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JULY 16 - 18, 2013, Minneapolis, USA
WWW.MRMW.NET
The original, premier event
for the Mobile Marketing
Research Industry
WWW.MRMW.NET
TITLE SPONSOR DIAMOND SPONSOR PLATINUM SPONSOR
GOLD SPONSORS
WORKSHOP HOST
SILVER SPONSORS
PREMIERE SPONSOR
NETWORKING EVENING SPONSOR BAG SPONSORPREMIERE SPONSOR
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Assembling	
  Modular	
  Mobile	
  Surveys	
  to	
  
Create	
  Complete	
  Datasets	
  
Market	
  Research	
  in	
  the	
  Mobile	
  World	
  
July	
  17,	
  2013	
  	
  
	
  	
  
	
  	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Edward	
  Paul	
  Johnson	
  
Director	
  of	
  Analy6cs	
  
SSI	
  
	
  
Chris1	
  Walters	
  
Principal	
  
Gongos	
  Research	
  
	
  
	
  
|	
  2	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Current	
  Environment	
  
Researcher	
  to	
  Respondent	
  Rela1onship	
  
VS.	
  
respondents	
  researchers	
  
I	
  want	
  to	
  
know	
  what	
  
you	
  think	
  
about	
  soH	
  
drinks	
  
Great!	
  
Here’s	
  a	
  30-­‐
minute	
  
survey…	
  	
  
Sure	
  I	
  	
  
have	
  some	
  	
  
6me	
  to	
  help	
  	
  
you	
  out	
  	
  
Wait,	
  what	
  does	
  	
  
my	
  hair	
  color	
  have	
  	
  
to	
  do	
  with	
  	
  
beverages?	
  	
  
|	
  3	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Problem	
  
New	
  Mobile	
  World	
  
Consumers	
  	
  
want	
  control	
  
Where.	
  	
  When.	
  	
  How	
  long?	
  
How	
  can	
  we	
  give	
  
them	
  what	
  they	
  
want?	
  	
  
|	
  4	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Ques6ons	
  
Can	
  we	
  	
  
modularize?	
  
→	
  	
  Within-­‐respondent	
  	
  
→	
  	
  Between-­‐respondent	
  
Can	
  we	
  fuse	
  the	
  data?	
  
|	
  5	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Key	
  Hypotheses	
  
Willingness	
  to	
  par1cipate	
  in	
  “long”	
  surveys	
  on	
  mobile	
  devices	
  will	
  be	
  
increased	
  by	
  offering	
  incremental	
  incen1ves	
  2	
  
There	
  are	
  minimal	
  data	
  effects	
  on	
  modularizing	
  
surveys	
  on	
  smartphones	
  
3	
  
Data	
  fusion	
  techniques	
  allow	
  advanced	
  analysis	
  
despite	
  missing	
  data	
  
4	
  
Bivariate	
  analysis	
  is	
  possible	
  with	
  data	
  fusion	
  
techniques	
  
	
  
5	
  
AStude	
  and	
  behavioral	
  hooks	
  will	
  	
  
prove	
  superior	
  to	
  demographic	
  hooks	
  	
  
6	
  
Modularizing	
  surveys	
  will	
  create	
  a	
  beVer,	
  more	
  enjoyable	
  
experience	
  for	
  the	
  respondent	
  
1	
  
|	
  6	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Methods	
  	
  
Ques1onnaire	
  Design	
  
Full	
  Ques1onnaire	
  
Sec1on	
  A	
  
Sec1on	
  B	
  
Sec1on	
  C	
  
	
  
	
  
We	
  started	
  with	
  a	
  	
  
full	
  ques1onnaire	
  
with	
  three	
  sec1ons	
  
|	
  7	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Methods	
  
Ques1onnaire	
  Design	
  
Full	
  Ques1onnaire	
  
Hook	
  
Ques6ons	
  
Sec1on	
  C	
  
Sec1on	
  B	
  
Sec1on	
  A	
  
	
  
