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Applied Analytics with Greenplum Hadoop:

                    Standardizing +113 million Merchant Names
                                with RegEx and Fuzzy Matching




                                                         Ian Andrews
                                                         Mike Goddard
© Copyright 2012 EMC Corporation. All rights reserved.                  1
Greenplum, A Division of EMC
• 10 years of experience building and supporting enterprise-class massively
  parallel data processing software based on open source technology
• Silicon-valley based core engineering talent from
  Yahoo!, Teradata, Oracle, Amazon, Microsoft, IBM, etc
• 1,000 (and growing) personnel focused on Greenplum’s Big Data Platform
     – Greenplum Database
     – Greenplum HD (Hadoop)
     – Chorus
     – Data Computing Appliances
     – Data Scientists
     – Pivotal Labs
• Fully integrated with EMC’s award-winning global support infrastructure.
• 500+ customers in production globally across all industry segments.
• Established relationships with ecosystems partners:
  Informatica, SAS, Talend, Pentaho, Microstrategy, etc.
• Strategic development relationship with VMware around virtual big data
  platforms


© Copyright 2012 EMC Corporation. All rights reserved.                        2
Greenplum Unified Analytic Platform




© Copyright 2012 EMC Corporation. All rights reserved.   3
Transaction Data - Merchant Name
                      Standardization System




© Copyright 2012 EMC Corporation. All rights reserved.   4
Overview of Findings
• Transaction data is difficult to analyze as merchants
  names found in credit and debit data are unstructured
  and non-standardized across single business entities
• We created a system for cleaning and standardizing
  merchant names
         –      Stage 1: feature extraction
         –      Stage 2: automated cleanup using regular expressions
         –      Stage 3: fuzzy matching algorithm
         –      Stage 4: application of manual rules
• This is an open system, easy to use, extend and modify
• We used the results to do some preliminary analysis on
  the transaction data


© Copyright 2012 EMC Corporation. All rights reserved.                 5
Background Information -
 Credit and Debit Data Overview
                                                           % # transactions
Credit Transactions1                                                                        Debit Transactions
• 1,396,344 distinct merchant                                14.62%                         • 2,598,462 distinct merchant
  names                                                                                       names
• 16,554,889 credit transactions                                                            • 96,658,020 debit transactions
  ($1,979,801,143.50)                                                                         ($3,471,084,518.72)
                                                                            85.38%
• 161,931 households with                                                                   • 435,615 households with debit
  credit transaction                                                                          transaction
• Min: -$32,585                                                  Debit     Credit           • Min: $0.01
• Max: $99,000                                                                              • Max: $39,404
• Average: $120                                           % sum transactions                • Average: $36
• Std. Deviation: $496                                                                      • Std. Deviation: $89

                                                          36.32%


                                                                             63.68%




                                                                   Debit    Credit

                                                             1   Excludes 13 Sic Codes in depository institution activity group



 © Copyright 2012 EMC Corporation. All rights reserved.                                                                           6
Why standardize merchant names?
• Due to multiple names of same businesses across
  locations a single business entity appears as many
  in the database
• Examples

                 WAL-MART                                         PAYPAL              STARBUCKS
WALMART PORTRAITS 23093                                  PAYPAL *SACCAR.COM    STARBUCKSSTORE.COM-USD
WAL-MART #2366                      SE2                  PAYPAL *BRICKSUPPLY   STARBUCKS CORP00034488
WAL-MART STORE#1041                                      PAYPAL *BRETT2010FL   SS-STARBUCKS
WAL-MART SUPERCENTER 20                                  PAYPAL *UNITED        T1 STARBUCKS J10431542
WAL MART LINCOLN                                         PAYPAL *TL5354        STARBUCKS C #112201505
WALMART.COM RELOAD                                       PAYPAL *CAR-KIT.COM   STARBUCKS WEST30081525




© Copyright 2012 EMC Corporation. All rights reserved.                                                  7
Examples of name passing thru
merchant name standardization system
Original:                                                          Original:

