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experience sampling
design, data collection & analysis
Ben Richardson
experience sampling
• a form of moment-to-moment
data collection
• increased ecological validity
• minimise retrospective bias
• participant burden
• different kinds of questions
experience sampling
• a form of moment-to-moment
data collection
• increased ecological validity
• minimise retrospective bias
• participant burden
• different kinds of questions
experience sampling
• a form of moment-to-moment
data collection
• increased ecological validity
• minimise retrospective bias
• participant burden
• different kinds of questions
experience sampling
• a form of moment-to-moment
data collection
• increased ecological validity
• minimise retrospective bias
• participant burden
• different kinds of questions
experience sampling
• a form of moment-to-moment
data collection
• increased ecological validity
• minimise retrospective bias
• participant burden
• different kinds of questions
Jeffrey S. Simons, Raluca M. Gaher, Matthew N.I. Oliver, Jacqueline A. Bush, Marc A. Palmer
An Experience Sampling Study of Associations between Affect
and Alcohol Use and Problems among College Students
example
a quick note; I am focused on self report
studies but passive data collection is also
possible
design considerations
• appropriate measurement
resolution
couple satisfaction
• event-based versus interval-
based response cues
• sample size and power
• engaging participants
• response medium
blood glucose monitoring
design considerations
• appropriate measurement
resolution
event-based
• event-based versus interval-
based response cues
• sample size and power
• engaging participants
• response medium interval-based
design considerations
• appropriate measurement
resolution
!
Mass & Hox (2005) Sufficient
Sample Sizes for Multilevel
Modeling
• rough rule of thumb: 50
individuals
• although power depends on
many factors and is often
most usefully estimated
based on power analysis
• event-based versus interval-
based response cues
• sample size and power
• engaging participants
• response medium
design considerations
• appropriate measurement
resolution
• event-based versus interval-
based response cues
• sample size and power
• engaging participants
• response medium
• honorarium
• usability
• length / frequency
• feedback
design considerations
• appropriate measurement
resolution
• event-based versus interval-
based response cues
• sample size and power
• engaging participants
• response medium
design considerations
• appropriate measurement
resolution
• event-based versus interval-
based response cues
• sample size and power
• engaging participants
• response medium
design considerations
• appropriate measurement
resolution
• event-based versus interval-
based response cues
• sample size and power
• engaging participants
• response medium
design considerations
• appropriate measurement
resolution
• event-based versus interval-
based response cues
• sample size and power
• engaging participants
• response medium
design considerations
• appropriate measurement
resolution
• event-based versus interval-
based response cues
• sample size and power
• engaging participants
• response medium
PDAs
design considerations
• appropriate measurement
resolution
• event-based versus interval-
based response cues
• sample size and power
• engaging participants
• response medium
web surveys
resources for optimising
web forms for mobile
• detecting whether participant is using mobile
• optimise webpage for iOS
design considerations
• appropriate measurement
resolution
• event-based versus interval-
based response cues
• sample size and power
• engaging participants
• response medium
mobile application
design considerations
• appropriate measurement
resolution
• event-based versus interval-
based response cues
• sample size and power
• engaging participants
• response medium
mobile application
analysis
• main difference between ‘regular’ analysis and
analysis of ESM data is the hierarchical structure of
the data
level 1: time points
analysis
• main difference between ‘regular’ analysis and
analysis of ESM data is the hierarchical structure of
the data
{
{
{
{
{
{
level 1: time points
level 2: individuals
analysis
• multilevel modeling (MLM) addresses the lack of
independence between the observations
• can also use regression with robust standard errors
• in addition, MLM opens up some possibilities for
some novel questions not so easily answered in
single level analyses
example
• using ESM to study risky single occasion drinking
• presentation that follows is mostly visual, do not
take the diagrams too literally. for more
comprehensive / technical overview of MLM as
applied to ESM data please see
• Intensive Longitudinal Methods: An Introduction to Diary and
Experience Sampling Research
• Models for intensive longitudinal data
intercept only model
risky drinking
fun seeking
level 1 variable
level 2 variable
clustering variable = participant id
positive moodeveningpositive mood
intercept only
• Intraclass correlation (degree of variance explained
in the outcome variable by the clustering / nesting
variable)
intercept only
• Intraclass correlation (degree of variance explained
in the outcome variable by the clustering / nesting
variable)
rsod on positive mood
risky drinking
fun seeking
level 1 variable
level 2 variable
clustering variable = participant id
positive mood
evening
positive mood
level 1 variables
• level 1 variables actually capture two sources of
variance:
• within participant variation (e.g., fluctuations around
an individual’s average level of mood)
• between participant variation (e.g., individual
differences in level of positive mood)
• these are often usefully represented using separate
variables in the model
• achieved by person mean centring
level 1 variables
level 1 positive mood = score - person’s mean
!