Pieces	
  from	
  	
  
each	
  sec1on	
  were	
  removed	
  as	
  
hook	
  ques1ons	
  
|	
  8	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Methods	
  
Ques1onnaire	
  Design	
  
Full	
  Ques1onnaire	
  
Hook	
  
Ques6ons	
  
	
  
The	
  rest	
  of	
  the	
  ques1onnaire	
  was	
  	
  
split	
  into	
  three	
  modules	
  
Module	
  
Module	
  
Module	
  
Sec1on	
  C	
  
Sec1on	
  B	
  
Sec1on	
  A	
  
|	
  9	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Methods	
  
Ques1onnaire	
  Design	
  
Respondents	
  were	
  
randomly	
  
assigned	
  to	
  a	
  
star1ng	
  module.	
  
	
  
	
  
Respondents	
  always	
  
saw	
  a	
  specific	
  set	
  of	
  
‘hook’	
  ques1ons	
  
within	
  their	
  first	
  
module.	
  
Respondent	
  
Survey	
  
Hook	
  Ques1ons	
  
1st	
  Module	
  
2nd	
  Module	
  
3rd	
  Module	
  	
  
Choice	
  to	
  con1nue	
  
Choice	
  to	
  con1nue	
  
|	
  10	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Need	
  to	
  Assemble	
  the	
  Pieces	
  
|	
  11	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Assembly	
  Method	
  
Hot	
  Decking	
  Imputa1on	
  
•  Finds	
  similar	
  respondents	
  
•  Based	
  on	
  similari6es	
  to	
  link	
  
respondents	
  together	
  
•  Drops	
  unlinked	
  data	
  
—  Only	
  actual	
  responses	
  
Respondent	
  Matching	
  
•  Es6mates	
  missing	
  data	
  
•  Based	
  on	
  the	
  similari6es	
  to	
  
the	
  remaining	
  sample	
  	
  
•  Includes	
  all	
  respondents	
  
—  actual	
  responses	
  and	
  	
  
—  es6mated	
  responses	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Results	
  
H1	
  –	
  enjoyable	
  experience	
  
Average	
  Difference	
  in	
  Sa6sfac6on	
  Ra6ngs	
  
Sa6sfac6on	
   -­‐0.06	
   -­‐0.03	
   -­‐0.02	
   -­‐0.14	
  
Bad	
  Data	
  Checks	
  	
  
No	
  Straightlining	
   84.0%	
   81.7%	
   82.3%	
   87.0%	
  
Failed	
  Grid	
  1	
  Instruc6ons	
   17.6%	
   13.9%	
   12.8%	
   16.9%	
  
Failed	
  Grid	
  2	
  Instruc6ons	
   17.3%	
   18.1%	
   9.7%	
   12.7%	
  
Failed	
  Zip	
  Code	
  Match	
   2.2%	
   1.6%	
   3.4%	
   1.4%	
  
Control	
  	
  
[Online	
  Complete]	
  
Control	
  	
  
[Mobile	
  Complete]	
  
Test	
  	
  
[Mobile	
  Modular]	
  
	
  Test	
  	
  
[Online	
  Modular]	
  
|	
  13	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
11%	
   9%	
  
25%	
  
8%	
  
9%	
   8%	
  
4%	
  
8%	
  
80%	
   83%	
  
71%	
  
84%	
  
Abandoned	
   Removed	
  	
   Completes	
  
Results	
  
H2	
  –	
  willingness	
  to	
  par1cipate	
  	
  
Control	
  	
  
[Online	
  Complete]	
  
Control	
  	
  
[Mobile	
  Complete]	
  
Test	
  	
  
[Mobile	
  Modular]	
  
