Bayesian models to adjust for response bias in survey data for estimating rape and domestic violence rates from the NCVS
Qingzhao Yu, Elizabeth A. Stasny, Bin Li

TL;DR
This paper introduces a Bayesian model that adjusts for response bias in survey data estimating rape and domestic violence rates, leveraging historical data and an EMB algorithm for improved accuracy.
Contribution
It develops a Bayesian framework with an EMB algorithm to correct response bias in crime surveys, utilizing prior information from long-term data.
Findings
More efficient estimates compared to classical methods
No additional computational complexity required
Effective adjustment for response bias in sensitive crime data
Abstract
It is difficult to accurately estimate the rates of rape and domestic violence due to the sensitive nature of these crimes. There is evidence that bias in estimating the crime rates from survey data may arise because some women respondents are "gagged" in reporting some types of crimes by the use of a telephone rather than a personal interview, and by the presence of a spouse during the interview. On the other hand, as data on these crimes are collected every year, it would be more efficient in data analysis if we could identify and make use of information from previous data. In this paper we propose a model to adjust the estimates of the rates of rape and domestic violence to account for the response bias due to the "gag" factors. To estimate parameters in the model, we identify the information that is not sensitive to time and incorporate this into prior distributions. The strength of…
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