SlideShare une entreprise Scribd logo
1  sur  35
WHEN WORLDS COLLIDE - BIG
                           DATA & WEB ANALYTICS IN 2013
                           Presented by
                           Jean-François Bélisle
                           Director – Consulting Services
                           @K3Media




K3 MEDIA INC. | 204 du Saint-Sacrement, 7ème étage | Montréal (Québec) | H2Y 1W8 T : 514.861.3332 | F : 514.861.3398
GAME PLAN



    1. Where is my money?                 4


    2.   Off-line Customer Intelligence   14


    3.   On-line Customer Intelligence    23



    4.   Conclusion                       34




2
THE GUY IN FRONT

                 Jean-François (JF) Bélisle
                 Director - Consulting Services @ K3 Media


Formation    B.Sc. Economics, Université de Montréal

             M.Sc. Marketing, HEC Montréal
             Award of Achievement, Web Analytics, University of British Columbia
             Ph.D Studies, Marketing & Computational Stats , McGill University
             Executive Training in Customer Analytics, University of Pennsylvania (Wharton)


Experience
             Jean-François is the Director – Consulting Services at K3 Media. He is responsible for: (1) New Business
             Development, (2) Training partners, and (3) Supervising the Consulting Services team.

             He has a background in Economics and Computational Statistics, and used to be a Lecturer at HEC Montréal
             where he created the eMarketing class. He is also a web expert who has given more than 100 conferences.

             He has solid critical thinking and analytical skills and more than 8 years of experience as a consultant gained
             as a Manager at AIR MILES and as an independent consultant. He has worked for clients such as P&G, Bell,
             Jean Coutu, Rona and the Quebec Government to name a few, where he used his knowledge in Interactive
             Marketing, CRM and Data Mining.
SECTION 1
WHERE IS MY MONEY?
1 – WHERE IS MY MONEY?

    ASK BRIAN OR HIRE A PRO?




5
1 – WHERE IS MY MONEY?

       4 AREAS = 1 GOAL

    1. Business Intelligence: Designates the ways, tools and methods used to
       collect, consolidate, model and restore the material or immaterial
       business data used to support the decision making process and help the
       decision maker have a better overview of the activity.

    2. Customer Intelligence: The Customer part of Business intelligence.

    3. Big Data Analytics: Analytics with humongous datasets –> When the
       data doesn’t fit in an Excel file (thx @shamelCP).

    4. Web Analytics: What most of us are doing here!




6
1 – WHERE IS MY MONEY?

       LINKS BETWEEN AREAS, NOW!

                                Business Intelligence

    Customer Intelligence
                                       Web Analytics




    Big Data Analytics




7
1 – WHERE IS MY MONEY?

       LINKS BETWEEN AREAS, TOMORROW!
                                Business Intelligence
    Customer Intelligence                               Web Analytics

    Big Data Analytics




8
1 – WHERE IS MY MONEY?

       WHO’S GROWING FASTER?

    1. Big Data Analytics

    2. Web Analytics

    3. Customer Intelligence

    4. Business Intelligence




9
1 – WHERE IS MY MONEY?


        GALACTIC DATA EXPLOSION

                                                                    More Data

                                                                               ≠

                                                                More Insights


     Source: 2011 IBM Global Chief Marketing Officer: From Streched to Strengthened (www.ibm.com/cmostudy)


10
1 – WHERE IS MY MONEY?


      …CLEAN RELATIONAL DATABASES
            Social &
            Mobile                                                   Customer Attributes
                                                                     and Interactions



     Traffic                                                                      Off-line
     Sources                                                                      Interactions



           Lifetime                                                           Systems of
           Website                                                            Record
           Behavior
                           Source: IBM Customer Profiles (LIVE) terminology


11
1 – WHERE IS MY MONEY?


     ADVANCED CUSTOMER INTELLIGENCE
 A dichotomy:

 Off-line Customer Intelligence
 –> Manual analysis by an analyst (or any other             Take your
       type of humans)                                       time for
 • Supervised methods (predictive analysis)                  analysis
 • Non-supervised methods


 On-line Customer Intelligence (real-time)
 –> Algorithmic Recommendation Systems                      Real-time
 May include algorithms based on off-line supervised         analysis
 methods (predictive analysis) and non-supervised methods


12
SECTION 2
OFF-LINE CUSTOMER
  INTELLIGENCE
2 – OFF-LINE CUSTOMER INTELLIGENCE

     SOFTWARE




14
2 – OFF-LINE CUSTOMER INTELLIGENCE

     SUPERVISED METHODS

     •




15
2 – OFF-LINE CUSTOMER INTELLIGENCE


     SUPERVISED METHODS
 Churn analysis: Type of analysis that helps
 detecting beforehand customers that have the
 highest probability of churning.