	
  Test	
  	
  
[Online	
  Modular]	
  
|	
  14	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Results	
  
H2	
  –	
  willingness	
  to	
  add	
  modules	
  
9%	
  
19%	
  
72%	
  
1	
  Module	
   2	
  Modules	
   3	
  Modules	
  
1	
  Module	
   2	
  Modules	
  	
   3	
  Modules	
  	
  
|	
  15	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Results	
  
H3	
  -­‐	
  minimal	
  sta1s1cal	
  effects	
  
Compared	
  
to	
  Online	
  
Control	
  
Online	
  Modular	
  
Sta1s1cal:	
  
	
  No	
  discernible	
  
differences	
  
	
  
Mobile	
  Modular	
  
Sta1s1cal:	
  
25%	
  of	
  the	
  ques6ons	
  
showed	
  sta6s6cal	
  
differences	
  
	
  
|	
  16	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Results	
  
H3	
  -­‐	
  minimal	
  prac1cal	
  effects	
  
Compared	
  
to	
  Online	
  
Control	
  
Online	
  Modular	
  
Prac1cal:	
  
Findings	
  and	
  resul6ng	
  
insights	
  are	
  the	
  same	
  
	
  
Mobile	
  Modular	
  
Prac1cal:	
  
Resul6ng	
  insights	
  were	
  
similar,	
  however,	
  some	
  
differences	
  do	
  exist	
  
	
  
|	
  17	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Results	
  
H4	
  –	
  segmen1ng	
  the	
  data	
  
Hot	
  Deck	
  Data	
  
Imputa1on	
  	
  
Data	
  Matching	
  
Based	
  on	
  
AStudes	
  &	
  
Behaviors	
  
Online	
  	
  
Control	
  
Segmenta1on	
  analysis	
  resulted	
  in	
  a	
  	
  
three-­‐segment	
  solu1on.	
  	
  
|	
  18	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Results	
  
H4	
  -­‐	
  checking	
  segment	
  algorithms	
  
When	
  applying	
  the	
  online	
  control	
  
algorithm	
  to	
  each	
  data	
  set…	
  	
  
When	
  applying	
  algorithms	
  from	
  each	
  
data	
  set	
  to	
  the	
  online	
  control	
  data…	
  	
  
|	
  19	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Results	
  
H4	
  -­‐	
  segment	
  solu1on	
  results	
  
20%	
   26%	
   26%	
  
53%	
  
51%	
   50%	
  
28%	
   23%	
   24%	
  
Segment	
  Sizing	
  Across	
  Techniques	
  	
  
Online	
  	
  
Control	
  
Mobile	
  Hot	
  Deck	
  
Data	
  Imputa1on	
  	
  
Segment	
  1	
  
Segment	
  2	
  
Segment	
  3	
  
Data	
  Matching	
  
Based	
  on	
  AStudes	
  
&	
  Behaviors	
  
|	
  20	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Results	
  
H4	
  –	
  accuracy	
  of	
  segment	
  assignment	
  
83%	
   86%	
  86%	
   86%	
  
0%	
  
10%	
  
20%	
  
30%	
  
40%	
  
50%	
  
60%	
  
70%	
  
80%	
  
90%	
  
100%	
  
Imputed	
   Matching	
  
Missing	
   Full	
  	
  
Data	
  Matching	
  Based	
  
on	
  AStudes	
  &	
  
Behaviors	
  
Mobile	
  Hot	
  Deck	
  Data	
  
Imputa1on	
  	
  
|	
  21	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Results	
  
H5	
  –	
  bivariate	
  rela1onships	
  
Hot	
  Deck	
  
Imputa1on	
  
Respondent	
  
Matching	
  
501	
   424	
  
17%	
   20%	
  
0.29	
   0.22	
  
.24	
   0.29	
  
.19	
   0.19	
  
	
  	
