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Channel	
  A)ribu.on:	
  Where,	
  
   What,	
  How	
  and	
  Why	
  
             Grace	
  Chu    	
  
          Alex	
  Crompton        	
  
         Leila	
  Seith	
  Hassan      	
  
Duplica.on	
  across	
  channels	
  	
  

              Paid	
  	
        Bid	
  	
  
             Search	
          Mgmt	
         $	
  



             Banner	
  	
        Ad	
  	
  
              Ads	
            Server	
       $	
  



              Email	
  	
       Email	
  
              Blast	
         Pla8orm	
       $	
  



             Organic	
         Google	
  
             Search	
         Analy<cs	
      $	
  
Success	
  a)ribu.on	
  models	
  	
  

   Banner	
  	
      Paid	
  	
  
                                     Organic	
         Success	
         Last	
  channel	
  
                                     Search	
  
     Ad	
           Search	
  
                                      $100	
           $100	
           gets	
  all	
  credit	
  


   Banner	
  	
  
                     Paid	
  	
        Email	
  	
     Success	
         First	
  channel	
  
     Ad	
  
    $100	
  
                    Search	
           Blast	
         $100	
           gets	
  all	
  credit	
  


    Paid	
  	
      Banner	
  	
     Affiliate	
  	
     Success	
     All	
  channels	
  get	
  
   Search	
           Ad	
           Referral	
  
    $100	
           $100	
           $100	
           $100	
                equal	
  credit	
  


    Print	
  	
     Social	
  	
       Paid	
  	
      Success	
     All	
  channels	
  get	
  
     Ad	
           Media	
           Search	
  
    $33	
            $33	
             $33	
           $100	
             par<al	
  credit	
  
First	
  and	
  last	
  click	
  a)ribu.on	
  	
  
                                             Chart shows
                                             percentage of
                                             channel touch
                                             points that
        Paid/Organic Search                  lead to a
                                             conversion.




                                             Neither first
        Emails/Shopping Engines              nor last-click
                                             measurement
                                             would provide
                                             true picture
Indirect	
  display	
  impact	
  	
  
Campaign	
  flow	
  and	
  calls	
  to	
  ac.on	
  
                                              	
  
      =	
  Paid	
  media	
  
                                                                  Organic	
  	
                                                   PR,	
  WOM,	
  
                                                                  search	
                                                        events,	
  etc	
  
      =	
  Viral	
  elements	
  

      =	
  Coupons,	
  surveys	
  


                                        YouTube,	
  	
       Home	
  pages,	
                          Paid	
  	
                  TV,	
  print,	
  	
  
                                        blog,	
  etc	
        portals,	
  etc	
                       search	
                     radio,	
  etc	
  




     Direct	
  mail,	
  	
                                  Landing	
  pages,	
                                                  Display	
  ads,	
  
      email,	
  etc	
                                         offers,	
  etc	
                                                    affiliates,	
  etc	
  
                               C1	
                                                       C2	
  



         CRM	
                                                                                      Facebook	
  
       program	
                                                                                   TwiNer,	
  etc	
  
                                                                                                                        C3	
  



    POS	
  kiosks,	
                                         Call	
  center,	
  	
  
 loyalty	
  cards,	
  etc	
                                retail	
  stores,	
  etc	
  
Where	
  to	
  collect	
  the	
  data	
  	
  

      Ad Server                    Web Analytics
    Banner impressions                 Referral visits
       Banner clicks                 Social media visits
             +                      Organic search visits
     Paid search clicks              Paid search visits
                                      Email visits, etc

                                      Lacking banner
   Lacking organic visits               impressions
  More granular & complex         Less granular & complex
Inhibitors	
  to	
  Channel	
  A)ribu.on	
  

 •  Data	
  in	
  siloed	
  plaJorms	
  –	
  no	
  single	
  source	
  of	
  
    truth	
  
 •  Inadequate	
  Tracking	
  
 •  Communica.on	
  between	
  agencies	
  /	
  teams	
  
 •  Offline	
  channels	
  are	
  ignored	
  
 •  Perceived	
  cost	
  /	
  .me	
  /	
  skill	
  barriers	
  	
  
 •  Cookie	
  expira.on	
  
Research	
  Online	
  Purchase	
  Offline       	
  
                                             	
  
     business	
  models	
  define	
  a.ribu0on	
  
Product purchase/arrange channels for consumers who conducted research online
                High Interest   Transaction   Credit   Personal   Home
                  Savings         Account     Card      Loan      Loan
Online	
  &	
  offline	
  marke.ng	
  complement	
  