 Supervised statistical methods:
 1. Multinomial Logit (MNL)
 2. Linear Discriminant Analysis (LDA)      9. Support Vector Machines (SVM)
 3. Quadratic Discriminant Analysis (QDA)   10. Classification and Regression
 4. Flexible Discriminant Analysis (FDA)    Trees (CART)
 5. Penalized Discriminant Analysis (PDA)   11. Bagging
 6. Mixture Discriminant Analysis (MDA)     12. Boosting
 7. Naïve Bayes Classifier (NBC)            13. Random Forests
 8. K-Nearest Neighbor (KNN)                14. Neural Networks
 9. Support Vector Machines with multiple
 Kernels (SVM)

16
2 – OFF-LINE CUSTOMER INTELLIGENCE


     SUPERVISED METHODS

 A few application:
 1. Identify customers who have a higher
    probability of buying a product based on
    their tastes and previous purchases.
 2. Isolate the impact of advertising campaigns
    on     sales    (taking    in    consideration
    cannibalization)
 3. Compute the impact of each communication
    channel on sales
 4. Identify    the    characteristics   of    the
    respondents vs. Non-respondents in an
    email offer.
 5. Identify the causes (X) of (Y)


17
2 – OFF-LINE CUSTOMER INTELLIGENCE

     NON-SUPERVISED METHODS

 X = multiple independent variables (all the variables we
 can collect: navigation data, psychographics,
 sociodemographics)

 Example 1 – Segmentation through clustering

 Question: Based on the independent             variables
 available, how can we segment our market?

 Segmentation: Strategy that involves creating groups of
 customers based on similar caracteristics in a way that
 every segment created is different from the others.



18
2 – OFF-LINE CUSTOMER INTELLIGENCE


     NON-SUPERVISED METHODS
 Example 2 – RFM Analysis

 Segmentation method that allows the
 creation of a classification of customers
 based on their buying habits. The RFM
 classification is based on 3 criteria:

 (1) Recency: date of the last purchase or the
 last customer contact,
 (2) Frequency: frequency of the purchased
 on a given reference period, and
 (3) Monetary: cumulated amount of
 purchases on that period.


19
2 - OFF-LINE CUSTOMER INTELLIGENCE


     NON-SUPERVISED METHODS
 Example 3 - Affinity analysis
 Analysis that helps uncovering relations of
 cooccurrences between activities realized by
 customers or groups of customers.

 Other examples
 1. Personas Optimization
 2. Market Basket Analysis
 3. Front page flyer optimization
 4. Assortment optimization




20
SECTION 3
ON-LINE CUSTOMER INTELLIGENCE
3 – ON-LINE CUSTOMER INTELLIGENCE


     RECOMMENDATION SYSTEMS
 Définition: Specific form of filtering that seeks to present elements of
   information (movies, music, books, news, pictures, web pages, etc.) that
   should be of interest to a user.

 Generally, a recommendation system allows the comparaison of a user’s
   profile to certain reference features and seeks to offer informations that are
   as relevant as possible to the user using predictive algoritmns.

 Those features can come from :
 1. The object itself -> Content-Based Approach
 2. The user
 3. The social environment-> Collaborative Filtering




22
3 – ON-LINE CUSTOMER INTELLIGENCE


     AMAZON.COM’S PATENT




23
3 – ON-LINE CUSTOMER INTELLIGENCE


     … BASED ON PURCHASE HISTORY




                 Recommendations based on the purchase history



24
3 – ON-LINE CUSTOMER INTELLIGENCE


     … BASED ON A REQUEST




25
3 – ON-LINE CUSTOMER INTELLIGENCE


     … BASED ON SIMILARITY




     Recommendations based on the similarity with the purchases of
                           other users

26
3 – ON-LINE CUSTOMER INTELLIGENCE


     GOING FOR THE BUNDLE




      Bundle: combining several products in one offer based on the
     similarity between your purchase and those of other customers.




