SlideShare a Scribd company logo
1 of 16
Customer Centric Data Mining

                       Anjesh Dubey
  Fusion of BI & CRM   Divya Setlur
                       Nanda Jaiswal
                       Rakesh Ranjan
Customer centric environment
Bottom-line questions in CRM
  Who are my most profitable customers?
  Who are my repeat website visitors?
  Who are my loyal customers?
  Who is likely increase purchase?
  What clients are likely defect to my rivals?
  Will my customer respond to the direct mail
  solicitation?
Data mining as part of CRM strategy

   Business that knows it’s customers best will serve
   them best
   Best spent marketing dollar is the one that retains the
   existing customer
   Business forecasting is essential
      A fast food chain doing hourly demand projection for its
      outlets
   Objective and quantifiable insight into customer
   profiling data
      Which of my high-profit customers are most likely to leave?
      Be proactive to retain them.
      Which of my low-profit customers are least likely to leave?
      Raise their price and make them more profitable.
Data mining is NOT magic
  Data mining can not ingest noisy data
  Data mining can not use ready-to-use business
  strategies based on analysis of raw data without
  intelligent interpretation
  Garbage-in garbage-out
  The information produced by data mining apps require
  human review
  Real data mining is methodology with technology
  support
  “Hype” data mining is mythology with marketing
  support
Data mining techniques in CRM life
cycle stage
 CRM stage     Activities              Data Mining technique
 Discovering   Lead generation           Customer acquisition profiling
                                         Web data mining for prospects
                                         Targeting market

 Reaching      Marketing programs      Customer acquisition profiling

 Selling       Contact selling          Customer acquisition profiling
                                        Online shopping
                                        Scenario notification
                                        Customer-centric selling

 Satisfying      Product performance     Customer retention profiling
                 Service performance     Scenario notification
                 customer service        Customer centric selling
                                         Inquiry routing

 Retaining     Customer retention        Customer retention profiling
                                         Scenario notification
                                         Individual customer profiles
Data mining methodologies
  CRISP-DM (Cross-Industry
  Standard Process) methodology
  SEMMA (Sample, Explore,
  Modify, Model, Assess)
  methodology
  Other Common approaches
    Different tools have different way of
    doing the typical data mining task
    Data gathered -> conditioned & analyzed
    -> descriptive models -> predictive
    models
Data mining methods
  Classification & regression
   Association & sequencing
     Association rules (Market Basket Analysis)
     Sequential analysis
   Clustering
  Link analysis
  Visualization
  Regression
  Rule induction
The mathematics in Data mining
  Feature space (Euclidian space)
  Probability distribution
  Standard deviation and z-score
  Feature space computation
  Clusters
  Numeric coding
  Creating Ground truth
  Synthesis of features
Data mining techniques
  Neural Network
    Problem solving with
    Neural network
    Training and validating
  Decision Trees
    Predictive model
    Based on classification
Case Study – Loan Risk Analysis

   Problem definition
     Mortgage company ACME financial has to predict and
     analyze the risk associated with the Applicants before
     approving the loan
   Data Collection
     Loan application data
     Credit history and score data
   Data preparation (cleansing)
     Clean and categorize data
   Building the model
   Data mining with decision trees
Data Collection
 Ap.ID       Name              Address             Income           Company           Date Hired
 1           John Cook         San Jose, CA        $105,000.00      IBM               03/15/1999
 2           Willie Chun       Freemont, CA        $92,000.00       Cisco             06/19/1998
 3           Robbert Gillman   Phoenix, AZ         $28,000.00       City County       08/23/1990
 4           Sam Wong          Phoenix, AZ         $27,000.00       Racing Co.        06/30/1995
 5           Jill will         Las Vegas, NV       $35,000.00       Undertakers,      NULL
                                                                        INC.
 6           Rob Chung         New York, NY        $75,000.00       Monsters, INC.    12/14/2000
 7           Amit Khare        Sunnyvale CA        $91,000.00       Mysql             04/01/1997

               Applicant ID                  Company                        Balance
         1                     LTC Mortgage                      $400,000.00
         1                     Visa                              $15,000.00
         2                     Bank of America                   $150,000.00
         2                     ACME Financial                    $60,000.00
         3                     Toon Depot                        $45,000.00
         3                     Toon Bank                         $125,000.00
         4                     Master Card                       $54,000.00
         5                     Financial Aid                     $60,000.00
         6                     Toyota Credit                     $44,000.00
         7                     Financial Aid                     $23,000.00
Data Preparation
        Applicant ID    Debt Level    Income Level    Job > 5 Years

