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				Summary of ATUS Nonresponse Bias Studies Last updated May,
				2018 
 
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				Study | 
				Summary | 
				Major Findings and Suggestions for Further Research | 
		
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				Grace O'Neill and Jessica Sincavage (2004), Response
				Analysis Survey: A Qualitative look at Response and Nonresponse
				in the American Time Use Survey (PDF) | 
				Response Analysis Study (RAS) conducted in 2004 to understand
				response propensity of ATUS respondents and nonrespondents 
				 
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				Reasons for responding to ATUS: 
					No specific reason (24%)General, survey-related
					reasons (28%)Government/Census Bureau
					sponsorship (20%)CPS participation (9%)Interviewer (9%)Topic (7%) and Advance Letter
					(2%) 
 Reasons for not responding to ATUS: 
					Tired of doing CPS (33%)Too busy to complete ATUS
					(16%)Other non-ATUS related reasons
					(14%)Other reasons for not
					responding: inconvenient call times, topic was too private/none
					of government’s business, Census/government sponsorship,
					interviewer, survey difficulty, and general disdain of surveys 
 Suggestions for Further Research: 
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				Katharine G. Abraham, Aaron Maitland and Suzanne M. Bianchi
				(2006), Nonresponse
				in the American Time Use Survey: Who Is Missing from the Data and
				How Much Does It Matter? (PDF) | Tested 2 hypotheses: 
					Busy people are less likely to
					respond (people who work longer hours, have children in home,
					have spouses who work longer hoursPeople who are weakly
					integrated into their communities are less likely to respond
					(Renters, Separated or Never Married, Out of Labor Force,
					Households without children, Households with adults that are not
					related to householderAlso looked at sex, age,
					race/ethnicity, household income, education, region, and
					telephone status | Found little support for
					hypothesis that busy people are less likely to respond to the
					ATUSThere are differences in
					response rates across groups for social integration hypothesis. 
					Lower response rates for those: out of labor force, separated or
					never married, renters, living in urban areas, in households
					that include adults not related to them.  Noncontact accounts
					for most of these differencesWhen the authors reweighted
					the data to account for differences in response propensities,
					found there was little effect on aggregate estimates of time use
 
 Suggestions for further research: 
					Compare recent movers (those
					that moved between 5th and 8th survey
					waves) to non-movers 
					Compare “difficult”
					versus “easy” respondents (# of call attempts)Add questions to outgoing CPS
					rotation group to gain better information about those selected
					for ATUS who end up not responding 
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				Grace O’Neill and John Dixon (2005),  Nonresponse
				bias in the American Time Use Survey (PDF) 
 | Describes nonresponse by
					demographic characteristics (using CPS data)Uses logistic analysis to
					examine correlates of nonresponse, such as demographic and
					interviewer characteristicsUses a propensity score model
					to examine differences in time-use patterns and to assess the
					extent of nonresponse biasUses ATUS data from 2003
 
 | Race is the strongest
					predictor of refusals and noncontacts among ATUS respondents: 
					those who were not white or black were less likely to complete
					the surveyAge also is an important
					factor in the nonresponse rates, with both refusal and
					noncontact rates increasing as age increasesEstimates of refusal and
					noncontact bias were small relative to the total time spent in
					the activities (e.g., in 2003, it was estimated that the
					population spent an average of 12.4 hours in personal care
					activities; of this total, there was an estimated refusal bias
					of 6 minutes and noncontact bias of 12 minutes)
 
 Suggestions for further research: 
					Examine the assumption that
					the propensity model represents nonresponseFocus on better evaluations
					for activities in which few people participate on a given day
					(those data that have non-normal distributions) | 
		
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				John Dixon (2006), Nonresponse Bias for the Relationships
				Between Activities in the American Time Use Survey 
 
 
 
 
 |  | There were no nonresponse
					biases in the time-use estimates, probability of use of time
					categories, or the relationship between the categoriesThe potential biases that were
					identified were small for the most partPotential biases were usually in opposite directions for
					refusal and noncontact, which mitigates the overall effect
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				Scott S. Fricker (2007),  The Relationship Between Response
				Propensity and Data Quality in the Current Population Survey and
				the American Time Use Survey (PDF) 
 (This was later published with coauthor Roger Tourangeau in
				Public
				Opinion Quarterly. Volume 74, No. 5/December 2010). | when high
				nonresponse propensity cases were excluded from the respondent
				pool 
 | Findings consistent with
					earlier studies: higher response rates for those who are
					non-Hispanic, older, and having higher levels of family incomeHigher nonreponse for those
					who skipped the CPS family income question, had been a CPS
					nonrespondent, or were not the respondent in the last CPS
					interviewATUS
					nonresponse propensity increased as function of the number of
					call attempts and of the timing of
 those calls 
					Absence of findings supporting
					the busyness account of ATUS participation also is consistent
					with results reported in Abraham et al. (2006)Despite strong indications at
					the bivariate level that ATUS nonresponse was related to social
					capital variables, the results of the multivariate social
					capital model failed to find the predicted effects. This is
					contrary to the findings of Abraham et al. (2006)Removing high nonresponse
					propensity cases produced small, though significant, changes in
					a variety of mean estimates and estimates of the associations
					between variables (i.e., regression coefficients) 
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				Phawn M. Letourneau and Andrew Zbikowski (2008),  Nonresponse
				in the American Time Use Survey (PDF) | 
 