27
3 – ON-LINE CUSTOMER INTELLIGENCE


      MORE RECOMMENDATION SYSTEMS

 1.   Avail Intelligence
 2.   Barilliance
 3.   Baynote
 4.   Certona
 5.   Peerius
 6.   Predictive intent
 7.   RichRelevance




28
3 – ON-LINE CUSTOMER INTELLIGENCE


     …AND THE INTEGRATION WITH THE CMS




29
3 – ON-LINE CUSTOMER INTELLIGENCE


        … AND WEB ANALYTICS SOLUTIONS
     • IBM Intelligent Offer generates personalized product recommendations for each
       visitor based on current session and historical browsing, shopping and purchasing
       data collected by IBM.

     • An offer is a collection of settings that includes the type, algorithm affinity
       weighting, data analysis time period, and business rules that generates a list of
       recommended items.

     • The offers can be on the:
         • Homepage
         • Product page
         • Shopping card
         • Email
         • Search results page


 Source: 2011 IBM Coremetrics Intelligent offer guide

30
3 – ON-LINE CUSTOMER INTELLIGENCE


       REMARKETING
     Remarketing: Action taken on by companies to reintroduce
     a product or service to the market in response to declining sales. The
     company remarkets the product as something that has been improved to
     reignite interest and hopefully improve sales. (businessdictionary.com)




31
SECTION 4
CONCLUSION
4 – CONCLUSION

       THE FUTURE IS BRIGHT

     Possibilities related to customer Intelligence are countless. The only thing
     needed for a strategist is to understand the potential of the methods (off-
     line and on-line) to generate ideas and then try to convince the HiPPO.




33
4 – CONCLUSION

     GET SOME TRAINING … IN FRENCH

             http://www.k3media.com/services/formation-google-
             analytics/




             PROMO CODE = EMETRICS for 20%




34
THANKS AND I HOPE YOU’VE
          APPRECIATED!




         Jean-François (JF) Bélisle
     Phone number: 514-861-3332 ext 50
        Email: jfbelisle@k3media.com
          Corp.: www.k3media.com
      LinkedIn: Linkedin.com/in/jfbelisle
              Twitter: @jfbelisle
              Site: jfbelisle.com
35
            Any Questions ? 

Contenu connexe

Tendances

201407 Digital Disruption in Banking - Accenture Consumer Digital Banking Sur...
201407 Digital Disruption in Banking - Accenture Consumer Digital Banking Sur...201407 Digital Disruption in Banking - Accenture Consumer Digital Banking Sur...
201407 Digital Disruption in Banking - Accenture Consumer Digital Banking Sur...
Francisco Calzado
 
ECT 584_Research Paper_JoyceRose_08182015
ECT 584_Research Paper_JoyceRose_08182015ECT 584_Research Paper_JoyceRose_08182015
ECT 584_Research Paper_JoyceRose_08182015
Joyce Rose
 
Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...
Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...
Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...
GRUC
 
Omma display 1245 pam horan
Omma display 1245 pam horanOmma display 1245 pam horan
Omma display 1245 pam horan
MediaPost
 

Tendances (19)

ADMA Marketing Data Strategy
ADMA Marketing Data StrategyADMA Marketing Data Strategy
ADMA Marketing Data Strategy
 
Ebit - Buscape- #34 webshoppers english 2016
Ebit - Buscape- #34 webshoppers english 2016Ebit - Buscape- #34 webshoppers english 2016
Ebit - Buscape- #34 webshoppers english 2016
 
201407 Digital Disruption in Banking - Accenture Consumer Digital Banking Sur...
201407 Digital Disruption in Banking - Accenture Consumer Digital Banking Sur...201407 Digital Disruption in Banking - Accenture Consumer Digital Banking Sur...
201407 Digital Disruption in Banking - Accenture Consumer Digital Banking Sur...
 
Digital Process Acupuncture: How Small Changes Can Heal Business, and Spark B...
Digital Process Acupuncture: How Small Changes Can Heal Business, and Spark B...Digital Process Acupuncture: How Small Changes Can Heal Business, and Spark B...
Digital Process Acupuncture: How Small Changes Can Heal Business, and Spark B...
 
Knowledge Stewarding Final Presentation
Knowledge Stewarding Final PresentationKnowledge Stewarding Final Presentation
Knowledge Stewarding Final Presentation
 
Providing Business Value With Digital - Bridge Worldwide Measurement Services...
Providing Business Value With Digital - Bridge Worldwide Measurement Services...Providing Business Value With Digital - Bridge Worldwide Measurement Services...
Providing Business Value With Digital - Bridge Worldwide Measurement Services...
 