    1                  High          High            No
    2                  High          High            Yes
    3                  High          Low             Yes
    4                  Low           Low             Yes
    5                  Low           Low             No
    6                  Low           High            No
    7                  Low           High            Yes
Demo using java predictor tool
Conclusion
  The fusion of BI and CRM is creating new
  opportunities as well as challenges
  Increasingly sophisticated consumers are creating
  hyper-competition for businesses
  Low brand loyalty among new breed of consumers
  highlight the importance of customer centric data
  mining
  BI and CRM together provides 360-degree view of
  customer data
References
  Books
     Data Mining Explained: A Manager's Guide to Customer-Centric
     Business Intelligence by Rhonda Delmater and Jr., Monte Hancock
  Web Articles and tutorials
     An Independent Study in Data Mining http://dataml.net/datamining/
     The Data Warehousing Information Center
     http://www.dwinfocenter.org
     Test Drive Data Mining - SQL Server 2005 tutorial
     http://msevents.microsoft.com/CUI/WebCastEventDetails.aspx?
     EventID=1032291442&EventCategory=3&culture=en-
     US&CountryCode=US

More Related Content

What's hot

Customer Acquisition PowerPoint Presentation Slides
Customer Acquisition PowerPoint Presentation SlidesCustomer Acquisition PowerPoint Presentation Slides
Customer Acquisition PowerPoint Presentation SlidesSlideTeam
 
7 p's of service marketing
7 p's of service marketing7 p's of service marketing
7 p's of service marketingShreya Bhargava
 
Crm Final Presentation
Crm Final PresentationCrm Final Presentation
Crm Final PresentationHarsh
 
How an NPS Detractor Can Help Your Business
How an NPS Detractor Can Help Your BusinessHow an NPS Detractor Can Help Your Business
How an NPS Detractor Can Help Your BusinessCViewSurvey
 
Customer Relationship Management (CRM)
Customer Relationship Management (CRM)Customer Relationship Management (CRM)
Customer Relationship Management (CRM)Jaiser Abbas
 
Microsoft Dynamics 365 - Intelligent Business Applications
Microsoft Dynamics 365 - Intelligent Business ApplicationsMicrosoft Dynamics 365 - Intelligent Business Applications
Microsoft Dynamics 365 - Intelligent Business ApplicationsDavid J Rosenthal
 
Business Plan For Fundraising PowerPoint Presentation Slides
Business Plan For Fundraising PowerPoint Presentation SlidesBusiness Plan For Fundraising PowerPoint Presentation Slides
Business Plan For Fundraising PowerPoint Presentation SlidesSlideTeam
 
Meltwater enterprise solutions
Meltwater enterprise solutions Meltwater enterprise solutions
Meltwater enterprise solutions Ajay Khari
 
Customer Lifecycle Management
Customer Lifecycle ManagementCustomer Lifecycle Management
Customer Lifecycle ManagementAnand Biradar
 
Accenture finance-and-accounting-bpo-services-brochure-v2
Accenture finance-and-accounting-bpo-services-brochure-v2Accenture finance-and-accounting-bpo-services-brochure-v2
Accenture finance-and-accounting-bpo-services-brochure-v2Sreejit Nair
 
Chapter 14: Impact of CRM on Marketing Channels
Chapter 14: Impact of CRM on Marketing ChannelsChapter 14: Impact of CRM on Marketing Channels
Chapter 14: Impact of CRM on Marketing Channelsitsvineeth209
 
Go To Market Strategy Ppt Inspiration Background Image
Go To Market Strategy Ppt Inspiration Background ImageGo To Market Strategy Ppt Inspiration Background Image
Go To Market Strategy Ppt Inspiration Background ImageSlideTeam
 

What's hot (20)

Customer Acquisition PowerPoint Presentation Slides
Customer Acquisition PowerPoint Presentation SlidesCustomer Acquisition PowerPoint Presentation Slides
Customer Acquisition PowerPoint Presentation Slides
 
Benefits of CRM
Benefits of CRMBenefits of CRM
Benefits of CRM
 
Analytical Crm
Analytical CrmAnalytical Crm
Analytical Crm
 
E CRM
E CRME CRM
E CRM
 
7 p's of service marketing
7 p's of service marketing7 p's of service marketing
7 p's of service marketing
 