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				Findings similar to earlier studies: 
					Lower response rates for
					people living in a central city and rentersLower contact rates for people
					with less education, lower incomes, and in younger age groupsHigher refusal rates for
					people missing household income in the CPSHigher response rates and
					contact rates for people living in MidwestLower response rates and
					cooperation rates for males 
 Findings different from earlier
				studies: 
					No significant effect on
					response rates for people who are unemployed or not in labor
					force, separated, or never married.  
					No significant effect on
					contact rates for people who work longer hours, are Hispanic or
					black 
					 
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				Katharine G. Abraham, Sara E. Helms, and Stanley Presser (2009), 
				How
				Social Processes Distort Measurement: The Impact of Survey
				Nonresponse on Estimates of Volunteer Work (PDF) 
 
 
 (This paper was published in the American Journal of
				Sociology, January 2009.) | Examines whether higher
					measures of volunteerism are associated with lower survey
					responseLinks 2003-04 ATUS data to the
					September 2003 CPS Volunteer Supplement 
					Examines ATUS respondents and
					nonrespondents in the context of their responses to the
					Volunteer Supplement
 
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				Findings: 
					ATUS respondents were more
					likely to volunteer, and they spent more time volunteering, than
					did ATUS non-respondents (there is evidence of this within
					demographic and other subgroups)The ATUS estimate of volunteer
					hours suffers from nonresponse bias that makes it too highATUS estimates of the
					associations between respondent characteristics and volunteer
					hours are similar to those from CPS 
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				John Dixon and Brian Meekins (2012), Total Survey Error in the
				American Time Use Survey (PDF) | demographic
				and contact history characteristics. 
				 patterns and
				to assess the extent of nonresponse bias. 
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				Findings: 
					Found some demographic
					characteristics were significant predictors of refusing the
					ATUS.  Specifically, white respondents less likely to refuse,
					while married and older respondents more likely to refuse.Estimates of bias were very
					small from all sources.  Noncontact had the largest effect. 
					 
 
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				Brian Meekins and Stephanie Denton (2012), Cell Phones and
				Nonsampling Error in the American Time Use Survey (PDF) | 
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				Findings: 
				 
					Cell phone volunteers are less
					likely to  complete ATUS interviews due to noncontactRefusal rate of cell phone
					volunteers is similar to those volunteering a landline numberDifferences in measurement error appear to be negligible.
					 There are some differences in the estimates of time use, but
					these are largely due to demographic differences | 
		
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				John Dixon (2014), Nonresponse Patterns and Bias in the
				American Time Use Survey 
 (This paper was presented at the 2014 Joint Statistical
				Meetings) | Using 2012 data, examines
					nonresponse using propensity models for overall nonresponse as
					well as its components: refusal and noncontact. 
					Examines nonresponse based on
					hurdle models. 
					Assessed interrelationship
					between indicators of measurement error and nonresponse.To explore the possibility that nonresponse may be
					biasing the estimates due to the amount of zeroes reported,
					compared the proportion of zeroes between the groups.
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				Findings: 
				 
					No nonresponse bias was found,
					but the level of potential bias differed by activity. 
					The measurement error
					indicators correlated to different activity categories, and work
					needs to be done before reporting potential biases.The differences between the reported zeroes from the
					survey and the estimated zeroes for nonresponse were very small,
					suggesting that reasons for doing the activity were likely not
					related to the reasons for nonresponse. | 
		
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				Amaya (2015), Enhancing the Understanding of the Relationship
				Between Social Integration and Nonresponse in Household Surveys 
				 
 (Dissertation for Joint Program in Survey Methodology,
				University of Maryland) |  | 
				Findings: 
				 
					While integration was
					predictive of nonresponse in both surveys, the details were
					inconsistent.Civically engaged individuals
					were significantly more likely to respond to ATUS, suggesting
					that individuals integrated through other routes are not 
 more likely to respond than
				isolated individuals. | 
		
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				Morgan Earp and Jennifer Edgar (2016) American Time Use Survey
				Nonresponse Bias Analysis | Compared the
					characteristics of ATUS respondents and nonrespondents using a
					regression tree model using demographic variables from the CPSExamines the relationship between these characteristics
					and employment status (from the CPS), since employment status is
					expected to be related to time use to assess potential for
					nonresponse bias
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				Findings: 
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				Morgan Earp and  David Haziza (2017) Comparison of weighting procedures
				in the presence of unit nonresponse: a simulation study based on
				data from the American Time Use Survey 
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				Findings: |