Cookies, FLoC & GDPR: Marketing Impact
Cookies, FLoC & GDPR: Marketing ImpactCookies, FLoC & GDPR: Marketing Impact
Cookies, FLoC & GDPR: Marketing Impact
 
DMS: Bluekai Pitch-a-Kucha: Data Activation: Separating Signal from Noise
DMS: Bluekai Pitch-a-Kucha: Data Activation: Separating Signal from NoiseDMS: Bluekai Pitch-a-Kucha: Data Activation: Separating Signal from Noise
DMS: Bluekai Pitch-a-Kucha: Data Activation: Separating Signal from Noise
 
ECT 584_Research Paper_JoyceRose_08182015
ECT 584_Research Paper_JoyceRose_08182015ECT 584_Research Paper_JoyceRose_08182015
ECT 584_Research Paper_JoyceRose_08182015
 
Workshop: Make the Most of Customer Data Platforms - David Raab
Workshop: Make the Most of Customer Data Platforms - David RaabWorkshop: Make the Most of Customer Data Platforms - David Raab
Workshop: Make the Most of Customer Data Platforms - David Raab
 
Big Data - New Insights Transform Industries
Big Data - New Insights Transform IndustriesBig Data - New Insights Transform Industries
Big Data - New Insights Transform Industries
 
Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...
Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...
Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...
 
Omma display 1245 pam horan
Omma display 1245 pam horanOmma display 1245 pam horan
Omma display 1245 pam horan
 
Bluekai Little Blue Book
Bluekai Little Blue BookBluekai Little Blue Book
Bluekai Little Blue Book
 
Secret to Effective Digital Connection for Insurance Marketers
Secret to Effective Digital Connection for Insurance MarketersSecret to Effective Digital Connection for Insurance Marketers
Secret to Effective Digital Connection for Insurance Marketers
 
What Is That DMP Good For, Anyway?
What Is That DMP Good For, Anyway?What Is That DMP Good For, Anyway?
What Is That DMP Good For, Anyway?
 
Research Presentation: How Numbers are Powering the Next Era of Marketing
Research Presentation: How Numbers are Powering the Next Era of MarketingResearch Presentation: How Numbers are Powering the Next Era of Marketing
Research Presentation: How Numbers are Powering the Next Era of Marketing
 
SAB: transformation banking distribution
SAB: transformation banking distributionSAB: transformation banking distribution
SAB: transformation banking distribution
 
Webhound turning webdataintointelligence
Webhound turning webdataintointelligenceWebhound turning webdataintointelligence
Webhound turning webdataintointelligence
 

Similaire à When Worlds Collide - Big Data & Web Analytics in 2013 - Jean-Francois Belisle

Big Data - Analytics iC-360
Big Data - Analytics iC-360Big Data - Analytics iC-360
Big Data - Analytics iC-360
davemishra
 
Customer Insights Summit Toronto 2012
Customer Insights Summit Toronto 2012Customer Insights Summit Toronto 2012
Customer Insights Summit Toronto 2012
Fabiana Pereira
 
Tesco voice of the customer: achieving a 360 customer view
Tesco voice of the customer: achieving a 360 customer viewTesco voice of the customer: achieving a 360 customer view
Tesco voice of the customer: achieving a 360 customer view
localinsight
 
A marketers guide to data analytics marketing finder webinar 17 july 2013
A marketers guide to data analytics   marketing finder webinar 17 july 2013A marketers guide to data analytics   marketing finder webinar 17 july 2013
A marketers guide to data analytics marketing finder webinar 17 july 2013
marketingfinder.co.uk
 

Similaire à When Worlds Collide - Big Data & Web Analytics in 2013 - Jean-Francois Belisle (20)

Knowledge Extraction from Social Media
Knowledge Extraction from Social MediaKnowledge Extraction from Social Media
Knowledge Extraction from Social Media
 
Big Data - Analytics iC-360
Big Data - Analytics iC-360Big Data - Analytics iC-360
Big Data - Analytics iC-360
 
Customer Insights Summit Toronto 2012
Customer Insights Summit Toronto 2012Customer Insights Summit Toronto 2012
Customer Insights Summit Toronto 2012
 