                   GIANT FOOD #089                                             PETSMART INC 1963
Features:                                                Stage 1   Features:
                   Length: 14                                                  Length: 17
                   1st White Space: 6                                          1st White Space: 9
                   1st Special Characters: 12                                  Business Suffix: 10
                   1st Digit: 13                                               1st Digit: 14
                                                         Stage 2   Regex:
Regex:
                   [^(?-i)a-z]                                                 [^(?-i)a-z]|( INC )$
                   Remove all numbers (0-9),                                   Remove all numbers (0-9),
                   white space,                                                white space, special
                   & special characters                                        characters, & remove
                                                         Stage 3   business    suffix
Fuzzy Matching:                                                    Fuzzy Matching:
                   1016 (count of                                              <170 PETSMART FOUND
                   GIANTFOOD matches)                                          (Not run)
                                                         Stage 4
Manual Override:                                                   Manual Override:
                   None                                                        None
Final Results:                                                     Final Results:
                   GIANTFOOD                                                   PETSMART



© Copyright 2012 EMC Corporation. All rights reserved.                                                     8
Example Results - STARBUCKS
                    Pre-Standardization                         Post-Standardization
STARBUCKS DELI20371514                                   STARBUCKS
STARBUCKS-ARIFJAN CAMP2                                  STARBUCKS
STARBUCKS C #112201505                                   STARBUCKS
STARBUCKS USA 00115832                                   STARBUCKS
STARBUCK'S CAFE CROWNE                                   STARBUCKS
STARBUCKS CORP00134759                                   STARBUCKS
ATL MED CTR STARBUCKS                                    STARBUCKS
T3 N STARBUCKS30031512                                   STARBUCKS
STARBUCKS COFEE                                          STARBUCKS
STARBUCKS LA ISLA                                        STARBUCKS
OMNI FT WORTH - STARBUCKS                                STARBUCKS
ST. RITA'S STARBUCKS                                     STARBUCKS
MGM GRND STARBUCKS-CASINO                                STARBUCKS
006 STARBUCKS AMR                                        STARBUCKS




© Copyright 2012 EMC Corporation. All rights reserved.                                 9
90% of all transactions occur at 7% of the
  merchants
Company                            Total
Name                               Transactions
MCDONALDS                                  4,309,728
SPEEDWAY                                   2,032,474
WALMART                                    1,606,446
KROGER                                     1,564,819
SHELLOIL                                   1,546,056
SHEETZ                                     1,358,977
SUBWAY                                     1,280,037
REDBOX                                     1,236,148
EXXONMOBIL                                 1,205,451
WAWA                                       1,197,711
SUNO                                       1,180,799
WENDYS                                     1,066,628       Gini Coefficient = 0.9447
MARATHONOIL                                1,050,593
                                                           •   0 represents equality
MEIJER                                     1,017,998
                                                           •   1 represents all transactions at 1 merchant
STARBUCKS                                  1,002,805



  © Copyright 2012 EMC Corporation. All rights reserved.                                                     10
90% of the total spend in 2011 occurred
 at top 8.3% of merchants
Company                              Total spent
Name
WALMART                                $87,454,235.66
KROGER                                 $63,850,902.99
SPEEDWAY                               $54,270,752.65
TARGET                                 $48,086,797.70
MEIJER                                 $46,716,327.56
WMSUPERCENTER                          $46,650,761.15
SHELLOIL                               $45,115,993.12
GIANTEAGLE                             $44,668,211.07
ATT                                    $44,497,819.88
VERIZONWRLS                            $41,971,943.31
LOWES                                  $34,952,686.13
SUNO                                   $34,498,328.42
EXXONMOBIL                             $33,695,575.95
                                                          Gini Coefficient = 0.9408
MCDONALDS                              $30,869,463.74
                                                          •   0 represents equality
SHEETZ                                 $30,273,183.81
                                                          •   1 represents all money spent at 1 merchant


 © Copyright 2012 EMC Corporation. All rights reserved.                                                    11
‘Sic Codes’ alone are problematic; they
 can differ greatly across like businesses
 • On average the top 1,000 frequently occurring
   merchants have ~6 sic codes associated with their
   cleaned merchant name