!
level 2 positive mood = individual’s average across time
points
level 1 variables
• fixed component of an effect
• average relationship between variables for all
participants
• e.g., on average, how does positive mood relate to
drinking?
!
• random component
• between participant variance in relationship
• e.g., how much variation is there in the relationship
between positive mood and drinking? Does positive
mood more strongly associate with drinking for some
participants compared to others?
rsod on positive mood
risky drinking
fun seeking
level 1 variable
level 2 variable
clustering variable = participant id
positive mood
evening
positive mood
level 2 moderators
• can we explain variation in level 1 relationships
using level 2 variables?
• E.g., does an individual’s fun seeking explain
variation in the relationship between positive
mood and drinking?
some extensions
piecewise regression
some resources
• http://www.ats.ucla.edu/stat/stata/faq/piecewise.htm
• http://www3.nd.edu/~rwilliam/stats2/l61.pdf
dose-response model
• Hunt & Rai (2003). A threshold dose-response model with random
effects in teratological experiments. doi: 10.1081/STA-120021567
4.5
9
13.5
18
1 2 3 4 5 6 7 8 9 10 11 12 13 14
Control
Dose
4.5
9
13.5
18
1 2 3 4 5 6 7 8 9 10 11 12 13 14
Control
Dose
risk versus time to onset
photo credits
Couple photo: https://flic.kr/p/4SDwWz !
"Couple in Covent Garden" by Mark Hillary (https://www.flickr.com/photos/markhillary/)!
!
Diabetes photo!
"My "kit"" by Jessica Merz (https://www.flickr.com/photos/jessicafm/)!
!
Alcohol photo!
"Alcohol and Ulcerative Colitis" by Kimery Davis (https://www.flickr.com/photos/117025355@N05/)!
!
Timer photo!
"Microwave Timer" by Pascal (https://www.flickr.com/photos/pasukaru76/)!
!
PDA photo!
"I Used To Be Cool..." by H. Michael Karshis (https://www.flickr.com/photos/hmk/)!
!
Piecewise regression graph 

http://www3.nd.edu/~rwilliam/stats2/l61.pdf

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Experience sampling presentation

  • 1. experience sampling design, data collection & analysis Ben Richardson
  • 2. experience sampling • a form of moment-to-moment data collection • increased ecological validity • minimise retrospective bias • participant burden • different kinds of questions
  • 3. experience sampling • a form of moment-to-moment data collection • increased ecological validity • minimise retrospective bias • participant burden • different kinds of questions
  • 4. experience sampling • a form of moment-to-moment data collection • increased ecological validity • minimise retrospective bias • participant burden • different kinds of questions
  • 5. experience sampling • a form of moment-to-moment data collection • increased ecological validity • minimise retrospective bias • participant burden • different kinds of questions
  • 6. experience sampling • a form of moment-to-moment data collection • increased ecological validity • minimise retrospective bias • participant burden • different kinds of questions
  • 7. Jeffrey S. Simons, Raluca M. Gaher, Matthew N.I. Oliver, Jacqueline A. Bush, Marc A. Palmer An Experience Sampling Study of Associations between Affect and Alcohol Use and Problems among College Students example
  • 8. a quick note; I am focused on self report studies but passive data collection is also possible
  • 9. design considerations • appropriate measurement resolution couple satisfaction • event-based versus interval- based response cues • sample size and power • engaging participants • response medium blood glucose monitoring
  • 10. design considerations • appropriate measurement resolution event-based • event-based versus interval- based response cues • sample size and power • engaging participants • response medium interval-based
  • 11. design considerations • appropriate measurement resolution ! Mass & Hox (2005) Sufficient Sample Sizes for Multilevel Modeling • rough rule of thumb: 50 individuals • although power depends on many factors and is often most usefully estimated based on power analysis • event-based versus interval- based response cues • sample size and power • engaging participants • response medium
  • 12. design considerations • appropriate measurement resolution • event-based versus interval- based response cues • sample size and power • engaging participants • response medium • honorarium • usability • length / frequency • feedback
  • 13. design considerations • appropriate measurement resolution • event-based versus interval- based response cues • sample size and power • engaging participants • response medium
  • 14. design considerations • appropriate measurement resolution • event-based versus interval- based response cues • sample size and power • engaging participants • response medium
  • 15. design considerations • appropriate measurement resolution • event-based versus interval- based response cues • sample size and power • engaging participants • response medium
  • 16. design considerations • appropriate measurement resolution • event-based versus interval- based response cues • sample size and power • engaging participants • response medium
  • 17. design considerations • appropriate measurement resolution • event-based versus interval- based response cues • sample size and power • engaging participants • response medium PDAs
  • 18. design considerations • appropriate measurement resolution • event-based versus interval- based response cues • sample size and power • engaging participants • response medium web surveys
  • 19. resources for optimising web forms for mobile • detecting whether participant is using mobile • optimise webpage for iOS
  • 20. design considerations • appropriate measurement resolution • event-based versus interval- based response cues • sample size and power • engaging participants • response medium mobile application
  • 21. design considerations • appropriate measurement resolution • event-based versus interval- based response cues • sample size and power • engaging participants • response medium mobile application
  • 22. analysis • main difference between ‘regular’ analysis and analysis of ESM data is the hierarchical structure of the data level 1: time points
  • 23. analysis • main difference between ‘regular’ analysis and analysis of ESM data is the hierarchical structure of the data { { { { { { level 1: time points level 2: individuals
  • 24. analysis • multilevel modeling (MLM) addresses the lack of independence between the observations • can also use regression with robust standard errors • in addition, MLM opens up some possibilities for some novel questions not so easily answered in single level analyses
  • 25. example • using ESM to study risky single occasion drinking • presentation that follows is mostly visual, do not take the diagrams too literally. for more comprehensive / technical overview of MLM as applied to ESM data please see • Intensive Longitudinal Methods: An Introduction to Diary and Experience Sampling Research • Models for intensive longitudinal data
  • 26. intercept only model risky drinking fun seeking level 1 variable level 2 variable clustering variable = participant id positive moodeveningpositive mood
  • 27. intercept only • Intraclass correlation (degree of variance explained in the outcome variable by the clustering / nesting variable)
  • 28. intercept only • Intraclass correlation (degree of variance explained in the outcome variable by the clustering / nesting variable)
  • 29. rsod on positive mood risky drinking fun seeking level 1 variable level 2 variable clustering variable = participant id positive mood evening positive mood
  • 30. level 1 variables • level 1 variables actually capture two sources of variance: • within participant variation (e.g., fluctuations around an individual’s average level of mood) • between participant variation (e.g., individual differences in level of positive mood) • these are often usefully represented using separate variables in the model • achieved by person mean centring
  • 31. level 1 variables level 1 positive mood = score - person’s mean ! ! level 2 positive mood = individual’s average across time points
  • 32. level 1 variables • fixed component of an effect • average relationship between variables for all participants • e.g., on average, how does positive mood relate to drinking? ! • random component • between participant variance in relationship • e.g., how much variation is there in the relationship between positive mood and drinking? Does positive mood more strongly associate with drinking for some participants compared to others?
  • 33. rsod on positive mood risky drinking fun seeking level 1 variable level 2 variable clustering variable = participant id positive mood evening positive mood
  • 34. level 2 moderators • can we explain variation in level 1 relationships using level 2 variables? • E.g., does an individual’s fun seeking explain variation in the relationship between positive mood and drinking?
  • 36. piecewise regression some resources • http://www.ats.ucla.edu/stat/stata/faq/piecewise.htm • http://www3.nd.edu/~rwilliam/stats2/l61.pdf
  • 37. dose-response model • Hunt & Rai (2003). A threshold dose-response model with random effects in teratological experiments. doi: 10.1081/STA-120021567 4.5 9 13.5 18 1 2 3 4 5 6 7 8 9 10 11 12 13 14 Control Dose 4.5 9 13.5 18 1 2 3 4 5 6 7 8 9 10 11 12 13 14 Control Dose
  • 38. risk versus time to onset
  • 39. photo credits Couple photo: https://flic.kr/p/4SDwWz ! "Couple in Covent Garden" by Mark Hillary (https://www.flickr.com/photos/markhillary/)! ! Diabetes photo! "My "kit"" by Jessica Merz (https://www.flickr.com/photos/jessicafm/)! ! Alcohol photo! "Alcohol and Ulcerative Colitis" by Kimery Davis (https://www.flickr.com/photos/117025355@N05/)! ! Timer photo! "Microwave Timer" by Pascal (https://www.flickr.com/photos/pasukaru76/)! ! PDA photo! "I Used To Be Cool..." by H. Michael Karshis (https://www.flickr.com/photos/hmk/)! ! Piecewise regression graph 
 http://www3.nd.edu/~rwilliam/stats2/l61.pdf