Operationalizing Customer Analytics with Azure and Power BI
Operationalizing Customer Analytics with Azure and Power BIOperationalizing Customer Analytics with Azure and Power BI
Operationalizing Customer Analytics with Azure and Power BI
 
User Experience Strategy
User Experience StrategyUser Experience Strategy
User Experience Strategy
 
uae views on big data
  uae views on  big data  uae views on  big data
uae views on big data
 
OmniChannel Marketing Project 2012
OmniChannel Marketing Project 2012OmniChannel Marketing Project 2012
OmniChannel Marketing Project 2012
 
Business intelligence
Business intelligenceBusiness intelligence
Business intelligence
 
Big Data – Marketing Challenge or Opportunity?
Big Data – Marketing Challenge or Opportunity?Big Data – Marketing Challenge or Opportunity?
Big Data – Marketing Challenge or Opportunity?
 
From Web Analytics to Web Intelligence
From Web Analytics to Web IntelligenceFrom Web Analytics to Web Intelligence
From Web Analytics to Web Intelligence
 
Tesco voice of the customer: achieving a 360 customer view
Tesco voice of the customer: achieving a 360 customer viewTesco voice of the customer: achieving a 360 customer view
Tesco voice of the customer: achieving a 360 customer view
 
Big data and analytics ibm digital game plan short v2 nonconf
Big data and analytics ibm digital game plan short v2 nonconfBig data and analytics ibm digital game plan short v2 nonconf
Big data and analytics ibm digital game plan short v2 nonconf
 
A marketers guide to data analytics marketing finder webinar 17 july 2013
A marketers guide to data analytics   marketing finder webinar 17 july 2013A marketers guide to data analytics   marketing finder webinar 17 july 2013
A marketers guide to data analytics marketing finder webinar 17 july 2013
 
Five Global Marketing Megatrends
Five Global Marketing MegatrendsFive Global Marketing Megatrends
Five Global Marketing Megatrends
 
Top 5 Strategies for Retail Data Analytics
Top 5 Strategies for Retail Data AnalyticsTop 5 Strategies for Retail Data Analytics
Top 5 Strategies for Retail Data Analytics
 
Module-1 Marketing in Digital Environment
Module-1 Marketing in Digital EnvironmentModule-1 Marketing in Digital Environment
Module-1 Marketing in Digital Environment
 
Big Data, Analytics and Data Science
Big Data, Analytics and Data ScienceBig Data, Analytics and Data Science
Big Data, Analytics and Data Science
 
XL PPTX
XL PPTXXL PPTX
XL PPTX
 
Let the Data be your Guide - Marketing Analytics 1,2,3
Let the Data be your Guide - Marketing Analytics 1,2,3Let the Data be your Guide - Marketing Analytics 1,2,3
Let the Data be your Guide - Marketing Analytics 1,2,3
 
Big data in fintech ecosystem
Big data in fintech ecosystemBig data in fintech ecosystem
Big data in fintech ecosystem
 

Dernier

Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service BangaloreCall Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
amitlee9823
 
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
dollysharma2066
 
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
Sheetaleventcompany
 
Call Girls In Majnu Ka Tilla 959961~3876 Shot 2000 Night 8000
Call Girls In Majnu Ka Tilla 959961~3876 Shot 2000 Night 8000Call Girls In Majnu Ka Tilla 959961~3876 Shot 2000 Night 8000
Call Girls In Majnu Ka Tilla 959961~3876 Shot 2000 Night 8000
dlhescort
 
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
dlhescort
 
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
amitlee9823
 

Dernier (20)

👉Chandigarh Call Girls 👉9878799926👉Just Call👉Chandigarh Call Girl In Chandiga...
👉Chandigarh Call Girls 👉9878799926👉Just Call👉Chandigarh Call Girl In Chandiga...👉Chandigarh Call Girls 👉9878799926👉Just Call👉Chandigarh Call Girl In Chandiga...
👉Chandigarh Call Girls 👉9878799926👉Just Call👉Chandigarh Call Girl In Chandiga...
 