WALMART                  TARGET                     SAFEWAY        KROGER    AT&T        VERIZON          T-MOBILE
4814                     5310                       5411           12        1711        4812             12
4816                     5411                       5499           5411      2741        4814             4812
5300                     5732                       5921           5499      3640        4899             5732
5411                     8043                                      5541      4112        5999             5999
6300                     8099                                      5542      5971        7311             7299
…                        …                                                   …           7399             …
Total 31                 Total 8                                             Total 71                     Total 10

      6 total matches                                      2 total matches              4 total matches


 © Copyright 2012 EMC Corporation. All rights reserved.                                                              12
Relative Value Add segments created by
splitting population into deciles based on
RVA                                 RVA




• Relative Value Added (RVA) provides an estimated ordinal
  ranking of customers using balance and transaction data (a
  rough precursor of EVA)
• The RVA was created to put a context around the merchant
  name discovery, the distribution of PNC’s products and how
  they interact

© Copyright 2012 EMC Corporation. All rights reserved.         13
Segment Profiles
Index: % segment / % population
                            Cohort 1 Cohort 2 Cohort 3 Cohort 4 Cohort 5 Cohort marketing to 8 Cohort 9 Cohort 10
                                                                    Target’s 6 Cohort 7 Cohort
 Cellular telephone providers                                                 higher income
 ATT                               1.00         0.86     1.18   1.24   1.14   1.04   0.97
                                                                       households seems        to 0.91   0.86   0.79
 SPRINT                            1.75         0.55     1.93   1.72   1.15   0.81   0.67        0.56    0.50   0.36
                                                                            have worked
 TMOBILE                           1.35         0.95     1.38   1.36   1.06   0.86   0.92        0.81    0.71   0.60
 VERIZONWRLS                       0.95         0.52     1.18   1.32   1.28   1.11   1.01        0.95    0.90   0.78
 Retail stores
 SEARSROEBUCK                      0.64         1.60     0.60   0.63   0.79      0.90   1.03     1.12    1.25   1.45
 TJMAXX                            0.68         1.46     0.71   0.66   0.83      0.96   1.02     1.12    1.22   1.32
 TARGET                            0.72         1.51     0.63   0.69   0.87      1.02   1.11     1.16    1.18   1.12
 WALMART                           0.82         1.77     0.82   0.82   0.88      0.89   0.92     0.97    1.00   1.11
 STAPLES                           0.69         1.72     0.71   0.55   0.68      0.88   0.97     1.06    1.19   1.54
 STARBUCKS                         0.82         0.47     0.81   0.88   1.04      1.21   1.23     1.23    1.19   1.14
 PAYPAL                            1.13         1.51     1.03   0.86   0.82      0.91   1.00     0.90    0.92   0.93
 Groceries
 PUBLIX                            0.84         3.16     0.35   0.45   0.56      0.72   0.83     0.86    0.94   1.27
 MENARDS                           0.75         3.66     0.42   0.38   0.55      0.71   0.77     0.93    0.85   0.98
 KROGER                            0.79         1.13     0.79   0.87   1.00      1.01   1.03     1.10    1.09   1.20
 Gas and convenience stores
 EXXONMOBIL                        1.07         0.93     1.04   1.03   1.01      0.99   1.00     0.96    0.96   1.01
 SHEETZ                            0.87         0.36     0.91   1.01   0.96      0.96   1.04     1.21    1.37   1.31
 SHELLOIL                          1.12         1.04     1.03   1.04   1.01      1.01   0.98     0.93    0.93   0.91
 SPEEDWAY                          1.17         0.90     1.25   1.24   1.16      1.04   0.97     0.87    0.77   0.63
 Hotels
 HILTON                            0.69         1.70     0.49   0.53   0.76      1.02   1.15     1.14    1.16   1.36
 RAMADAINN                         0.75         2.29     0.40   0.64   0.90      0.88   1.00     1.10    0.90   1.13
 RESIDENCEINN                      0.92         1.94     0.56   0.73   0.68      0.84   1.00     0.82    0.97   1.55
 ROYALINN                          0.23         0.87     1.07   0.81   0.99      0.85   0.78     0.49    1.04   2.87