   Control	
  
Modular	
  No	
  
Imputa1on	
  
Sample	
  Size	
   333	
   416*	
  
%	
  Significant	
  Differences	
   0.0%	
   15%	
  
Average	
  Reasons	
  r	
   0.39	
   0.31	
  
Average	
  AVribute	
  r	
   0.30	
   0.24	
  
Average	
  Reason	
  x	
  AVribute	
  r	
   0.22	
   0.20	
  
Distance	
   Correla1on	
  
|	
  22	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Results	
  
H6	
  -­‐	
  aStudinal	
  vs.	
  demographic	
  s1tching	
  
Online	
  	
  
Control	
  
Segment	
  1	
  
Segment	
  2	
  
Segment	
  3	
  
Data	
  Matching	
  
Based	
  on	
  AStudes	
  
&	
  Behaviors	
  
20%	
   19%	
   26%	
  
53%	
   55%	
   50%	
  
28%	
   25%	
   24%	
  
Data	
  Matching	
  
Based	
  on	
  
Demographics	
  
|	
  23	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Results	
  
H6:	
  aStudinal	
  vs.	
  demographic	
  s1tching	
  
92%	
   86%	
  87%	
   86%	
  
0%	
  
10%	
  
20%	
  
30%	
  
40%	
  
50%	
  
60%	
  
70%	
  
80%	
  
90%	
  
100%	
  
Demos	
  	
   Aetudes	
  	
  
Missing	
   Full	
  	
  
Data	
  Matching	
  Based	
  
on	
  AStudes	
  &	
  
Behaviors	
  
Data	
  Matching	
  Based	
  
on	
  Demographics	
  
|	
  24	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
Conclusions	
  
Allow	
  respondents	
  to	
  choose	
  mode	
  
(online	
  vs.	
  mobile	
  vs.	
  mul1modal)	
  
1	
  
Within-­‐respondent	
  modulariza1on	
  	
  
key	
  to	
  reducing	
  holes	
  in	
  data	
  
2	
  
Advanced	
  analy1cs	
  feasible	
  	
  
(i.e.	
  segmenta1on)	
  
	
  
3	
  
Both	
  fusion	
  techniques	
  work	
  	
  
with	
  unique	
  advantages	
  
	
  
4	
  
|	
  25	
  |	
  
SSI	
  Confiden*al	
  
©	
  2013	
  	
  Survey	
  Sampling	
  Interna6onal	
  
cwalters@gongos.com	
  
Edward.Johnson@surveysampling.com	
  
|	
  26	
  |	
  
WWW.MRMW.NET
TITLE SPONSOR DIAMOND SPONSOR PLATINUM SPONSOR
GOLD SPONSORS
WORKSHOP HOST
SILVER SPONSORS
PREMIERE SPONSOR
NETWORKING EVENING SPONSOR BAG SPONSORPREMIERE SPONSOR
JULY 16 - 18, 2013, Minneapolis, USA
WWW.MRMW.NET
The original, premier event
for the Mobile Marketing
Research Industry

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Imagine the Possibilities - Assembling Modular Mobile Surveys to Create Complete Datasets - SSI & Gongos