Marel Q1 2024 Investor Presentation from May 8, 2024
Marel Q1 2024 Investor Presentation from May 8, 2024Marel Q1 2024 Investor Presentation from May 8, 2024
Marel Q1 2024 Investor Presentation from May 8, 2024
 
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service BangaloreCall Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
 
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
 
How to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League CityHow to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League City
 
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
 
Famous Olympic Siblings from the 21st Century
Famous Olympic Siblings from the 21st CenturyFamous Olympic Siblings from the 21st Century
Famous Olympic Siblings from the 21st Century
 
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
 
Call Girls In Majnu Ka Tilla 959961~3876 Shot 2000 Night 8000
Call Girls In Majnu Ka Tilla 959961~3876 Shot 2000 Night 8000Call Girls In Majnu Ka Tilla 959961~3876 Shot 2000 Night 8000
Call Girls In Majnu Ka Tilla 959961~3876 Shot 2000 Night 8000
 
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
 
Malegaon Call Girls Service ☎ ️82500–77686 ☎️ Enjoy 24/7 Escort Service
Malegaon Call Girls Service ☎ ️82500–77686 ☎️ Enjoy 24/7 Escort ServiceMalegaon Call Girls Service ☎ ️82500–77686 ☎️ Enjoy 24/7 Escort Service
Malegaon Call Girls Service ☎ ️82500–77686 ☎️ Enjoy 24/7 Escort Service
 
Dr. Admir Softic_ presentation_Green Club_ENG.pdf
Dr. Admir Softic_ presentation_Green Club_ENG.pdfDr. Admir Softic_ presentation_Green Club_ENG.pdf
Dr. Admir Softic_ presentation_Green Club_ENG.pdf
 
Value Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsValue Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and pains
 
Business Model Canvas (BMC)- A new venture concept
Business Model Canvas (BMC)-  A new venture conceptBusiness Model Canvas (BMC)-  A new venture concept
Business Model Canvas (BMC)- A new venture concept
 
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
 
SEO Case Study: How I Increased SEO Traffic & Ranking by 50-60% in 6 Months
SEO Case Study: How I Increased SEO Traffic & Ranking by 50-60%  in 6 MonthsSEO Case Study: How I Increased SEO Traffic & Ranking by 50-60%  in 6 Months
SEO Case Study: How I Increased SEO Traffic & Ranking by 50-60% in 6 Months
 
Uneak White's Personal Brand Exploration Presentation
Uneak White's Personal Brand Exploration PresentationUneak White's Personal Brand Exploration Presentation
Uneak White's Personal Brand Exploration Presentation
 
JAYNAGAR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRL
JAYNAGAR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRLJAYNAGAR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRL
JAYNAGAR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRL
 
Phases of Negotiation .pptx
 Phases of Negotiation .pptx Phases of Negotiation .pptx
Phases of Negotiation .pptx
 
Falcon Invoice Discounting platform in india
Falcon Invoice Discounting platform in indiaFalcon Invoice Discounting platform in india
Falcon Invoice Discounting platform in india
 