© Copyright 2012 EMC Corporation. All rights reserved.                                                                 14
Segment Profiles
Index: % segment / % population
                            Cohort 1 Cohort 2 Cohort 3 Cohort 4 Cohort 5 Cohort 6 Cohort 7 Cohort 8 Cohort 9 Cohort 10
 Cellular telephone providers
 ATT                               1.00         0.86     1.18   1.24   1.14      1.04    0.97   0.91    0.86      0.79
 SPRINT                            1.75         0.55     1.93   1.72   1.15      0.81    0.67   0.56    0.50      0.36
 TMOBILE                           1.35         0.95     1.38   1.36   1.06      0.86    0.92   0.81    0.71      0.60
 VERIZONWRLS                       0.95         0.52     1.18   1.32   1.28      1.11    1.01   0.95    0.90      0.78
 Retail stores
 SEARSROEBUCK                      0.64         1.60     0.60   0.63   0.79      0.90    1.03   1.12    1.25      1.45
 TJMAXX                            0.68         1.46     0.71   0.66   0.83      0.96    1.02   1.12    1.22      1.32
 TARGET                            0.72         1.51     0.63   0.69   0.87      1.02    1.11   1.16    1.18      1.12
 WALMART                           0.82         1.77     0.82   0.82   0.88      0.89    0.92   0.97    1.00      1.11
 STAPLES                           0.69         1.72     0.71   0.55   0.68      0.88    0.97   1.06    1.19      1.54
 STARBUCKS                         0.82         0.47     0.81   0.88   1.04      1.21    1.23   1.23    1.19      1.14
 PAYPAL                            1.13         1.51     1.03   0.86   0.82      0.91 and1.00
                                                                               AT&T             0.90
                                                                                          Verizon       0.92      0.93
 Groceries
 PUBLIX                            0.84         3.16     0.35   0.45   0.56
                                                                              appear to be gaining
                                                                                 0.72    0.83   0.86    0.94      1.27
 MENARDS                           0.75         3.66     0.42   0.38   0.55     more high value0.93
                                                                                 0.71    0.77           0.85      0.98
 KROGER                            0.79         1.13     0.79   0.87   1.00        customers 1.10
                                                                                 1.01    1.03           1.09      1.20
 Gas and convenience stores
 EXXONMOBIL                        1.07         0.93     1.04   1.03   1.01      0.99    1.00   0.96    0.96      1.01
 SHEETZ                            0.87         0.36     0.91   1.01   0.96      0.96    1.04   1.21    1.37      1.31
 SHELLOIL                          1.12         1.04     1.03   1.04   1.01      1.01    0.98   0.93    0.93      0.91
 SPEEDWAY                          1.17         0.90     1.25   1.24   1.16      1.04    0.97   0.87    0.77      0.63
 Hotels
 HILTON                            0.69         1.70     0.49   0.53   0.76      1.02    1.15   1.14    1.16      1.36
 RAMADAINN                         0.75         2.29     0.40   0.64   0.90      0.88    1.00   1.10    0.90      1.13
 RESIDENCEINN                      0.92         1.94     0.56   0.73   0.68      0.84    1.00   0.82    0.97      1.55
 ROYALINN                          0.23         0.87     1.07   0.81   0.99      0.85    0.78   0.49    1.04      2.87




© Copyright 2012 EMC Corporation. All rights reserved.                                                                   15
Summary of Findings
• We cleaned and standardized merchant names and
         – Found 1.1 million distinct merchants from the original 113+ million
         – Discovered 90% of transactions and 90% of the money spent
           happened at less than 10% of the merchants
         – Identified that ‘Sic Codes’ significantly differ across like businesses
         – Identified differences in credit and debit purchase behavior
         – In reaction to the announcement that Square made August 8th we
           used cleaned merchant names to evaluate the potential impact of
           the trend towards alternative payment methods using the clean
           merchant names
• Segmentation augmented by a value added metric
         – We found that segmenting customers based on a rough measure of
           value added and combining that with transaction data can provide
           interesting insights
         – Prediction of migration from low to high value segments seems
           possible