Crm Final Presentation
Crm Final PresentationCrm Final Presentation
Crm Final Presentation
 
How an NPS Detractor Can Help Your Business
How an NPS Detractor Can Help Your BusinessHow an NPS Detractor Can Help Your Business
How an NPS Detractor Can Help Your Business
 
Customer Relationship Management (CRM)
Customer Relationship Management (CRM)Customer Relationship Management (CRM)
Customer Relationship Management (CRM)
 
Microsoft Dynamics 365 - Intelligent Business Applications
Microsoft Dynamics 365 - Intelligent Business ApplicationsMicrosoft Dynamics 365 - Intelligent Business Applications
Microsoft Dynamics 365 - Intelligent Business Applications
 
Business Plan For Fundraising PowerPoint Presentation Slides
Business Plan For Fundraising PowerPoint Presentation SlidesBusiness Plan For Fundraising PowerPoint Presentation Slides
Business Plan For Fundraising PowerPoint Presentation Slides
 
Dynamics 365 CRM Introduction
Dynamics 365 CRM IntroductionDynamics 365 CRM Introduction
Dynamics 365 CRM Introduction
 
Customer satisfaction and loyalty
Customer satisfaction and loyaltyCustomer satisfaction and loyalty
Customer satisfaction and loyalty
 
Meltwater enterprise solutions
Meltwater enterprise solutions Meltwater enterprise solutions
Meltwater enterprise solutions
 
Crm
CrmCrm
Crm
 
Customer Lifecycle Management
Customer Lifecycle ManagementCustomer Lifecycle Management
Customer Lifecycle Management
 
Accenture finance-and-accounting-bpo-services-brochure-v2
Accenture finance-and-accounting-bpo-services-brochure-v2Accenture finance-and-accounting-bpo-services-brochure-v2
Accenture finance-and-accounting-bpo-services-brochure-v2
 
CRM
CRMCRM
CRM
 
Chapter 14: Impact of CRM on Marketing Channels
Chapter 14: Impact of CRM on Marketing ChannelsChapter 14: Impact of CRM on Marketing Channels
Chapter 14: Impact of CRM on Marketing Channels
 
Go To Market Strategy Ppt Inspiration Background Image
Go To Market Strategy Ppt Inspiration Background ImageGo To Market Strategy Ppt Inspiration Background Image
Go To Market Strategy Ppt Inspiration Background Image
 
ppt of crm
ppt of crmppt of crm
ppt of crm
 

Viewers also liked

Customer centric digital platform for utilities: Process to value
Customer centric digital platform for utilities: Process to valueCustomer centric digital platform for utilities: Process to value
Customer centric digital platform for utilities: Process to valueCapgemini
 
Data Mining In Market Research
Data Mining In Market ResearchData Mining In Market Research
Data Mining In Market Researchkevinlan
 
Two-step Classification method for Spatial Decision Tree
Two-step Classification method for Spatial Decision TreeTwo-step Classification method for Spatial Decision Tree
Two-step Classification method for Spatial Decision TreeAbhishek Agrawal
 
7 data warehouse & marts
7 data warehouse & marts7 data warehouse & marts
7 data warehouse & martsNymphea Saraf
 
Knowledge Discovery from Academic Data using Association Rule Mining, Paper P...
Knowledge Discovery from Academic Data using Association Rule Mining, Paper P...Knowledge Discovery from Academic Data using Association Rule Mining, Paper P...
Knowledge Discovery from Academic Data using Association Rule Mining, Paper P...shibbirtanvin
 
Data mining technique (decision tree)
Data mining technique (decision tree)Data mining technique (decision tree)
Data mining technique (decision tree)Shweta Ghate
 
Neural Network Classification and its Applications in Insurance Industry
Neural Network Classification and its Applications in Insurance IndustryNeural Network Classification and its Applications in Insurance Industry
Neural Network Classification and its Applications in Insurance IndustryInderjeet Singh
 
Questionnaire on mobile phones
Questionnaire on mobile phonesQuestionnaire on mobile phones
Questionnaire on mobile phonesBethany13
 
data warehouse , data mart, etl
data warehouse , data mart, etldata warehouse , data mart, etl
data warehouse , data mart, etlAashish Rathod
 