When Worlds Collide - Big Data & Web Analytics in 2013 - Jean-Francois Belisle

  • 1. WHEN WORLDS COLLIDE - BIG DATA & WEB ANALYTICS IN 2013 Presented by Jean-François Bélisle Director – Consulting Services @K3Media K3 MEDIA INC. | 204 du Saint-Sacrement, 7ème étage | Montréal (Québec) | H2Y 1W8 T : 514.861.3332 | F : 514.861.3398
  • 2. GAME PLAN 1. Where is my money? 4 2. Off-line Customer Intelligence 14 3. On-line Customer Intelligence 23 4. Conclusion 34 2
  • 3. THE GUY IN FRONT Jean-François (JF) Bélisle Director - Consulting Services @ K3 Media Formation B.Sc. Economics, Université de Montréal M.Sc. Marketing, HEC Montréal Award of Achievement, Web Analytics, University of British Columbia Ph.D Studies, Marketing & Computational Stats , McGill University Executive Training in Customer Analytics, University of Pennsylvania (Wharton) Experience Jean-François is the Director – Consulting Services at K3 Media. He is responsible for: (1) New Business Development, (2) Training partners, and (3) Supervising the Consulting Services team. He has a background in Economics and Computational Statistics, and used to be a Lecturer at HEC Montréal where he created the eMarketing class. He is also a web expert who has given more than 100 conferences. He has solid critical thinking and analytical skills and more than 8 years of experience as a consultant gained as a Manager at AIR MILES and as an independent consultant. He has worked for clients such as P&G, Bell, Jean Coutu, Rona and the Quebec Government to name a few, where he used his knowledge in Interactive Marketing, CRM and Data Mining.
  • 4. SECTION 1 WHERE IS MY MONEY?
  • 5. 1 – WHERE IS MY MONEY? ASK BRIAN OR HIRE A PRO? 5
  • 6. 1 – WHERE IS MY MONEY? 4 AREAS = 1 GOAL 1. Business Intelligence: Designates the ways, tools and methods used to collect, consolidate, model and restore the material or immaterial business data used to support the decision making process and help the decision maker have a better overview of the activity. 2. Customer Intelligence: The Customer part of Business intelligence. 3. Big Data Analytics: Analytics with humongous datasets –> When the data doesn’t fit in an Excel file (thx @shamelCP). 4. Web Analytics: What most of us are doing here! 6
  • 7. 1 – WHERE IS MY MONEY? LINKS BETWEEN AREAS, NOW! Business Intelligence Customer Intelligence Web Analytics Big Data Analytics 7
  • 8. 1 – WHERE IS MY MONEY? LINKS BETWEEN AREAS, TOMORROW! Business Intelligence Customer Intelligence Web Analytics Big Data Analytics 8
  • 9. 1 – WHERE IS MY MONEY? WHO’S GROWING FASTER? 1. Big Data Analytics 2. Web Analytics 3. Customer Intelligence 4. Business Intelligence 9
  • 10. 1 – WHERE IS MY MONEY? GALACTIC DATA EXPLOSION More Data ≠ More Insights Source: 2011 IBM Global Chief Marketing Officer: From Streched to Strengthened (www.ibm.com/cmostudy) 10
  • 11. 1 – WHERE IS MY MONEY? …CLEAN RELATIONAL DATABASES Social & Mobile Customer Attributes and Interactions Traffic Off-line Sources Interactions Lifetime Systems of Website Record Behavior Source: IBM Customer Profiles (LIVE) terminology 11
  • 12. 1 – WHERE IS MY MONEY? ADVANCED CUSTOMER INTELLIGENCE A dichotomy: Off-line Customer Intelligence –> Manual analysis by an analyst (or any other Take your type of humans) time for • Supervised methods (predictive analysis) analysis • Non-supervised methods On-line Customer Intelligence (real-time) –> Algorithmic Recommendation Systems Real-time May include algorithms based on off-line supervised analysis methods (predictive analysis) and non-supervised methods 12
  • 14. 2 – OFF-LINE CUSTOMER INTELLIGENCE SOFTWARE 14
  • 15. 2 – OFF-LINE CUSTOMER INTELLIGENCE SUPERVISED METHODS • 15
  • 16. 2 – OFF-LINE CUSTOMER INTELLIGENCE SUPERVISED METHODS Churn analysis: Type of analysis that helps detecting beforehand customers that have the highest probability of churning. Supervised statistical methods: 1. Multinomial Logit (MNL) 2. Linear Discriminant Analysis (LDA) 9. Support Vector Machines (SVM) 3. Quadratic Discriminant Analysis (QDA) 10. Classification and Regression 4. Flexible Discriminant Analysis (FDA) Trees (CART) 5. Penalized Discriminant Analysis (PDA) 11. Bagging 6. Mixture Discriminant Analysis (MDA) 12. Boosting 7. Naïve Bayes Classifier (NBC) 13. Random Forests 8. K-Nearest Neighbor (KNN) 14. Neural Networks 9. Support Vector Machines with multiple Kernels (SVM) 16
  • 17. 2 – OFF-LINE CUSTOMER INTELLIGENCE SUPERVISED METHODS A few application: 1. Identify customers who have a higher probability of buying a product based on their tastes and previous purchases. 2. Isolate the impact of advertising campaigns on sales (taking in consideration cannibalization) 3. Compute the impact of each communication channel on sales 4. Identify the characteristics of the respondents vs. Non-respondents in an email offer. 5. Identify the causes (X) of (Y) 17