© Copyright 2012 EMC Corporation. All rights reserved.                               16

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Standardizing +113 million Merchant Names in Financial Services with Greenplum Hadoop

  • 1. Applied Analytics with Greenplum Hadoop: Standardizing +113 million Merchant Names with RegEx and Fuzzy Matching Ian Andrews Mike Goddard © Copyright 2012 EMC Corporation. All rights reserved. 1
  • 2. Greenplum, A Division of EMC • 10 years of experience building and supporting enterprise-class massively parallel data processing software based on open source technology • Silicon-valley based core engineering talent from Yahoo!, Teradata, Oracle, Amazon, Microsoft, IBM, etc • 1,000 (and growing) personnel focused on Greenplum’s Big Data Platform – Greenplum Database – Greenplum HD (Hadoop) – Chorus – Data Computing Appliances – Data Scientists – Pivotal Labs • Fully integrated with EMC’s award-winning global support infrastructure. • 500+ customers in production globally across all industry segments. • Established relationships with ecosystems partners: Informatica, SAS, Talend, Pentaho, Microstrategy, etc. • Strategic development relationship with VMware around virtual big data platforms © Copyright 2012 EMC Corporation. All rights reserved. 2
  • 3. Greenplum Unified Analytic Platform © Copyright 2012 EMC Corporation. All rights reserved. 3
  • 4. Transaction Data - Merchant Name Standardization System © Copyright 2012 EMC Corporation. All rights reserved. 4
  • 5. Overview of Findings • Transaction data is difficult to analyze as merchants names found in credit and debit data are unstructured and non-standardized across single business entities • We created a system for cleaning and standardizing merchant names – Stage 1: feature extraction – Stage 2: automated cleanup using regular expressions – Stage 3: fuzzy matching algorithm – Stage 4: application of manual rules • This is an open system, easy to use, extend and modify • We used the results to do some preliminary analysis on the transaction data © Copyright 2012 EMC Corporation. All rights reserved. 5
  • 6. Background Information - Credit and Debit Data Overview % # transactions Credit Transactions1 Debit Transactions • 1,396,344 distinct merchant 14.62% • 2,598,462 distinct merchant names names • 16,554,889 credit transactions • 96,658,020 debit transactions ($1,979,801,143.50) ($3,471,084,518.72) 85.38% • 161,931 households with • 435,615 households with debit credit transaction transaction • Min: -$32,585 Debit Credit • Min: $0.01 • Max: $99,000 • Max: $39,404 • Average: $120 % sum transactions • Average: $36 • Std. Deviation: $496 • Std. Deviation: $89 36.32% 63.68% Debit Credit 1 Excludes 13 Sic Codes in depository institution activity group © Copyright 2012 EMC Corporation. All rights reserved. 6
  • 7. Why standardize merchant names? • Due to multiple names of same businesses across locations a single business entity appears as many in the database • Examples WAL-MART PAYPAL STARBUCKS WALMART PORTRAITS 23093 PAYPAL *SACCAR.COM STARBUCKSSTORE.COM-USD WAL-MART #2366 SE2 PAYPAL *BRICKSUPPLY STARBUCKS CORP00034488 WAL-MART STORE#1041 PAYPAL *BRETT2010FL SS-STARBUCKS WAL-MART SUPERCENTER 20 PAYPAL *UNITED T1 STARBUCKS J10431542 WAL MART LINCOLN PAYPAL *TL5354 STARBUCKS C #112201505 WALMART.COM RELOAD PAYPAL *CAR-KIT.COM STARBUCKS WEST30081525 © Copyright 2012 EMC Corporation. All rights reserved. 7
