Age-period-cohort models: approaches and analyses with aggregate data
In: Chapman & Hall/CRC Statistics in the Social and Behavioral Sciences Series
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In: Chapman & Hall/CRC Statistics in the Social and Behavioral Sciences Series
In: Social science quarterly, Band 98, Heft 1, S. 360-375
ISSN: 1540-6237
ObjectiveTo change the common practice of eliminating independent variables from models because they produce multicollinearity in an independent variable of special interest.MethodsI supplement my presentation, which is based on the purposes of regression analysis, by using Venn diagrams, simple formulas, and two small simulations.ResultsIndependent variables that when removed from a model substantially change the statistics associated with the independent variable(s) of most interest are variables that should typically be kept in the model. Multicollinearity is not a sufficient reason to drop variables from a model.ConclusionI argue against the routine dropping of variables that cause multicollinearity in an independent variable of interest from regression models. A more important criterion to consider when contemplating dropping a variable from a model is "model influence."
In: Criminology: the official publication of the American Society of Criminology, Band 34, Heft 2, S. 183-207
ISSN: 1745-9125
According to the Uniform Crime Reports, violent crime rates increased dramatically over the past two decades. National Crime Victimization Survey data, on the other hand, indicate that the rates of violent crime remained relatively stable or dropped during this period. Which series provides a "correct" estimate of crime‐rate trends is of more than academic interest. Highly publicized statistics on crime trends influence the public's concerns about crime and the decisions of policymakers both directly through their own perceptions of crime trends and indirectly through demands by the general public to control crime. This article compares these two major series on trends in violent crime rates in the United States for the period 1973–1992, with the goal of assessing the extent to which they measure the same underlying phenomenon: fluctuations in violent crime rates. The series are related (but not strongly). My conclusion, with some reservation, is that changes in law enforcement agencies rather than changes in the rates of violent crime incidents have created the upward trend in UCR violent crime rates during the past two decades.
In: Criminology: the official publication of the American Society of Criminology, Band 27, Heft 1, S. 57-78
ISSN: 1745-9125
The compositional effects of relatively large young‐adult cohorts on the total rate of serious crimes is well established. The more subtle effect of relative cohort size on age‐specific crime rates, suggested by Richard Easterlin, is more controversial. The literature contains no adequate test of Easterlin's hypothesis as it relates to crime. To provide an adequate test of Easterlin's theory, this study includes age‐specific rates and measures of relative cohort size and controls for age and period in an age‐period‐relative‐cohort‐size model. Using arrest data from the Uniform Crime Reports (Part I crimes) for the years 1960, 1965, 1970, 1975, 1980, and 1985, the analysis provides support for Easterlin's theory for property crimes, that is, for robbery, burglary, and larceny (but not for motor vehicle theft). Though these relationships were small in comparison to those between age or period and age‐specific crime rates, they were generally statistically significant and were replicated with data from 1962, 1967, 1972, 1977, 1982, and 1987. The relationships between relative cohort size and assaultive crimes provided little consistent support for Easterlin's theory.
In: Criminology: the official publication of the American Society of Criminology, Band 26, Heft 1, S. 151-170
ISSN: 1745-9125
Data on criminal homicides (from the Uniform Crime Reports) and aggravated assaults and simple assaults (from the National Crime Surveys) are analyzed to determine the extent to which violent crimes occur within or between sexes. The routine activities approach is used to develop hypotheses, and those hypotheses are tested using models that estimate the proportion of ingroup and outgroup crimes "expected." With the exception of homicides, in which women murder men more often than expected, each of these violent crimes occurs within sexes more often than expected. There is a strong relationship between the type of violence (simple assault, aggravated assault, and homicide) and the extent to which the target of female aggression is a male.
In: The American journal of sociology, Band 92, Heft 4, S. 817-835
ISSN: 1537-5390
In: Public administration review: PAR, Band 44, S. 334-340
ISSN: 0033-3352
In: American journal of political science, Band 25, Heft 3, S. 605
ISSN: 1540-5907
In: American journal of political science: AJPS, Band 25, Heft 3, S. 605-616
ISSN: 0092-5853
Social scientists often measure variables that are best thought of as having continuous underlying distributions by using crude rank-category techniques (ie, measures that have few rank categories). The result is a large amount of grouping error. Computer simulations are used to investigate the effects of four factors that contribute to grouping error: (1) the underlying distribution of scores; (2) the marginal proportion of cases in each category; (3) the scoring systems used to score categories; & (4) the number of categories used. A distinction is made between two types of grouping error -- transformation & categorization. This distinction is used to clarify two distinct strategies that can be used to reduce grouping error. 4 Tables, 11 References. HA.
In: The American journal of sociology, Band 85, Heft 3, S. 668-669
ISSN: 1537-5390
In: The American journal of sociology, Band 103, Heft 4, S. 837-862
ISSN: 1537-5390
In: Structural equation modeling: a multidisciplinary journal, Band 2, Heft 1, S. 1-12
ISSN: 1532-8007
In: Social science quarterly, Band 64, Heft 3, S. 445
ISSN: 0038-4941
In: Social science quarterly, Band 64, Heft 3, S. 445-459
ISSN: 0038-4941
Recent studies have used the variance explained on relevant dependent variables (Rsquared) to evaluate categorical models of class structure. It is shown here that Rsquared is not an unambiguous criterion for comparing class models. In the dichotomous case, Rsquared is biased in favor of class typologies, like the manual/nonmanual dichotomy, that approximate a 50/50 split of the population. When unbiased measures are used, the manual/nonmanual dichotomy is shown to be inferior to class models that place routine nonmanual employees in the Wc. 3 Tables, 1 Figure, 29 References. HA.