Distributed & parallel system
Distributed & parallel systemDistributed & parallel system
Distributed & parallel systemManish Singh
 
Belief Networks & Bayesian Classification
Belief Networks & Bayesian ClassificationBelief Networks & Bayesian Classification
Belief Networks & Bayesian ClassificationAdnan Masood
 
Distributed Database System
Distributed Database SystemDistributed Database System
Distributed Database SystemSulemang
 

Viewers also liked (20)

Customer centric digital platform for utilities: Process to value
Customer centric digital platform for utilities: Process to valueCustomer centric digital platform for utilities: Process to value
Customer centric digital platform for utilities: Process to value
 
Data Mining In Market Research
Data Mining In Market ResearchData Mining In Market Research
Data Mining In Market Research
 
Bayes Belief Networks
Bayes Belief NetworksBayes Belief Networks
Bayes Belief Networks
 
Two-step Classification method for Spatial Decision Tree
Two-step Classification method for Spatial Decision TreeTwo-step Classification method for Spatial Decision Tree
Two-step Classification method for Spatial Decision Tree
 
7 data warehouse & marts
7 data warehouse & marts7 data warehouse & marts
7 data warehouse & marts
 
Neural network
Neural networkNeural network
Neural network
 
Knowledge Discovery from Academic Data using Association Rule Mining, Paper P...
Knowledge Discovery from Academic Data using Association Rule Mining, Paper P...Knowledge Discovery from Academic Data using Association Rule Mining, Paper P...
Knowledge Discovery from Academic Data using Association Rule Mining, Paper P...
 
Data mining technique (decision tree)
Data mining technique (decision tree)Data mining technique (decision tree)
Data mining technique (decision tree)
 
Neural Network Classification and its Applications in Insurance Industry
Neural Network Classification and its Applications in Insurance IndustryNeural Network Classification and its Applications in Insurance Industry
Neural Network Classification and its Applications in Insurance Industry
 
Questionnaire on mobile phones
Questionnaire on mobile phonesQuestionnaire on mobile phones
Questionnaire on mobile phones
 
data warehouse , data mart, etl
data warehouse , data mart, etldata warehouse , data mart, etl
data warehouse , data mart, etl
 
Dbms architecture
Dbms architectureDbms architecture
Dbms architecture
 
Distributed & parallel system
Distributed & parallel systemDistributed & parallel system
Distributed & parallel system
 
Belief Networks & Bayesian Classification
Belief Networks & Bayesian ClassificationBelief Networks & Bayesian Classification
Belief Networks & Bayesian Classification
 
Data mart
Data martData mart
Data mart
 
Consumer Insights: Revealing the truths & myths
Consumer Insights: Revealing the truths & mythsConsumer Insights: Revealing the truths & myths
Consumer Insights: Revealing the truths & myths
 
Decision Trees
Decision TreesDecision Trees
Decision Trees
 
Distributed database
Distributed databaseDistributed database
Distributed database
 
Introduction to ETL and Data Integration
Introduction to ETL and Data IntegrationIntroduction to ETL and Data Integration
Introduction to ETL and Data Integration
 
Distributed Database System
Distributed Database SystemDistributed Database System
Distributed Database System
 

Similar to Customer Centric Data Mining

July 2009 V12 Group Positioning
July 2009 V12 Group PositioningJuly 2009 V12 Group Positioning
July 2009 V12 Group PositioningAllenMadoff
 
Lean Analytics for Nikkei BP
Lean Analytics for Nikkei BPLean Analytics for Nikkei BP
Lean Analytics for Nikkei BPLean Analytics
 
Educating The Consumer Public Forum Shared Pp 112608 Slide Show View Only
Educating The Consumer Public Forum Shared Pp 112608 Slide Show View OnlyEducating The Consumer Public Forum Shared Pp 112608 Slide Show View Only
Educating The Consumer Public Forum Shared Pp 112608 Slide Show View Onlypjparke
 
Lessons from FinTech: Innovators & Disruptors
Lessons from FinTech: Innovators & Disruptors Lessons from FinTech: Innovators & Disruptors
Lessons from FinTech: Innovators & Disruptors Baker Hill
 
Merchant Cash Advance Webinar Final
Merchant Cash Advance Webinar FinalMerchant Cash Advance Webinar Final
Merchant Cash Advance Webinar FinalBlindbid
 