  • 8. Examples of name passing thru merchant name standardization system Original: Original: GIANT FOOD #089 PETSMART INC 1963 Features: Stage 1 Features: Length: 14 Length: 17 1st White Space: 6 1st White Space: 9 1st Special Characters: 12 Business Suffix: 10 1st Digit: 13 1st Digit: 14 Stage 2 Regex: Regex: [^(?-i)a-z] [^(?-i)a-z]|( INC )$ Remove all numbers (0-9), Remove all numbers (0-9), white space, white space, special & special characters characters, & remove Stage 3 business suffix Fuzzy Matching: Fuzzy Matching: 1016 (count of <170 PETSMART FOUND GIANTFOOD matches) (Not run) Stage 4 Manual Override: Manual Override: None None Final Results: Final Results: GIANTFOOD PETSMART © Copyright 2012 EMC Corporation. All rights reserved. 8
  • 9. Example Results - STARBUCKS Pre-Standardization Post-Standardization STARBUCKS DELI20371514 STARBUCKS STARBUCKS-ARIFJAN CAMP2 STARBUCKS STARBUCKS C #112201505 STARBUCKS STARBUCKS USA 00115832 STARBUCKS STARBUCK'S CAFE CROWNE STARBUCKS STARBUCKS CORP00134759 STARBUCKS ATL MED CTR STARBUCKS STARBUCKS T3 N STARBUCKS30031512 STARBUCKS STARBUCKS COFEE STARBUCKS STARBUCKS LA ISLA STARBUCKS OMNI FT WORTH - STARBUCKS STARBUCKS ST. RITA'S STARBUCKS STARBUCKS MGM GRND STARBUCKS-CASINO STARBUCKS 006 STARBUCKS AMR STARBUCKS © Copyright 2012 EMC Corporation. All rights reserved. 9
  • 10. 90% of all transactions occur at 7% of the merchants Company Total Name Transactions MCDONALDS 4,309,728 SPEEDWAY 2,032,474 WALMART 1,606,446 KROGER 1,564,819 SHELLOIL 1,546,056 SHEETZ 1,358,977 SUBWAY 1,280,037 REDBOX 1,236,148 EXXONMOBIL 1,205,451 WAWA 1,197,711 SUNO 1,180,799 WENDYS 1,066,628 Gini Coefficient = 0.9447 MARATHONOIL 1,050,593 • 0 represents equality MEIJER 1,017,998 • 1 represents all transactions at 1 merchant STARBUCKS 1,002,805 © Copyright 2012 EMC Corporation. All rights reserved. 10
  • 11. 90% of the total spend in 2011 occurred at top 8.3% of merchants Company Total spent Name WALMART $87,454,235.66 KROGER $63,850,902.99 SPEEDWAY $54,270,752.65 TARGET $48,086,797.70 MEIJER $46,716,327.56 WMSUPERCENTER $46,650,761.15 SHELLOIL $45,115,993.12 GIANTEAGLE $44,668,211.07 ATT $44,497,819.88 VERIZONWRLS $41,971,943.31 LOWES $34,952,686.13 SUNO $34,498,328.42 EXXONMOBIL $33,695,575.95 Gini Coefficient = 0.9408 MCDONALDS $30,869,463.74 • 0 represents equality SHEETZ $30,273,183.81 • 1 represents all money spent at 1 merchant © Copyright 2012 EMC Corporation. All rights reserved. 11
  • 12. ‘Sic Codes’ alone are problematic; they can differ greatly across like businesses • On average the top 1,000 frequently occurring merchants have ~6 sic codes associated with their cleaned merchant name WALMART TARGET SAFEWAY KROGER AT&T VERIZON T-MOBILE 4814 5310 5411 12 1711 4812 12 4816 5411 5499 5411 2741 4814 4812 5300 5732 5921 5499 3640 4899 5732 5411 8043 5541 4112 5999 5999 6300 8099 5542 5971 7311 7299 … … … 7399 … Total 31 Total 8 Total 71 Total 10 6 total matches 2 total matches 4 total matches © Copyright 2012 EMC Corporation. All rights reserved. 12