  • 1. JULY 16 - 18, 2013, Minneapolis, USA WWW.MRMW.NET The original, premier event for the Mobile Marketing Research Industry
  • 2. WWW.MRMW.NET TITLE SPONSOR DIAMOND SPONSOR PLATINUM SPONSOR GOLD SPONSORS WORKSHOP HOST SILVER SPONSORS PREMIERE SPONSOR NETWORKING EVENING SPONSOR BAG SPONSORPREMIERE SPONSOR
  • 3. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Assembling  Modular  Mobile  Surveys  to   Create  Complete  Datasets   Market  Research  in  the  Mobile  World   July  17,  2013            
  • 4. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Edward  Paul  Johnson   Director  of  Analy6cs   SSI     Chris1  Walters   Principal   Gongos  Research       |  2  |  
  • 5. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Current  Environment   Researcher  to  Respondent  Rela1onship   VS.   respondents  researchers   I  want  to   know  what   you  think   about  soH   drinks   Great!   Here’s  a  30-­‐ minute   survey…     Sure  I     have  some     6me  to  help     you  out     Wait,  what  does     my  hair  color  have     to  do  with     beverages?     |  3  |  
  • 6. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Problem   New  Mobile  World   Consumers     want  control   Where.    When.    How  long?   How  can  we  give   them  what  they   want?     |  4  |  
  • 7. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Ques6ons   Can  we     modularize?   →    Within-­‐respondent     →    Between-­‐respondent   Can  we  fuse  the  data?   |  5  |  
  • 8. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Key  Hypotheses   Willingness  to  par1cipate  in  “long”  surveys  on  mobile  devices  will  be   increased  by  offering  incremental  incen1ves  2   There  are  minimal  data  effects  on  modularizing   surveys  on  smartphones   3   Data  fusion  techniques  allow  advanced  analysis   despite  missing  data   4   Bivariate  analysis  is  possible  with  data  fusion   techniques     5   AStude  and  behavioral  hooks  will     prove  superior  to  demographic  hooks     6   Modularizing  surveys  will  create  a  beVer,  more  enjoyable   experience  for  the  respondent   1   |  6  |  
  • 9. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Methods     Ques1onnaire  Design   Full  Ques1onnaire   Sec1on  A   Sec1on  B   Sec1on  C       We  started  with  a     full  ques1onnaire   with  three  sec1ons   |  7  |  
  • 10. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Methods   Ques1onnaire  Design   Full  Ques1onnaire   Hook   Ques6ons   Sec1on  C   Sec1on  B   Sec1on  A     Pieces  from     each  sec1on  were  removed  as   hook  ques1ons   |  8  |  
  • 11. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Methods   Ques1onnaire  Design   Full  Ques1onnaire   Hook   Ques6ons     The  rest  of  the  ques1onnaire  was     split  into  three  modules   Module   Module   Module   Sec1on  C   Sec1on  B   Sec1on  A   |  9  |  
  • 12. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Methods   Ques1onnaire  Design   Respondents  were   randomly   assigned  to  a   star1ng  module.       Respondents  always   saw  a  specific  set  of   ‘hook’  ques1ons   within  their  first   module.   Respondent   Survey   Hook  Ques1ons   1st  Module   2nd  Module   3rd  Module     Choice  to  con1nue   Choice  to  con1nue   |  10  |  
  • 13. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Need  to  Assemble  the  Pieces   |  11  |  
  • 14. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Assembly  Method   Hot  Decking  Imputa1on   •  Finds  similar  respondents   •  Based  on  similari6es  to  link   respondents  together   •  Drops  unlinked  data   —  Only  actual  responses   Respondent  Matching   •  Es6mates  missing  data   •  Based  on  the  similari6es  to   the  remaining  sample     •  Includes  all  respondents   —  actual  responses  and     —  es6mated  responses  
  • 15. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Results   H1  –  enjoyable  experience   Average  Difference  in  Sa6sfac6on  Ra6ngs   Sa6sfac6on   -­‐0.06   -­‐0.03   -­‐0.02   -­‐0.14   Bad  Data  Checks     No  Straightlining   84.0%   81.7%   82.3%   87.0%   Failed  Grid  1  Instruc6ons   17.6%   13.9%   12.8%   16.9%   Failed  Grid  2  Instruc6ons   17.3%   18.1%   9.7%   12.7%   Failed  Zip  Code  Match   2.2%   1.6%   3.4%   1.4%   Control     [Online  Complete]   Control     [Mobile  Complete]   Test     [Mobile  Modular]    Test     [Online  Modular]   |  13  |  