Take control of big data equifax - updated
Take control of big data   equifax - updatedTake control of big data   equifax - updated
Take control of big data equifax - updatedRachel Aldighieri
 
Health Care Analytics: NAMA Health Care SIG Nov 2012
Health Care Analytics: NAMA Health Care SIG Nov 2012Health Care Analytics: NAMA Health Care SIG Nov 2012
Health Care Analytics: NAMA Health Care SIG Nov 2012NAMA
 
2016 State of Predictive Marketing
2016 State of Predictive Marketing2016 State of Predictive Marketing
2016 State of Predictive MarketingWhatConts
 
The Customer Is King, Why Do We Forget That?
The Customer Is King, Why Do We Forget That?The Customer Is King, Why Do We Forget That?
The Customer Is King, Why Do We Forget That?The Bank Channel
 
Navigating Your Data
Navigating Your DataNavigating Your Data
Navigating Your Datakatintl
 
2012 Seth Lieberman at RamenCamp
2012 Seth Lieberman at RamenCamp2012 Seth Lieberman at RamenCamp
2012 Seth Lieberman at RamenCampRamenCamp
 
Mint.com Pre-Launch Pitch Deck
Mint.com Pre-Launch Pitch DeckMint.com Pre-Launch Pitch Deck
Mint.com Pre-Launch Pitch DeckHiten Shah
 
How RingCentral Optimized Account-Based Insights and Buyer Intelligence To Ra...
How RingCentral Optimized Account-Based Insights and Buyer Intelligence To Ra...How RingCentral Optimized Account-Based Insights and Buyer Intelligence To Ra...
How RingCentral Optimized Account-Based Insights and Buyer Intelligence To Ra...G3 Communications
 
Take control of big data, 18 july 2012
Take control of big data, 18 july 2012Take control of big data, 18 july 2012
Take control of big data, 18 july 2012Rachel Aldighieri
 
Everything You Need to Know About Crypto
Everything You Need to Know About CryptoEverything You Need to Know About Crypto
Everything You Need to Know About CryptoAggregage
 
Capitalizing on Market Changes to Grow Your Card Programs (Credit Union Confe...
Capitalizing on Market Changes to Grow Your Card Programs (Credit Union Confe...Capitalizing on Market Changes to Grow Your Card Programs (Credit Union Confe...
Capitalizing on Market Changes to Grow Your Card Programs (Credit Union Confe...NAFCU Services Corporation
 
A Blueprint for Customer Value Management in the New Economy | Microsoft & in...
A Blueprint for Customer Value Management in the New Economy | Microsoft & in...A Blueprint for Customer Value Management in the New Economy | Microsoft & in...
A Blueprint for Customer Value Management in the New Economy | Microsoft & in...Antony Adelaar
 
9,000 Ways to Optimize Outcomes in Financial Services
9,000 Ways to Optimize Outcomes in Financial Services9,000 Ways to Optimize Outcomes in Financial Services
9,000 Ways to Optimize Outcomes in Financial ServicesPrecisely
 

Similar to Customer Centric Data Mining (20)

July 2009 V12 Group Positioning
July 2009 V12 Group PositioningJuly 2009 V12 Group Positioning
July 2009 V12 Group Positioning
 
Alternative payments: Turning Virtual Into Reality
Alternative payments: Turning Virtual Into RealityAlternative payments: Turning Virtual Into Reality
Alternative payments: Turning Virtual Into Reality
 
Lean Analytics for Nikkei BP
Lean Analytics for Nikkei BPLean Analytics for Nikkei BP
Lean Analytics for Nikkei BP
 
Educating The Consumer Public Forum Shared Pp 112608 Slide Show View Only
Educating The Consumer Public Forum Shared Pp 112608 Slide Show View OnlyEducating The Consumer Public Forum Shared Pp 112608 Slide Show View Only
Educating The Consumer Public Forum Shared Pp 112608 Slide Show View Only
 
Lessons from FinTech: Innovators & Disruptors
Lessons from FinTech: Innovators & Disruptors Lessons from FinTech: Innovators & Disruptors
Lessons from FinTech: Innovators & Disruptors
 
Merchant Cash Advance Webinar Final
Merchant Cash Advance Webinar FinalMerchant Cash Advance Webinar Final
Merchant Cash Advance Webinar Final
 
