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SXSW 2013: Big Data & Human Experience
       Think love match not shotgun wedding

                  Submitted for SXSW 2013

                       Dr. Lauren Tucker
                Director of Consumer Forensics
                      The Martin Agency

                         Chris Dickey
                     Director of Analytics
                     The Martin Agency
                                                 1
Core Business Challenge:
Making smart decisions in an uncertain world



Information explosion
                             Great Opportunities
Economic implosion
                                Great Risks
Market globalization



                                                   2
Big Data, especially post recession, can have gaps that limit it’s
                              predictive power.


                Big Data

Strength   Pattern recognition




Weakness
               Limited by
                  data
Human Experience can be an important additive to Big Data, which
             can smooth out the biases of human instinct.


            Statistical Analysis                   Human Experience

Strength   Pattern recognition                    Logical reasoning




Weakness
               Limited by                             Limited by
                  data                            instinctual biases
Advances in technology and mathematics allow for a numerical value
to be assigned to human experience so it can be integrated with data
                    to deliver smarter decisions
                                                     Better Choices from
    Hard Data         +   Human Experience       =   Scenario Simulation


   Historical Data        Real world expertise        Range of Predictive
                                                         Outcomes




       Alone:                    Alone:                     Together:
  Past isn’t always         Experience isn’t            Precise, predictive
     predictive             always precise               decision support
This approach overcomes common modeling issues, allows for
                 transparency, collaboration and immediacy.
          Data	
  vs.	
                    Lots	
  of	
  Data                           Lots	
  of	
  Knowledge
         Knowledge                    (Tight	
  fit,	
  Lots	
  of	
  data)   (Lots	
  of	
  experience,	
  strong	
  basis)


    Li@le	
  Knowledge	
  
(Li@le	
  experience,	
  weak	
  
             basis)



       Li@le	
  Data
(Erroneous	
  fit,	
  li@le	
  data)




                                                                                                                              6
Models that integrate data and knowledge are constantly
        optimized to achieve a balance of both.


Illustra(ve
                                              75th	
  percenGle   •   Experience
              25th	
  percenGle
                                                                  •   MarkeGng	
  research
                                                                  •   Database	
  a@ribuGon
                                                                  •   Sales	
  over	
  Gme
                                                                  •   MarkeGng	
  acGvity	
  over	
  Gme
                                                                  •   CorrelaGons	
  between	
  data	
  sales	
  
                                                                      and	
  markeGng	
  acGvity




                                  25%   75%
                                                                                                               7
This approach produces a learning model that is continually updated
                           with new inputs.


               Historical data:                       Investment guidance
                    Sales demand                      Optimal investment according to forecast
                                                       targets, fixed budget constraints and
                Sales force activity                   profit maximization
                 Marketing activity      Analysis     Optimized tactical allocation across
                         Financials                    sales and marketing channels
                                        Simulation
                                       Optimization
  Management information:                             Scenario results
                                                      Sales and marketing budget
Past marketing allocation decisions
                                                      Revenue forecasts short & long term
                                                      Risk assessments
The advantage for marketers over traditional
           modeling approaches used for decision support.

                         Table Stakes        …And Beyond
                     Scenario Planning:      Account for Impact of Past Decisions:
      The development of optimal media       Assigns values to subjective experience,
         plans with projected outcomes       events and changes in market.

                       Budget Planning:      Adaptive Testing:
                Optimizes investments to     Employs an iterative process and
                        business targets     constantly optimizes by updating priors
                                             to improve models.

                           Basic Analysis:   Strategic Investment Planning:
ROI for all communications channels and      Long and short term ROI
               for each individual channel
For more information:


        Dr. Lauren Tucker
 Director of Consumer Forensics
       The Martin Agency
Lauren.tucker@martinagency.com

          Chris Dickey
      Director of Analytics
       The Martin Agency
Chris.Dickey@martinagency.com

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SXSW 2013: Integrating Big Data and Human Experience for Smarter Decisions

  • 1. SXSW 2013: Big Data & Human Experience Think love match not shotgun wedding Submitted for SXSW 2013 Dr. Lauren Tucker Director of Consumer Forensics The Martin Agency Chris Dickey Director of Analytics The Martin Agency 1
  • 2. Core Business Challenge: Making smart decisions in an uncertain world Information explosion Great Opportunities Economic implosion Great Risks Market globalization 2
  • 3. Big Data, especially post recession, can have gaps that limit it’s predictive power. Big Data Strength Pattern recognition Weakness Limited by data
  • 4. Human Experience can be an important additive to Big Data, which can smooth out the biases of human instinct. Statistical Analysis Human Experience Strength Pattern recognition Logical reasoning Weakness Limited by Limited by data instinctual biases
  • 5. Advances in technology and mathematics allow for a numerical value to be assigned to human experience so it can be integrated with data to deliver smarter decisions Better Choices from Hard Data + Human Experience = Scenario Simulation Historical Data Real world expertise Range of Predictive Outcomes Alone: Alone: Together: Past isn’t always Experience isn’t Precise, predictive predictive always precise decision support
  • 6. This approach overcomes common modeling issues, allows for transparency, collaboration and immediacy. Data  vs.   Lots  of  Data Lots  of  Knowledge Knowledge (Tight  fit,  Lots  of  data) (Lots  of  experience,  strong  basis) Li@le  Knowledge   (Li@le  experience,  weak   basis) Li@le  Data (Erroneous  fit,  li@le  data) 6
  • 7. Models that integrate data and knowledge are constantly optimized to achieve a balance of both. Illustra(ve 75th  percenGle • Experience 25th  percenGle • MarkeGng  research • Database  a@ribuGon • Sales  over  Gme • MarkeGng  acGvity  over  Gme • CorrelaGons  between  data  sales   and  markeGng  acGvity 25% 75% 7
  • 8. This approach produces a learning model that is continually updated with new inputs. Historical data: Investment guidance Sales demand Optimal investment according to forecast targets, fixed budget constraints and Sales force activity profit maximization Marketing activity Analysis Optimized tactical allocation across Financials sales and marketing channels Simulation Optimization Management information: Scenario results Sales and marketing budget Past marketing allocation decisions Revenue forecasts short & long term Risk assessments
  • 9. The advantage for marketers over traditional modeling approaches used for decision support. Table Stakes …And Beyond Scenario Planning: Account for Impact of Past Decisions: The development of optimal media Assigns values to subjective experience, plans with projected outcomes events and changes in market. Budget Planning: Adaptive Testing: Optimizes investments to Employs an iterative process and business targets constantly optimizes by updating priors to improve models. Basic Analysis: Strategic Investment Planning: ROI for all communications channels and Long and short term ROI for each individual channel
  • 10. For more information: Dr. Lauren Tucker Director of Consumer Forensics The Martin Agency Lauren.tucker@martinagency.com Chris Dickey Director of Analytics The Martin Agency Chris.Dickey@martinagency.com