37%	
  of	
  online	
  search	
  
are	
  triggered	
  by	
  TV	
  Ad	
  




30%	
  of	
  online	
  
search	
  are	
  triggered	
  
by	
  Newspaper	
  Ads	
  




17%	
  of	
  online	
  
search	
  are	
  triggered	
  
by	
  Radio	
  Ads	
  


                  Source:	
  iProspect	
  “Offline	
  channel	
  influence	
  on	
  Online	
  Search	
  Behaviour	
  (Q.	
  Which	
  of	
  the	
  following	
  
                  prompted	
  you	
  to	
  use	
  an	
  internet	
  search	
  engine	
  to	
  look	
  for	
  informa.on	
  on	
  a	
  certain	
  product,	
  
                  service,	
  company	
  or	
  slogan?	
  Select	
  all	
  that	
  apply	
  ;	
  Google;	
  T&S	
  
CPA	
  differs	
  by	
  channel	
  over	
  .me	
  




     Key variables: budget, campaign efficiency, web functionality
     Source: FirstClick client case study, 2009
CPA	
  differs	
  by	
  products
                                   	
  




Key variables: product, budget, campaign efficiency, web functionality
Source: FirstClick retail banking analysis, 2009
Framework	
  and	
  Considera.ons
                                       	
  
1.	
  Business	
  Models	
                              3.	
  Capabili.es	
  Requirement	
  
     –  Lifecycle:	
  Acquisi.on	
  v.s.	
                   –  Tracking/Analy.cs	
  
        Reten.on	
                                           –  Repor.ng	
  and	
  Analysis	
  
     –  Consumer	
  sales	
  life	
  cycle	
                 –  Op.misa.on	
  &	
  Tes.ng	
  
     –  Value	
  per	
  customer	
  life	
  stage	
  


2.	
  Value	
  by	
  Channels	
                         Addi.onal:	
  	
  Business	
  Processes	
  
     –  ROI	
  (Margin)	
  v.s.	
  cost	
  per	
             –  Top-­‐	
  down	
  buy-­‐in	
  
        channel	
                                            –  Stakeholder	
  Management	
  
     –  Online	
  v.s.	
  Offline	
                            –  Decision	
  –making	
  process	
  
     –  Time-­‐lag	
  impact	
  
A	
  real	
  world	
  example	
  -­‐	
  Aussie	
  

                          •  A	
  home	
  is	
  the	
  most	
  
                             expensive	
  thing	
  you’ll	
  
                             ever	
  buy	
  

                          •  The	
  2nd?	
  Your	
  mortgage!	
  

                          •  The	
  ul.mate	
  high	
  
                             considera.on	
  purchase	
  
Last	
  click	
  shouldn’t	
  win	
  

                           Introducer	
             Influencer	
                  Influencer	
                      Closer	
  




LAST	
  CLICK	
                 0%	
                     0%	
                         0%	
                         100%	
  




       “Last	
  Click”	
  model	
  is	
  fundamentally	
  flawed	
  in	
  a	
  high	
  considera.on	
  purchase	
  -­‐	
  
       Each	
  channel	
  cannot	
  be	
  isolated	
  and	
  measured	
  separately.	
  
       	
  
       	
  
Start	
  with	
  even	
  a)ribu.on	
  


             Introducer	
     Influencer	
     Influencer	
     Closer	
  




EVEN	
           25%	
            25%	
           25%	
        25%	
  
Then	
  get	
  really	
  smart	
  
                                              	
  




Get a macro view of exactly what each of your channels is doing for you at each
stage of the funnel and what its ROI is
So	
  what?	
  
                                                             Customise	
  your	
  messaging	
  to	
  the	
  
Plan	
  your	
  media	
  spend	
  be)er	
  and	
  
                                                           posi.on	
  it	
  occupies	
  it	
  plays	
  within	
  the	
  
 make	
  it	
  more	
  effec.ve	
  without	
  
                                                           sales	
  funnel	
  to	
  make	
  it	
  more	
  relevant	
  
        increasing	
  your	
  budgets	
  
                                                                             and	
  effec.ve	
  

                                             A	
  real	
  focus	
  on	
  
                                           channel	
  a)ribu.on	
  
                                              allows	
  you	
  to	
  


 Take	
  your	
  CPAs	
  down	
  to	
  a	
  more	
                Shut	
  down	
  the	
  subjec.ve	
  
 granular	
  level	
  and	
  finally	
  look	
  at	
               conversa.ons	
  with	
  data!	
  
          channel	
  based	
  ROI	
  	
                        Maybe	
  even	
  keep	
  Finance	
  happy!	
  