Take control of big data equifax - updated
Take control of big data   equifax - updatedTake control of big data   equifax - updated
Take control of big data equifax - updated
 
Health Care Analytics: NAMA Health Care SIG Nov 2012
Health Care Analytics: NAMA Health Care SIG Nov 2012Health Care Analytics: NAMA Health Care SIG Nov 2012
Health Care Analytics: NAMA Health Care SIG Nov 2012
 
2016 State of Predictive Marketing
2016 State of Predictive Marketing2016 State of Predictive Marketing
2016 State of Predictive Marketing
 
The Customer Is King, Why Do We Forget That?
The Customer Is King, Why Do We Forget That?The Customer Is King, Why Do We Forget That?
The Customer Is King, Why Do We Forget That?
 
Navigating Your Data
Navigating Your DataNavigating Your Data
Navigating Your Data
 
2012 Seth Lieberman at RamenCamp
2012 Seth Lieberman at RamenCamp2012 Seth Lieberman at RamenCamp
2012 Seth Lieberman at RamenCamp
 
Wallid
WallidWallid
Wallid
 
Mint.com Pre-Launch Pitch Deck
Mint.com Pre-Launch Pitch DeckMint.com Pre-Launch Pitch Deck
Mint.com Pre-Launch Pitch Deck
 
How RingCentral Optimized Account-Based Insights and Buyer Intelligence To Ra...
How RingCentral Optimized Account-Based Insights and Buyer Intelligence To Ra...How RingCentral Optimized Account-Based Insights and Buyer Intelligence To Ra...
How RingCentral Optimized Account-Based Insights and Buyer Intelligence To Ra...
 
Take control of big data, 18 july 2012
Take control of big data, 18 july 2012Take control of big data, 18 july 2012
Take control of big data, 18 july 2012
 
Everything You Need to Know About Crypto
Everything You Need to Know About CryptoEverything You Need to Know About Crypto
Everything You Need to Know About Crypto
 
Capitalizing on Market Changes to Grow Your Card Programs (Credit Union Confe...
Capitalizing on Market Changes to Grow Your Card Programs (Credit Union Confe...Capitalizing on Market Changes to Grow Your Card Programs (Credit Union Confe...
Capitalizing on Market Changes to Grow Your Card Programs (Credit Union Confe...
 
A Blueprint for Customer Value Management in the New Economy | Microsoft & in...
A Blueprint for Customer Value Management in the New Economy | Microsoft & in...A Blueprint for Customer Value Management in the New Economy | Microsoft & in...
A Blueprint for Customer Value Management in the New Economy | Microsoft & in...
 
9,000 Ways to Optimize Outcomes in Financial Services
9,000 Ways to Optimize Outcomes in Financial Services9,000 Ways to Optimize Outcomes in Financial Services
9,000 Ways to Optimize Outcomes in Financial Services
 

Recently uploaded

MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsMS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsNanddeep Nachan
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodJuan lago vázquez
 
[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdfSandro Moreira
 
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Victor Rentea
 
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ..."I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...Zilliz
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobeapidays
 
Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital AdaptabilityPlatformless Horizons for Digital Adaptability
Platformless Horizons for Digital AdaptabilityWSO2
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerThousandEyes
 
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusExploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusZilliz
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherRemote DBA Services
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MIND CTI
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoffsammart93
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDropbox
 
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Zilliz
 
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingRepurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingEdi Saputra
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...apidays
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FMESafe Software
 
Six Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal OntologySix Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal Ontologyjohnbeverley2021
 
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...apidays
 
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...apidays
 

Recently uploaded (20)

MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsMS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
 
[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf
 
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
 
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ..."I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital AdaptabilityPlatformless Horizons for Digital Adaptability
Platformless Horizons for Digital Adaptability
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusExploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with Milvus
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
 
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)
 
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingRepurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
Six Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal OntologySix Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal Ontology
 