  • 13. Relative Value Add segments created by splitting population into deciles based on RVA RVA • Relative Value Added (RVA) provides an estimated ordinal ranking of customers using balance and transaction data (a rough precursor of EVA) • The RVA was created to put a context around the merchant name discovery, the distribution of PNC’s products and how they interact © Copyright 2012 EMC Corporation. All rights reserved. 13
  • 14. Segment Profiles Index: % segment / % population Cohort 1 Cohort 2 Cohort 3 Cohort 4 Cohort 5 Cohort marketing to 8 Cohort 9 Cohort 10 Target’s 6 Cohort 7 Cohort Cellular telephone providers higher income ATT 1.00 0.86 1.18 1.24 1.14 1.04 0.97 households seems to 0.91 0.86 0.79 SPRINT 1.75 0.55 1.93 1.72 1.15 0.81 0.67 0.56 0.50 0.36 have worked TMOBILE 1.35 0.95 1.38 1.36 1.06 0.86 0.92 0.81 0.71 0.60 VERIZONWRLS 0.95 0.52 1.18 1.32 1.28 1.11 1.01 0.95 0.90 0.78 Retail stores SEARSROEBUCK 0.64 1.60 0.60 0.63 0.79 0.90 1.03 1.12 1.25 1.45 TJMAXX 0.68 1.46 0.71 0.66 0.83 0.96 1.02 1.12 1.22 1.32 TARGET 0.72 1.51 0.63 0.69 0.87 1.02 1.11 1.16 1.18 1.12 WALMART 0.82 1.77 0.82 0.82 0.88 0.89 0.92 0.97 1.00 1.11 STAPLES 0.69 1.72 0.71 0.55 0.68 0.88 0.97 1.06 1.19 1.54 STARBUCKS 0.82 0.47 0.81 0.88 1.04 1.21 1.23 1.23 1.19 1.14 PAYPAL 1.13 1.51 1.03 0.86 0.82 0.91 1.00 0.90 0.92 0.93 Groceries PUBLIX 0.84 3.16 0.35 0.45 0.56 0.72 0.83 0.86 0.94 1.27 MENARDS 0.75 3.66 0.42 0.38 0.55 0.71 0.77 0.93 0.85 0.98 KROGER 0.79 1.13 0.79 0.87 1.00 1.01 1.03 1.10 1.09 1.20 Gas and convenience stores EXXONMOBIL 1.07 0.93 1.04 1.03 1.01 0.99 1.00 0.96 0.96 1.01 SHEETZ 0.87 0.36 0.91 1.01 0.96 0.96 1.04 1.21 1.37 1.31 SHELLOIL 1.12 1.04 1.03 1.04 1.01 1.01 0.98 0.93 0.93 0.91 SPEEDWAY 1.17 0.90 1.25 1.24 1.16 1.04 0.97 0.87 0.77 0.63 Hotels HILTON 0.69 1.70 0.49 0.53 0.76 1.02 1.15 1.14 1.16 1.36 RAMADAINN 0.75 2.29 0.40 0.64 0.90 0.88 1.00 1.10 0.90 1.13 RESIDENCEINN 0.92 1.94 0.56 0.73 0.68 0.84 1.00 0.82 0.97 1.55 ROYALINN 0.23 0.87 1.07 0.81 0.99 0.85 0.78 0.49 1.04 2.87 © Copyright 2012 EMC Corporation. All rights reserved. 14
  • 15. Segment Profiles Index: % segment / % population Cohort 1 Cohort 2 Cohort 3 Cohort 4 Cohort 5 Cohort 6 Cohort 7 Cohort 8 Cohort 9 Cohort 10 Cellular telephone providers ATT 1.00 0.86 1.18 1.24 1.14 1.04 0.97 0.91 0.86 0.79 SPRINT 1.75 0.55 1.93 1.72 1.15 0.81 0.67 0.56 0.50 0.36 TMOBILE 1.35 0.95 1.38 1.36 1.06 0.86 0.92 0.81 0.71 0.60 VERIZONWRLS 0.95 0.52 1.18 1.32 1.28 1.11 1.01 0.95 0.90 0.78 Retail stores SEARSROEBUCK 0.64 1.60 0.60 0.63 0.79 0.90 1.03 1.12 1.25 1.45 TJMAXX 0.68 1.46 0.71 0.66 0.83 0.96 1.02 1.12 1.22 1.32 TARGET 0.72 1.51 0.63 0.69 0.87 1.02 1.11 1.16 1.18 1.12 WALMART 0.82 1.77 0.82 0.82 0.88 0.89 0.92 0.97 1.00 1.11 STAPLES 0.69 1.72 0.71 0.55 0.68 0.88 0.97 1.06 1.19 1.54 STARBUCKS 0.82 0.47 0.81 0.88 1.04 1.21 1.23 1.23 1.19 1.14 PAYPAL 1.13 1.51 1.03 0.86 0.82 0.91 and1.00 AT&T 0.90 Verizon 0.92 0.93 Groceries PUBLIX 0.84 3.16 0.35 0.45 0.56 appear to be gaining 0.72 0.83 0.86 0.94 1.27 MENARDS 0.75 3.66 0.42 