TY - JOUR
T1 - Analyzing multiple-item measures of crime and deviance II
T2 - Tobit regression analysis of transformed scores
AU - Osgood, D. Wayne
AU - Finken, Laura L.
AU - McMorris, Barbara J.
N1 - Funding Information:
This research was conducted with the support of a Gallup Research Professorship for the first author, through the Gallup Survey Research Center of the University of Nebraska—Lincoln.
PY - 2002
Y1 - 2002
N2 - The purpose of this article is to inform criminological researchers about tobit regression, an alternative regression model that deserves more attention in this field. Tobit regression is intended for continuous data that are censored, or bounded at a limiting value. The tobit model may be a particularly good match to measures of self-reported offending, provided they have been transformed to reduce skewness. We present empirical analyses that evaluate the match of self-report measures to the assumptions of ordinary least square (OLS) and tobit regression models and that assess the consequences of any violations of assumptions. The analyses use a fourteen-item, self-report measure of delinquency from the Monitoring the Future study, a national survey of high school seniors. These analyses provide clear evidence that (1) transformations to reduce skewness improve the match of OLS to the data but still leave considerable discrepancies, and (2) the tobit model is well suited to the transformed measure. We conclude by assessing the purposes for which tobit offers greater and smaller advantages over OLS regression.
AB - The purpose of this article is to inform criminological researchers about tobit regression, an alternative regression model that deserves more attention in this field. Tobit regression is intended for continuous data that are censored, or bounded at a limiting value. The tobit model may be a particularly good match to measures of self-reported offending, provided they have been transformed to reduce skewness. We present empirical analyses that evaluate the match of self-report measures to the assumptions of ordinary least square (OLS) and tobit regression models and that assess the consequences of any violations of assumptions. The analyses use a fourteen-item, self-report measure of delinquency from the Monitoring the Future study, a national survey of high school seniors. These analyses provide clear evidence that (1) transformations to reduce skewness improve the match of OLS to the data but still leave considerable discrepancies, and (2) the tobit model is well suited to the transformed measure. We conclude by assessing the purposes for which tobit offers greater and smaller advantages over OLS regression.
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U2 - 10.1023/A:1021198509929
DO - 10.1023/A:1021198509929
M3 - Article
AN - SCOPUS:0036439184
SN - 0748-4518
VL - 18
SP - 319
EP - 347
JO - Journal of Quantitative Criminology
JF - Journal of Quantitative Criminology
IS - 4
ER -