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
 
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
 

Customer Centric Data Mining

  • 1. Customer Centric Data Mining Anjesh Dubey Fusion of BI & CRM Divya Setlur Nanda Jaiswal Rakesh Ranjan
  • 3. Bottom-line questions in CRM Who are my most profitable customers? Who are my repeat website visitors? Who are my loyal customers? Who is likely increase purchase? What clients are likely defect to my rivals? Will my customer respond to the direct mail solicitation?
  • 4. Data mining as part of CRM strategy Business that knows it’s customers best will serve them best Best spent marketing dollar is the one that retains the existing customer Business forecasting is essential A fast food chain doing hourly demand projection for its outlets Objective and quantifiable insight into customer profiling data Which of my high-profit customers are most likely to leave? Be proactive to retain them. Which of my low-profit customers are least likely to leave? Raise their price and make them more profitable.
  • 5. Data mining is NOT magic Data mining can not ingest noisy data Data mining can not use ready-to-use business strategies based on analysis of raw data without intelligent interpretation Garbage-in garbage-out The information produced by data mining apps require human review Real data mining is methodology with technology support “Hype” data mining is mythology with marketing support
  • 6. Data mining techniques in CRM life cycle stage CRM stage Activities Data Mining technique Discovering Lead generation Customer acquisition profiling Web data mining for prospects Targeting market Reaching Marketing programs Customer acquisition profiling Selling Contact selling Customer acquisition profiling Online shopping Scenario notification Customer-centric selling Satisfying Product performance Customer retention profiling Service performance Scenario notification customer service Customer centric selling Inquiry routing Retaining Customer retention Customer retention profiling Scenario notification Individual customer profiles
  • 7. Data mining methodologies CRISP-DM (Cross-Industry Standard Process) methodology SEMMA (Sample, Explore, Modify, Model, Assess) methodology Other Common approaches Different tools have different way of doing the typical data mining task Data gathered -> conditioned & analyzed -> descriptive models -> predictive models
  • 8. Data mining methods Classification & regression Association & sequencing Association rules (Market Basket Analysis) Sequential analysis Clustering Link analysis Visualization Regression Rule induction
  • 9. The mathematics in Data mining Feature space (Euclidian space) Probability distribution Standard deviation and z-score Feature space computation Clusters Numeric coding Creating Ground truth Synthesis of features
  • 10. Data mining techniques Neural Network Problem solving with Neural network Training and validating Decision Trees Predictive model Based on classification
  • 11. Case Study – Loan Risk Analysis Problem definition Mortgage company ACME financial has to predict and analyze the risk associated with the Applicants before approving the loan Data Collection Loan application data Credit history and score data Data preparation (cleansing) Clean and categorize data Building the model Data mining with decision trees
  • 12. Data Collection Ap.ID Name Address Income Company Date Hired 1 John Cook San Jose, CA $105,000.00 IBM 03/15/1999 2 Willie Chun Freemont, CA $92,000.00 Cisco 06/19/1998 3 Robbert Gillman Phoenix, AZ $28,000.00 City County 08/23/1990 4 Sam Wong Phoenix, AZ $27,000.00 Racing Co. 06/30/1995 5 Jill will Las Vegas, NV $35,000.00 Undertakers, NULL INC. 6 Rob Chung New York, NY $75,000.00 Monsters, INC. 12/14/2000 7 Amit Khare Sunnyvale CA $91,000.00 Mysql 04/01/1997 Applicant ID Company Balance 1 LTC Mortgage $400,000.00 1 Visa $15,000.00 2 Bank of America $150,000.00 2 ACME Financial $60,000.00 3 Toon Depot $45,000.00 3 Toon Bank $125,000.00 4 Master Card $54,000.00 5 Financial Aid $60,000.00 6 Toyota Credit $44,000.00 7 Financial Aid $23,000.00
  • 13. Data Preparation Applicant ID Debt Level Income Level Job > 5 Years 1 High High No 2 High High Yes 3 High Low Yes 4 Low Low Yes 5 Low Low No 6 Low High No 7 Low High Yes
  • 14. Demo using java predictor tool
  • 15. Conclusion The fusion of BI and CRM is creating new opportunities as well as challenges Increasingly sophisticated consumers are creating hyper-competition for businesses Low brand loyalty among new breed of consumers highlight the importance of customer centric data mining BI and CRM together provides 360-degree view of customer data
  • 16. References Books Data Mining Explained: A Manager's Guide to Customer-Centric Business Intelligence by Rhonda Delmater and Jr., Monte Hancock Web Articles and tutorials An Independent Study in Data Mining http://dataml.net/datamining/ The Data Warehousing Information Center http://www.dwinfocenter.org Test Drive Data Mining - SQL Server 2005 tutorial http://msevents.microsoft.com/CUI/WebCastEventDetails.aspx? EventID=1032291442&EventCategory=3&culture=en- US&CountryCode=US