  • 18. 2 – OFF-LINE CUSTOMER INTELLIGENCE NON-SUPERVISED METHODS X = multiple independent variables (all the variables we can collect: navigation data, psychographics, sociodemographics) Example 1 – Segmentation through clustering Question: Based on the independent variables available, how can we segment our market? Segmentation: Strategy that involves creating groups of customers based on similar caracteristics in a way that every segment created is different from the others. 18
  • 19. 2 – OFF-LINE CUSTOMER INTELLIGENCE NON-SUPERVISED METHODS Example 2 – RFM Analysis Segmentation method that allows the creation of a classification of customers based on their buying habits. The RFM classification is based on 3 criteria: (1) Recency: date of the last purchase or the last customer contact, (2) Frequency: frequency of the purchased on a given reference period, and (3) Monetary: cumulated amount of purchases on that period. 19
  • 20. 2 - OFF-LINE CUSTOMER INTELLIGENCE NON-SUPERVISED METHODS Example 3 - Affinity analysis Analysis that helps uncovering relations of cooccurrences between activities realized by customers or groups of customers. Other examples 1. Personas Optimization 2. Market Basket Analysis 3. Front page flyer optimization 4. Assortment optimization 20
  • 22. 3 – ON-LINE CUSTOMER INTELLIGENCE RECOMMENDATION SYSTEMS Définition: Specific form of filtering that seeks to present elements of information (movies, music, books, news, pictures, web pages, etc.) that should be of interest to a user. Generally, a recommendation system allows the comparaison of a user’s profile to certain reference features and seeks to offer informations that are as relevant as possible to the user using predictive algoritmns. Those features can come from : 1. The object itself -> Content-Based Approach 2. The user 3. The social environment-> Collaborative Filtering 22
  • 23. 3 – ON-LINE CUSTOMER INTELLIGENCE AMAZON.COM’S PATENT 23
  • 24. 3 – ON-LINE CUSTOMER INTELLIGENCE … BASED ON PURCHASE HISTORY Recommendations based on the purchase history 24
  • 25. 3 – ON-LINE CUSTOMER INTELLIGENCE … BASED ON A REQUEST 25
  • 26. 3 – ON-LINE CUSTOMER INTELLIGENCE … BASED ON SIMILARITY Recommendations based on the similarity with the purchases of other users 26
  • 27. 3 – ON-LINE CUSTOMER INTELLIGENCE GOING FOR THE BUNDLE Bundle: combining several products in one offer based on the similarity between your purchase and those of other customers. 27
  • 28. 3 – ON-LINE CUSTOMER INTELLIGENCE MORE RECOMMENDATION SYSTEMS 1. Avail Intelligence 2. Barilliance 3. Baynote 4. Certona 5. Peerius 6. Predictive intent 7. RichRelevance 28
  • 29. 3 – ON-LINE CUSTOMER INTELLIGENCE …AND THE INTEGRATION WITH THE CMS 29
  • 30. 3 – ON-LINE CUSTOMER INTELLIGENCE … AND WEB ANALYTICS SOLUTIONS • IBM Intelligent Offer generates personalized product recommendations for each visitor based on current session and historical browsing, shopping and purchasing data collected by IBM. • An offer is a collection of settings that includes the type, algorithm affinity weighting, data analysis time period, and business rules that generates a list of recommended items. • The offers can be on the: • Homepage • Product page • Shopping card • Email • Search results page Source: 2011 IBM Coremetrics Intelligent offer guide 30
  • 31. 3 – ON-LINE CUSTOMER INTELLIGENCE REMARKETING Remarketing: Action taken on by companies to reintroduce a product or service to the market in response to declining sales. The company remarkets the product as something that has been improved to reignite interest and hopefully improve sales. (businessdictionary.com) 31
  • 33. 4 – CONCLUSION THE FUTURE IS BRIGHT Possibilities related to customer Intelligence are countless. The only thing needed for a strategist is to understand the potential of the methods (off- line and on-line) to generate ideas and then try to convince the HiPPO. 33
  • 34. 4 – CONCLUSION GET SOME TRAINING … IN FRENCH http://www.k3media.com/services/formation-google- analytics/ PROMO CODE = EMETRICS for 20% 34
  • 35. THANKS AND I HOPE YOU’VE APPRECIATED! Jean-François (JF) Bélisle Phone number: 514-861-3332 ext 50 Email: jfbelisle@k3media.com Corp.: www.k3media.com LinkedIn: Linkedin.com/in/jfbelisle Twitter: @jfbelisle Site: jfbelisle.com 35 Any Questions ? 

Notes de l'éditeur

  1. http://www.e-marketing.fr/Definitions-Glossaire-Marketing/Remarketing-6280.htm
  2. http://www.e-marketing.fr/Definitions-Glossaire-Marketing/Remarketing-6280.htm
  3. http://www.e-marketing.fr/Definitions-Glossaire-Marketing/Remarketing-6280.htm