0.38 0.55 more high value0.93 0.71 0.77 0.85 0.98 KROGER 0.79 1.13 0.79 0.87 1.00 customers 1.10 1.01 1.03 1.09 1.20 Gas and convenience stores EXXONMOBIL 1.07 0.93 1.04 1.03 1.01 0.99 1.00 0.96 0.96 1.01 SHEETZ 0.87 0.36 0.91 1.01 0.96 0.96 1.04 1.21 1.37 1.31 SHELLOIL 1.12 1.04 1.03 1.04 1.01 1.01 0.98 0.93 0.93 0.91 SPEEDWAY 1.17 0.90 1.25 1.24 1.16 1.04 0.97 0.87 0.77 0.63 Hotels HILTON 0.69 1.70 0.49 0.53 0.76 1.02 1.15 1.14 1.16 1.36 RAMADAINN 0.75 2.29 0.40 0.64 0.90 0.88 1.00 1.10 0.90 1.13 RESIDENCEINN 0.92 1.94 0.56 0.73 0.68 0.84 1.00 0.82 0.97 1.55 ROYALINN 0.23 0.87 1.07 0.81 0.99 0.85 0.78 0.49 1.04 2.87 © Copyright 2012 EMC Corporation. All rights reserved. 15
  • 16. Summary of Findings • We cleaned and standardized merchant names and – Found 1.1 million distinct merchants from the original 113+ million – Discovered 90% of transactions and 90% of the money spent happened at less than 10% of the merchants – Identified that ‘Sic Codes’ significantly differ across like businesses – Identified differences in credit and debit purchase behavior – In reaction to the announcement that Square made August 8th we used cleaned merchant names to evaluate the potential impact of the trend towards alternative payment methods using the clean merchant names • Segmentation augmented by a value added metric – We found that segmenting customers based on a rough measure of value added and combining that with transaction data can provide interesting insights – Prediction of migration from low to high value segments seems possible © Copyright 2012 EMC Corporation. All rights reserved. 16

Notes de l'éditeur

  1. SCRIPT:This diagram depicts the Greenplum Unified Analytics Platform. Let’s take a high level look of what it looks like from a stack diagram. The foundations of UAP lie in Greenplum Database for analyzing your structured data, co-processing unstructured data with Greenplum Hadoop. These two components are fused together by Greenplum gNet, which allows for parallel data exchange and parallel query access. These are overlaid with a unified data access and query layer that combines the languages of choice for your analysts (SQL, MapReduce, Etc.). Over the access layer comes our powerful partner tool and services layer. We are not about locking customers into a single tool or stack. Instead we work with the tool vendor of your choice, be it SAS or R, Microstrategy or informatica. And what truly enables productivity and ensures you are getting maximum value out of your data scientist team is Greenplum Chorus. What sets this diagram apart from a typically vendor example is the inclusion of people – Data Stakeholders. UAP is designed to enable an emerging group of talent, the new practitioners, that we refer to as the Data Science team. This team can include the data platform administrator, data scientist, analysts, engineers, BI teams, and most importantly the line of business user and how they participate on this data science team.We develop, package, and support this as a unified software platform available over your favorite commodity hardware, cloud infrastructure, or from our modular Data Computing Appliance. NOTES: