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Response Rates Impact Data Quality, but Not How you Might Think
Based on 2 papers:
Eckman, S and Koch, A. “The Relationship between Response Rates,
Sampling Method and Data Quality: Evidence from the European Social
Survey” Under Review
Eckman, S, Himelein, K and Dever, J. “Innovative Sample Designs Using
GIS Technology" forthcoming in Advances in Comparative Survey
Methods: Multicultural, Multinational and Multiregional Context.
Stephanie Eckman, RTI Fellow
Motivation
� Relationship between RR & Data Quality
� High response rates signal data are good quality
� Response rates uncorrelated with data quality
– High RR survey no more accurate than low (Keeter et al, 2000)
– Merkle & Edelman (2002)
– Groves & Peytcheva (2008)
2
RR NR bias (Merkle Edelman)
3 Merkle & Edelman 2002
RRs do not Correlate with Nonresponse Bias
4 Groves & Peytcheva 2008
Motivation
� Relationship between RR & Data Quality
� High response rates signal data are good quality
� Response rates uncorrelated with data quality
– High RR survey not more accurate than low (Keeter et al, 2000)
– Merkle & Edelman (2002)
– Groves & Peytcheva (2008)
� But maybe high response rates are a sign that data are crap?
5
Data Quality
� Total Survey Error Framework
– Undercoverage
– Nonresponse
– Measurement error
– Editing error
– Processing error
– etc.
� Misrepresentation error
– Undercoverage + Nonresponse
� Tradeoff between undercoverage & NR
– Eckman & Kreuter 2017
6
Image: http://makeagif.com/dkjuuc
European Social Survey
� 7 waves
� 30+ countries
� Central Committee sets standards
– Core questionnaire
– Minimum effective sample size
– Paradata collection
– Documentation
– Face to face attempts
– RR standard 70%
� Our data: 136 country-rounds in first 6 waves
7
Sampling Methods in Analysis
8
SamplingMethod Includes
Field Staff Involvement in Selecting
nHousehold Person
Individual Register
None None70
HouseholdRegister
Household Register
Address Register
None
Interviewer
None
Interviewer
41
HouseholdWalk
Listing
Random Walk
Lister
Lister
Interviewer
Interviewer
25
RRs by Sample Type
9
2 Measures of Data Quality
� External measure:
– How different is ESS from Labor Force Survey?
– On 6 categorical variables: age, gender, HH size, marital status, etc.
– Index of dissimilarity measures how different 2 surveys are
– Average over 6 variables
– Assumes LFS is higher quality
� Internal measure:
– 50% of all respondents from gender heterogeneous couples should be
women
– ��,� > 1.96 indicates significant deviation from 50%
10
��,� =%female�,�−50
50 ∗ 50/�
��,�,� = 0.5 ∗�|��,�,���� − ��,�,� !� |�
2 DVs, 2 IVs
� Dependent variables: misrepresentation error
– External measure
– Internal measure
� Independent variables
– RR
– Sampling method
� Joint effect of RR and sampling method on data quality
11
2 Measures vs RR, by Sample Type
12
Regression Models
13Estimated Regression Coefficients
Implications
� High RRs might signal that you have problems with your data
– When interviewers select samples
– Interviewers seem to manipulate selection process to keep RRs high
� Note that ESS does better random walk than other surveys
– Listing should be done by someone other than interviewer
� Other problems with random walk
– Walker effects
– No probabilities of selection
14
Possible Solutions
� What are some alternatives to random walk?
– Satellite Photos
– Reverse Geocoding
– Qibla Method
– Geosampling
– Listing with Drones
15
GIS Resources
� Turn by turn directions on phone
� Satellite images
– Daytime images
– Small-sat revolution
– Nighttime lights
� Other remote sensing data
� How can we exploit these resources for sampling?
– And avoid random walks problems
16
Satellite Photo Mogadishu
17
Reverse Geocoding
� Geocoding: address→ coordinate
� Reverse geocoding: coordinate → address
– Select random points in segment
– Identify closest address
– Many online tools
– Used in Italy ISSP 2009, 2011
18
Example of Reverse Geocoding
19
Example of Reverse Geocoding
20
Example of Reverse Geocoding
21
Qibla Method
� Qibla is Arabic for “in the direction of Mecca”
� Given random starting coordinate
– Interviewer walks in the direction of Mecca
– Selects first HH encountered
22
Example of Qibla Method
23
Example of Qibla Method
24
Geosampling
� Select first stage units
– Administrative units
– Or 1km squares
� Select second stage units
– Smaller squares
� Visit and interview all households in smaller unit
25
Geosampling: First & Second Stage
26
� Eliminates separate listing step
� Still vulnerable to interviewer manipulation
� Possible QC by interviewer GPS tracks? (Himelein et al, 2014)
Geosampling: Second & Third Stage
27
Use of UAVs for Listing
� RTI has tested listing from drone images
– Galapagos & Guatemala
28
Amer et al 2016
Listing with Drones
29
Amer et al 2016
Listing with Drones
30
Amer et al 2016
Listing with Drones
� Still testing use of drones
� Legal issues
� Use local staff to code from images
31
Conclusions
� Ideal method:
– Removes influence of interviewer
– Results in equal probability sample of HUs
– With known probabilities
� No alternative is perfect
– High involvement of interviewers
– High data requirements
� Drones may prove useful
32
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Stephanie Eckman, PhD
Fellow, Survey Research Division
RTI International
stepheckman.com