Response Rates - An Overview
Summary:
Calculating response rates - the number of eligible sample units that
cooperate in a survey -- has historically been central to survey
research in the United States because of the assumption that the
larger the proportion of participating sample units, the more accurate
the survey estimates. Formulas for calculating rates are now
standardized, but the relationship between response rates and survey
quality has become much less clear.
Measuring Response Rates Until recently, there were almost as many ways to calculate response
rates as there were researchers. Response rates, cooperation rates, and
completion rates were often treated as interchangeable in the
literature. In the early 1980s, the Council of American Survey
Research Organizations (CASRO) made the first attempt to standardize
the definition of a response rate, an effort completed in the late
1990s by AAPOR with the publication of Standard Definitions: Final Dispositions of Case Codes and Outcome Rates for Surveys. The 2008 edition of Standard Definitions
clearly distinguishes between the response rate and the cooperation
rate, covers household, telephone, mail, and Internet modes of
administration, discusses the criteria for ineligibility, and specifies
methods for calculating refusal and noncontact rates. As a result,
response and nonresponse rates can now be successfully compared across
surveys of different topics and organizations. In addition, these
definitions and their widespread acceptance have resulted in a greater
willingness of researchers to report low response rates. Response Rates and Survey Quality However, two factors have now undermined the role of the response
rate as the primary arbiter of survey quality. Largely due to
increasing refusals, response rates across all modes of survey
administration have declined, in some cases precipitously. As a result,
organizations have had to put additional effort into administration,
thus making all types of surveys more costly. At the same time, studies
that have compared survey estimates to benchmark data from the U.S.
Census or very large governmental sample surveys have also questioned
the positive association between response rates and quality.
Furthermore, a growing emphasis on total survey error has caused
methodologists to examine surveys—even those with acceptably high
response rates--for evidence of nonresponse bias. Results that show the least bias have turned out, in some cases, to come from surveys with less than optimal response rates. Experimental comparisons have also revealed few significant differences between estimates from surveys with low response rates and short field periods and surveys with high response rates and long field periods. (The difficulty of determining bias by comparing survey estimates to outside measurements, however, has led to ingenious strategies. One recent study developed an internal benchmark by using the 50/50 gender split of heterosexual, married couples to gauge the accuracy of survey estimates by gender among the respondents in six different surveys. ) There is currently no consensus about the factors that produce the
disjuncture between response rates and survey quality. But the evidence
does suggest several rules of thumb for consumers of survey reports and
for researchers. Researchers should always include in their survey reports the response rate, computed according to the appropriate AAPOR formula (see AAPOR Response Rate Calculator here - Excel) or
another similar formula fully described. Furthermore, several other
measures of quality should become part of reports, especially when a
response rate is low. On their side, consumers of survey results should
treat all response rates with skepticism, since these rates do not
necessarily differentiate reliably between accurate and inaccurate
data. Instead consumers should pay attention to other indicators of
quality that are included in reports and on websites, such as
insignificant levels of bias, low levels of missing data, and
conformity with other research findings. More Information ### Read More
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