client site, a meta-dictionary is used to translate the query into queries appropriate for individual heterogeneous sites involved, and the results are integrated into a global answer set  Data warehouse: update-driven, high performance  Information from heterogeneous sources is integrated in advance and stored in warehouses for direct query and analysis November 5, 2012 8
  • 9. Data Warehouse vs. Operational DBMS  OLTP (on-line transaction processing)  Major task of traditional relational DBMS  Day-to-day operations: purchasing, inventory, banking, manufacturing, payroll, registration, accounting, etc.  OLAP (on-line analytical processing)  Major task of data warehouse system  Data analysis and decision making  Distinct features (OLTP vs. OLAP):  User and system orientation: customer vs. market  Data contents: current, detailed vs. historical, consolidated  Database design: ER + application vs. star + subject  View: current, local vs. evolutionary, integrated  Access patterns: update vs. read-only but complex queries November 5, 2012 9
  • 10. OLTP vs. OLAP OLTP OLAP users clerk, IT professional knowledge worker function day to day operations decision support DB design application-oriented subject-oriented data current, up-to-date historical, detailed, flat relational summarized, multidimensional isolated integrated, consolidated usage repetitive ad-hoc access read/write lots of scans index/hash on prim. key unit of work short, simple transaction complex query # records accessed tens millions #users thousands hundreds DB size 100MB-GB 100GB-TB metric transaction throughput query throughput, response November 5, 2012 10
  • 11. Why Separate Data Warehouse?  High performance for both systems  DBMS— tuned for OLTP: access methods, indexing, concurrency control, recovery  Warehouse—tuned for OLAP: complex OLAP queries, multidimensional view, consolidation.  Different functions and different data:  missing data: Decision support requires historical data which operational DBs do not typically maintain  data consolidation: DS requires consolidation (aggregation, summarization) of data from heterogeneous sources  data quality: different sources typically use inconsistent data representations, codes and formats which have to be reconciled November 5, 2012 11
  • 12. Data Warehousing and OLAP Technology for Data Mining  What is a data warehouse?  A multi-dimensional data model  Data warehouse architecture  Data warehouse implementation  From data warehousing to data mining November 5, 2012 12
  • 13. Conceptual Modeling of Data Warehouses  Modeling data warehouses: dimensions & measures  Star schema: A fact table in the middle connected to a set of dimension tables  Snowflake schema: A refinement of star schema where some dimensional hierarchy is normalized into a set of smaller dimension tables, forming a shape similar to snowflake  Fact constellations: Multiple fact tables share dimension tables, viewed as a collection of stars, therefore called galaxy schema or fact constellation November 5, 2012 13
  • 14. Example of Star Schema time time_key item day item_key day_of_the_week Sales Fact Table item_name month brand quarter time_key type year supplier_type item_key branch_key branch location location_key branch_key location_key branch_name units_sold street branch_type city dollars_sold province_or_street country avg_sales Measures November 5, 2012 14
  • 15. Example of Snowflake Schema time time_key item day item_key supplier day_of_the_week Sales Fact Table item_name supplier_key month brand supplier_type quarter time_key type year item_key supplier_key branch_key location branch location_key location_key branch_key units_sold street branch_name city_key city branch_type dollars_sold city_key avg_sales city province_or_street Measures country November 5, 2012 15
  • 16. Example of Fact Constellation time time_key item Shipping Fact Table day item_key day_of_the_week Sales Fact Table item_name time_key month brand quarter time_key type item_key year supplier_type shipper_key item_key from_location branch_key branch location_key location to_location branch_key location_key dollars_cost branch_name units_sold street branch_type dollars_sold city units_shipped province_or_street avg_sales country shipper Measures shipper_key shipper_name location_key November 5, 2012 16 shipper_type
  • 17. Measures: Three Categories  distributive: if the result derived by applying the function to n aggregate values is the same as that derived by applying the function on all the data without partitioning.  E.g., count(), sum(), min(), max().  algebraic: if it can be computed by an algebraic function with M arguments (where M is a bounded integer), each of which is obtained by applying a distributive aggregate function.  E.g., avg(), min_N(), standard_deviation().  holistic: if there is no constant bound on the storage size needed to describe a subaggregate.  E.g., median(), mode(), rank(). November 5, 2012 17
  • 18. A Concept Hierarchy: Dimension (location) all all region Europe ... North_America country Germany ... Spain Canada ... Mexico city Frankfurt ... Vancouver ... Toronto office L. Chan ... M. Wind November 5, 2012 18
  • 19. View of Warehouses and Hierarchies November 5, 2012 19
  • 20. From Tables and Spreadsheets to Data Cubes  A data warehouse is based on a multidimensional data model which views data in the form of a data cube  A data cube, such as sales, allows data to be modeled and viewed in multiple dimensions  Dimension tables, such as item (item_name, brand, type), or time(day, week, month, quarter, year)  Fact table contains measures (such as dollars_sold) and keys to each of the related dimension tables  In data warehousing literature, an n-D base cube is called a base cuboid. The top most 0-D cuboid, which holds the highest-level of summarization, is called the apex cuboid. The lattice of cuboids forms a data cube. November 5, 2012 20
  • 21. Multidimensional Data  Sales volume as a function of product, month, and region Dimensions: Product, Location, Time Hierarchical summarization paths on gi Industry Region Year Re Category Country Quarter Product Product City Month Week Office Day Month November 5, 2012 21
  • 22. A Sample Data Cube Total annual sales Date of TV in U.S.A. 1Qtr 2Qtr 3Qtr 4Qtr sum t uc TV od PC U.S.A Pr VCR Country sum Canada Mexico sum November 5, 2012 22
  • 23. Cuboids Corresponding to the Cube all 0-D(apex) cuboid product date country 1-D cuboids product,date product,country date, country 2-D cuboids 3-D(base) cuboid product, date, country November 5, 2012 23
  • 24. Typical OLAP Operations  Roll up (drill-up): summarize data  by climbing up hierarchy or by dimension reduction  Drill down (roll down): reverse of roll-up  from higher level summary to lower level summary or detailed data, or introducing new dimensions  Slice and dice:  project and select  Pivot (rotate):  reorient the cube, visualization, 3D to series of 2D planes.  Other operations  drill across: involving (across) more than one fact table  drill through: through the bottom level of the cube to its back- end relational tables (using SQL) November 5, 2012 24
  • 25. Data Warehousing and OLAP Technology for Data Mining  What is a data warehouse?  A multi-dimensional data model  Data warehouse architecture  Data warehouse implementation  From data warehousing to data mining November 5, 2012 25
  • 26. Multi-Tiered Architecture Monitor & OLAP Server other Metadata source Integrator s Analysis Operational Extract Query Transform Data Serve Reports DBs Load Refresh Warehouse Data mining Data Marts Data Sources Data Storage OLAP Engine Front-End Tools November 5, 2012 26
  • 27. Three Data Warehouse Models  Enterprise warehouse  collects all of the information about subjects spanning the entire organization  Data Mart  a subset of corporate-wide data that is of value to a specific groups of users. Its scope is confined to specific, selected groups, such as marketing data mart  Independent vs. dependent (directly from warehouse) data mart  Virtual warehouse  A set of views over operational databases  Only some of the possible summary views may be materialized November 5, 2012 27
  • 28. Data Warehouse Development: A Recommended Approach Multi-Tier Data Warehouse Distributed Data Marts Enterprise Data Data Data Mart Mart Warehouse Model refinement Model refinement Define a high-level corporate data model November 5, 2012 28
  • 29. OLAP Server Architectures  Relational OLAP (ROLAP)  Use relational or extended-relational DBMS to store and manage warehouse data and OLAP middle ware to support missing pieces  Include optimization of DBMS backend, implementation of aggregation navigation logic, and additional tools and services  Greater scalability  Multidimensional OLAP (MOLAP)  Array-based multidimensional storage engine (sparse matrix techniques)  Fast indexing to pre-computed summarized data  Hybrid OLAP (HOLAP)  User flexibility, e.g., low level: relational, high-level: array  Specialized SQL servers  Specialized support for SQL queries over star/snowflake schemas November 5, 2012 29
  • 30. Data Warehousing and OLAP Technology for Data Mining  What is a data warehouse?  A multi-dimensional data model  Data warehouse architecture  Data warehouse implementation  From data warehousing to data mining November 5, 2012 30
  • 31. Efficient Data Cube Computation  Data cube can be viewed as a lattice of cuboids  The bottom-most cuboid is the base cuboid  The top-most cuboid (apex) contains only one cell  How many cuboids in an n-dimensional cube? n 2 November 5, 2012 31
  • 32. Problem: How to Implement Data Cube Efficiently?  Physically materialize the whole data cube  Space consuming in storage and time consuming in construction  Indexing overhead  Materialize nothing  No extra space needed but unacceptable response time  Materialize only part of the data cube  Intuition: precompute frequently-asked queries?  However: each cell of data cube is an aggregation, the value of many cells are dependent on the values of other cells in the data cube  A better approach: materialize queries which can help answer many other queries quickly November 5, 2012 32
  • 33. Motivating example  Assume the data cube:  Stored in a relational DB (MDDB is not very scalable)  Different cuboids are assigned to different tables  The cost of answering a query is proportional to the number of rows examined  Use TPC-D decision-support benchmark  Attributes: part, supplier, and customer  Measure: total sales  3-D data cube: cell (p, s ,c) November 5, 2012 33
  • 34. Motivating example (cont.)  Hypercube lattice: the eight views (cuboids) constructed by grouping on some of part, supplier, and customer Finding total sales grouped by part Processing 6 million rows if cuboid pc is materialized Processing 0.2 million rows if cuboid p is materialized Processing 0.8 million rows if cuboid ps is materialized November 5, 2012 34
  • 35. Motivating example (cont.) How to find a good set of queries?  How many views must be materialized to get reasonable performance?  Given space S, what views should be materialized to get the minimal average query cost?  If we are willing to tolerate an X% degradation in average query cost from a fully materialized data cube, how much space can we save over the fully materialized data cube? November 5, 2012 35
  • 36. Dependence relation The dependence relation on queries:  Q1  Q2 iff Q1 can be answered using only the results _ of query Q2 (Q1 is dependent on Q2). In which  _ is a partial order, and   There is a top element, a view upon which is dependent (base cuboid)  Example:  (part) _ (part, customer)   (part) _ (customer) and (customer) _ part)  ( November 5, 2012 36
  • 37. Lattice notation  A lattice with set of elements L and dependance relation _ is denoted by <L, _>    a  b means that a _ b, and a ≠ b   ancestor(a) = {b | a _  }b  descendant(a) = {b | b _  }a  next(a) = {b | a  ∃ c, a c , c b} b,    Lattice diagrams: a lattice can be represented as a graph, where the lattice elements (views) are nodes and there is an edge from a below b iff b is in next(a). November 5, 2012 37
  • 38. Hierarchies  Dimensions of a data cube consist of more than one attribute, organized as hierarchies  Operations on hierarchies: roll up and drill down  Hierarchies are not all total orders but partial orders on the dimension: Consider the time dimension with the hierarchy day, week, month, and year : (month) _ (week) and (week) _ (month)   Since month (year) can’t be divided by weeks November 5, 2012 38
  • 40. The lattice framework: Composite lattices  Query dependencies can be:  caused by the interaction of the different dimensions (hyp  within a dimension caused by attribute hierarchies  across attribute hierarchies of different dimensions  Views can be represented as an n-tuple (a 1, a2, … ,an), where ai is a point in the hierachy for the i-th dimension  (a1, a2, … ,an) _  1, b2, … ,bn) iff ai _ bi  all i (b for November 5, 2012 40
  • 41. The lattice framework: Composite lattices (cont.) Combining two hierarchical dimensions (n, s) _ (c, s)  Dimension hierarchies Lattice framework (Direct-product of lattices) November 5, 2012 41
  • 42. The advantages of lattice framework  Provide a clean framework to reason with dimensional hierarchies  We can model the common queries asked by users better  Tells us in what order to materialize the views November 5, 2012 42
  • 43. The linear cost model  For <L, _>, Q _ QA, C(Q) is the number of rows in the   table for that query QA used to compute Q  This linear relationship can be expressed as: T=m*S+c (m: time/size ratio; c: query overhead; S: size of the view)  Validation of the model using TPC-D data: November 5, 2012 43
  • 44. The benefit of a materialized view  Denote the benefit of a materialized view v, relative to some set of views S, as B(v, S)  For each w _ v, define BW by:   Let C(v) be the cost of view v  Let u be the view of least cost in S such that w _ u  (such u must exist)  B = C(u) – C(v) if C(v) < C(u) W =0 if C(v) ≥ C(u)  B is the benefit that it can obtain from v W  Define B(v, S) = Σ w < v Bw which means how v can improve the cost of evaluating views, including itself November 5, 2012 44
  • 45. The greedy algorithm  Objective  Assume materializing a fixed number of views, regardless of the space they use  How to minimize the average time taken to evaluate a view?  The greedy algorithm for materializing a set of k views  Performance: Greedy/Optimal ≥ 1 – (1 – 1/k) k ≥ (e - 1) / e November 5, 2012 45
  • 46. Greedy algorithm: example 1  Suppose we want to choose three views (k = 3)  The selection is optimal (reduce cost from 800 to 420) November 5, 2012 46
  • 47. Greedy algorithm: example 2  Suppose k = 2  Greedy algorithm picks c and b: benefit = 101*41+100*21 = 6241  Optimal selection is b and d: benefit = 100*41+100*41 = 8200  However, greedy/optimal = 6241/8200 > 3/4 November 5, 2012 47
  • 48. An experiment: how many views should be materialized?  Time and space for the greedy selection for the TPC- D-based example (full materialization is not efficient) Number of materialized views November 5, 2012 48
  • 49. Indexing OLAP Data: Bitmap Index  Index on a particular column  Each value in the column has a bit vector: bit-op is fast  The length of the bit vector: # of records in the base table  The i-th bit is set if the i-th row of the base table has the value for the indexed column  not suitable for high cardinality domains Base table Index on Region Index on Type Cust Region Type RecID Asia Europe America RecID Retail Dealer C1 Asia Retail 1 1 0 0 1 1 0 C2 Europe Dealer 2 0 1 0 2 0 1 C3 Asia Dealer 3 1 0 0 3 0 1 C4 America Retail 4 0 0 1 4 1 0 C5 Europe Dealer 5 0 1 0 5 0 1 November 5, 2012 49
  • 50. Indexing OLAP Data: Join Indices  Join index: JI(R-id, S-id) where R (R-id, …)  S (S-id, …)  Traditional indices map the values to a list of record ids  It materializes relational join in JI file and speeds up relational join — a rather costly operation  In data warehouses, join index relates the values of the dimensions of a start schema to rows in the fact table.  E.g. fact table: Sales and two dimensions city and product  A join index on city maintains for each distinct city a list of R-IDs of the tuples recording the Sales in the city  Join indices can span multiple dimensions November 5, 2012 50
  • 51. Efficient Processing of OLAP Queries  Determine which operations should be performed on the available cuboids:  transform drill, roll, etc. into corresponding SQL and/or OLAP operations, e.g, dice = selection + projection  Determine to which materialized cuboid(s) the relevant operations should be applied.  Exploring indexing structures and compressed vs. dense array structures in MOLAP November 5, 2012 51
  • 52. Metadata Repository  Meta data is the data defining warehouse objects. It has the following kinds  Description of the structure of the warehouse  schema, view, dimensions, hierarchies, derived data defn, data mart locations and contents  Operational meta-data  data lineage (history of migrated data and transformation path), currency of data (active, archived, or purged), monitoring information (warehouse usage statistics, error reports, audit trails)  The algorithms used for summarization  The mapping from operational environment to the data warehouse  Data related to system performance  warehouse schema, view and derived data definitions  Business data  business terms and definitions, ownership of data, charging policies November 5, 2012 52
  • 53. Data Warehouse Back-End Tools and Utilities  Data extraction:  get data from multiple, heterogeneous, and external sources  Data cleaning:  detect errors in the data and rectify them when possible  Data transformation:  convert data from legacy or host format to warehouse format  Load:  sort, summarize, consolidate, compute views, check integrity, and build indicies and partitions  Refresh propagate the updates from the data sources to the  warehouse November 5, 2012 53
  • 54. Data Warehousing and OLAP Technology for Data Mining  What is a data warehouse?  A multi-dimensional data model  Data warehouse architecture  Data warehouse implementation  From data warehousing to data mining November 5, 2012 54
  • 55. Data Warehouse Usage  Three kinds of data warehouse applications  Information processing  supports querying, basic statistical analysis, and reporting using crosstabs, tables, charts and graphs  Analytical processing  multidimensional analysis of data warehouse data  supports basic OLAP operations, slice-dice, drilling, pivoting  Data mining  knowledge discovery from hidden patterns  supports associations, constructing analytical models, performing classification and prediction, and presenting the mining results using visualization tools. November 5, 2012 55
  • 56. From On-Line Analytical Processing to On Line Analytical Mining (OLAM)  Why online analytical mining?  High quality of data in data warehouses  DW contains integrated, consistent, cleaned data  Available information processing structure surrounding data warehouses  ODBC, OLEDB, Web accessing, service facilities, reporting and OLAP tools  OLAP-based exploratory data analysis  mining with drilling, dicing, pivoting, etc.  On-line selection of data mining functions  integration and swapping of multiple mining functions, algorithms, and tasks. November 5, 2012 56
  • 57. An OLAM Architecture Mining query Mining result Layer4 User Interface User GUI API Layer3 OLAM OLAP Engine Engine OLAP/OLAM Data Cube API Layer2 MDDB MDDB Meta Data Filtering&Integration Database API Filtering Layer1 Data cleaning Data Databases Data Data integration Warehouse November 5, 2012 57Repository
  • 58. Summary  Data warehouse  A subject-oriented, integrated, time-variant, and nonvolatile collection of data in support of management’s decision-making process  A multi-dimensional model of a data warehouse  Star schema, snowflake schema, fact constellations  A data cube consists of dimensions & measures  OLAP operations: drilling, rolling, slicing, dicing and pivoting  OLAP servers: ROLAP, MOLAP, HOLAP  Efficient computation of data cubes  Partial vs. full vs. no materialization  Multiway array aggregation  Bitmap index and join index implementations  Further development of data cube technology  Discovery-drive and multi-feature cubes  From OLAP to OLAM (on-line analytical mining) November 5, 2012 58