  • 16. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   11%   9%   25%   8%   9%   8%   4%   8%   80%   83%   71%   84%   Abandoned   Removed     Completes   Results   H2  –  willingness  to  par1cipate     Control     [Online  Complete]   Control     [Mobile  Complete]   Test     [Mobile  Modular]    Test     [Online  Modular]   |  14  |  
  • 17. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Results   H2  –  willingness  to  add  modules   9%   19%   72%   1  Module   2  Modules   3  Modules   1  Module   2  Modules     3  Modules     |  15  |  
  • 18. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Results   H3  -­‐  minimal  sta1s1cal  effects   Compared   to  Online   Control   Online  Modular   Sta1s1cal:    No  discernible   differences     Mobile  Modular   Sta1s1cal:   25%  of  the  ques6ons   showed  sta6s6cal   differences     |  16  |  
  • 19. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Results   H3  -­‐  minimal  prac1cal  effects   Compared   to  Online   Control   Online  Modular   Prac1cal:   Findings  and  resul6ng   insights  are  the  same     Mobile  Modular   Prac1cal:   Resul6ng  insights  were   similar,  however,  some   differences  do  exist     |  17  |  
  • 20. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Results   H4  –  segmen1ng  the  data   Hot  Deck  Data   Imputa1on     Data  Matching   Based  on   AStudes  &   Behaviors   Online     Control   Segmenta1on  analysis  resulted  in  a     three-­‐segment  solu1on.     |  18  |  
  • 21. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Results   H4  -­‐  checking  segment  algorithms   When  applying  the  online  control   algorithm  to  each  data  set…     When  applying  algorithms  from  each   data  set  to  the  online  control  data…     |  19  |  
  • 22. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Results   H4  -­‐  segment  solu1on  results   20%   26%   26%   53%   51%   50%   28%   23%   24%   Segment  Sizing  Across  Techniques     Online     Control   Mobile  Hot  Deck   Data  Imputa1on     Segment  1   Segment  2   Segment  3   Data  Matching   Based  on  AStudes   &  Behaviors   |  20  |  
  • 23. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Results   H4  –  accuracy  of  segment  assignment   83%   86%  86%   86%   0%   10%   20%   30%   40%   50%   60%   70%   80%   90%   100%   Imputed   Matching   Missing   Full     Data  Matching  Based   on  AStudes  &   Behaviors   Mobile  Hot  Deck  Data   Imputa1on     |  21  |  
  • 24. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Results   H5  –  bivariate  rela1onships   Hot  Deck   Imputa1on   Respondent   Matching   501   424   17%   20%   0.29   0.22   .24   0.29   .19   0.19       Control   Modular  No   Imputa1on   Sample  Size   333   416*   %  Significant  Differences   0.0%   15%   Average  Reasons  r   0.39   0.31   Average  AVribute  r   0.30   0.24   Average  Reason  x  AVribute  r   0.22   0.20   Distance   Correla1on   |  22  |  
  • 25. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Results   H6  -­‐  aStudinal  vs.  demographic  s1tching   Online     Control   Segment  1   Segment  2   Segment  3   Data  Matching   Based  on  AStudes   &  Behaviors   20%   19%   26%   53%   55%   50%   28%   25%   24%   Data  Matching   Based  on   Demographics   |  23  |  
  • 26. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Results   H6:  aStudinal  vs.  demographic  s1tching   92%   86%  87%   86%   0%   10%   20%   30%   40%   50%   60%   70%   80%   90%   100%   Demos     Aetudes     Missing   Full     Data  Matching  Based   on  AStudes  &   Behaviors   Data  Matching  Based   on  Demographics   |  24  |  
  • 27. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   Conclusions   Allow  respondents  to  choose  mode   (online  vs.  mobile  vs.  mul1modal)   1   Within-­‐respondent  modulariza1on     key  to  reducing  holes  in  data   2   Advanced  analy1cs  feasible     (i.e.  segmenta1on)     3   Both  fusion  techniques  work     with  unique  advantages     4   |  25  |  
  • 28. SSI  Confiden*al   ©  2013    Survey  Sampling  Interna6onal   cwalters@gongos.com   Edward.Johnson@surveysampling.com   |  26  |  
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