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Ad Tech Media Attribution

  • 1. Channel  A)ribu.on:  Where,   What,  How  and  Why   Grace  Chu   Alex  Crompton   Leila  Seith  Hassan  
  • 2. Duplica.on  across  channels     Paid     Bid     Search   Mgmt   $   Banner     Ad     Ads   Server   $   Email     Email   Blast   Pla8orm   $   Organic   Google   Search   Analy<cs   $  
  • 3. Success  a)ribu.on  models     Banner     Paid     Organic   Success   Last  channel   Search   Ad   Search   $100   $100   gets  all  credit   Banner     Paid     Email     Success   First  channel   Ad   $100   Search   Blast   $100   gets  all  credit   Paid     Banner     Affiliate     Success   All  channels  get   Search   Ad   Referral   $100   $100   $100   $100   equal  credit   Print     Social     Paid     Success   All  channels  get   Ad   Media   Search   $33   $33   $33   $100   par<al  credit  
  • 4. First  and  last  click  a)ribu.on     Chart shows percentage of channel touch points that Paid/Organic Search lead to a conversion. Neither first Emails/Shopping Engines nor last-click measurement would provide true picture
  • 6. Campaign  flow  and  calls  to  ac.on     =  Paid  media   Organic     PR,  WOM,   search   events,  etc   =  Viral  elements   =  Coupons,  surveys   YouTube,     Home  pages,   Paid     TV,  print,     blog,  etc   portals,  etc   search   radio,  etc   Direct  mail,     Landing  pages,   Display  ads,   email,  etc   offers,  etc   affiliates,  etc   C1   C2   CRM   Facebook   program   TwiNer,  etc   C3   POS  kiosks,   Call  center,     loyalty  cards,  etc   retail  stores,  etc  
  • 7. Where  to  collect  the  data     Ad Server Web Analytics Banner impressions Referral visits Banner clicks Social media visits + Organic search visits Paid search clicks Paid search visits Email visits, etc Lacking banner Lacking organic visits impressions More granular & complex Less granular & complex
  • 8. Inhibitors  to  Channel  A)ribu.on   •  Data  in  siloed  plaJorms  –  no  single  source  of   truth   •  Inadequate  Tracking   •  Communica.on  between  agencies  /  teams   •  Offline  channels  are  ignored   •  Perceived  cost  /  .me  /  skill  barriers     •  Cookie  expira.on  
  • 9. Research  Online  Purchase  Offline     business  models  define  a.ribu0on   Product purchase/arrange channels for consumers who conducted research online High Interest Transaction Credit Personal Home Savings Account Card Loan Loan
  • 10. Online  &  offline  marke.ng  complement   37%  of  online  search   are  triggered  by  TV  Ad   30%  of  online   search  are  triggered   by  Newspaper  Ads   17%  of  online   search  are  triggered   by  Radio  Ads   Source:  iProspect  “Offline  channel  influence  on  Online  Search  Behaviour  (Q.  Which  of  the  following   prompted  you  to  use  an  internet  search  engine  to  look  for  informa.on  on  a  certain  product,   service,  company  or  slogan?  Select  all  that  apply  ;  Google;  T&S  
  • 11. CPA  differs  by  channel  over  .me   Key variables: budget, campaign efficiency, web functionality Source: FirstClick client case study, 2009
  • 12. CPA  differs  by  products   Key variables: product, budget, campaign efficiency, web functionality Source: FirstClick retail banking analysis, 2009
  • 13. Framework  and  Considera.ons   1.  Business  Models   3.  Capabili.es  Requirement   –  Lifecycle:  Acquisi.on  v.s.   –  Tracking/Analy.cs   Reten.on   –  Repor.ng  and  Analysis   –  Consumer  sales  life  cycle   –  Op.misa.on  &  Tes.ng   –  Value  per  customer  life  stage   2.  Value  by  Channels   Addi.onal:    Business  Processes   –  ROI  (Margin)  v.s.  cost  per   –  Top-­‐  down  buy-­‐in   channel   –  Stakeholder  Management   –  Online  v.s.  Offline   –  Decision  –making  process   –  Time-­‐lag  impact  
  • 14. A  real  world  example  -­‐  Aussie   •  A  home  is  the  most   expensive  thing  you’ll   ever  buy   •  The  2nd?  Your  mortgage!   •  The  ul.mate  high   considera.on  purchase  
  • 15. Last  click  shouldn’t  win   Introducer   Influencer   Influencer   Closer   LAST  CLICK   0%   0%   0%   100%   “Last  Click”  model  is  fundamentally  flawed  in  a  high  considera.on  purchase  -­‐   Each  channel  cannot  be  isolated  and  measured  separately.      
  • 16. Start  with  even  a)ribu.on   Introducer   Influencer   Influencer   Closer   EVEN   25%   25%   25%   25%  
  • 17. Then  get  really  smart     Get a macro view of exactly what each of your channels is doing for you at each stage of the funnel and what its ROI is
  • 18. So  what?   Customise  your  messaging  to  the   Plan  your  media  spend  be)er  and   posi.on  it  occupies  it  plays  within  the   make  it  more  effec.ve  without   sales  funnel  to  make  it  more  relevant   increasing  your  budgets   and  effec.ve   A  real  focus  on   channel  a)ribu.on   allows  you  to   Take  your  CPAs  down  to  a  more   Shut  down  the  subjec.ve   granular  level  and  finally  look  at   conversa.ons  with  data!   channel  based  ROI     Maybe  even  keep  Finance  happy!