Risk assessments are typically based on retrospective reports of factors known to be correlated with violence recidivism in simple linear models. Generally, these linear models use only the perpetrators’ reports. Using a community sample of couples recruited for recent male-to-female intimate partner violence (IPV; N = 97 couples), the current study compared non-linear neural network models to traditional linear models in predicting a history of arrest in men who perpetrate IPV. The neural network models were found to be superior to the linear models in their predictive power. Models were slightly improved by adding victims’ report. These findings suggest that the prediction of violence arrest be enhanced through the use of neur...
This study assesses the relative utility of a traditional regression approach - logistic regression ...
In this study, the authors compared logistic regression and predictive data mining techniques such a...
Background Current risk assessment tools have a limited evidence base with few validations, poor rep...
This paper aims to determine the predictors of violence against women by their partners, according t...
Using criminal population criminal conviction history information, prediction models are developed t...
Intimate partner violence (IPV) affects millions of people in the United States, causing negative ge...
The aim of this work is to analyze, through artificial neural network models, cortical pattern of w...
This study tests two hypotheses regarding factors affecting arrest of the perpetrator in domestic vi...
Using criminal population conviction histories of recent offenders, prediction mod els are developed...
Thesis (Master's)--University of Washington, 2016-06Introduction: Intimate partner violence (IPV) is...
Crime influences people in many ways. Prior studies have shown the relationship between time and cri...
This research addresses the limitations of prior analyses and reviews of five experiments testing fo...
Citizen insecurity is one of the most important problems in our society. We have reviewed the invest...
The files of 92 men with a history of domestic violence were evaluated to assess: 1) the degree to ...
Intimate partner violence (IPV) accounts for a large proportion of police calls for service and crim...
This study assesses the relative utility of a traditional regression approach - logistic regression ...
In this study, the authors compared logistic regression and predictive data mining techniques such a...
Background Current risk assessment tools have a limited evidence base with few validations, poor rep...
This paper aims to determine the predictors of violence against women by their partners, according t...
Using criminal population criminal conviction history information, prediction models are developed t...
Intimate partner violence (IPV) affects millions of people in the United States, causing negative ge...
The aim of this work is to analyze, through artificial neural network models, cortical pattern of w...
This study tests two hypotheses regarding factors affecting arrest of the perpetrator in domestic vi...
Using criminal population conviction histories of recent offenders, prediction mod els are developed...
Thesis (Master's)--University of Washington, 2016-06Introduction: Intimate partner violence (IPV) is...
Crime influences people in many ways. Prior studies have shown the relationship between time and cri...
This research addresses the limitations of prior analyses and reviews of five experiments testing fo...
Citizen insecurity is one of the most important problems in our society. We have reviewed the invest...
The files of 92 men with a history of domestic violence were evaluated to assess: 1) the degree to ...
Intimate partner violence (IPV) accounts for a large proportion of police calls for service and crim...
This study assesses the relative utility of a traditional regression approach - logistic regression ...
In this study, the authors compared logistic regression and predictive data mining techniques such a...
Background Current risk assessment tools have a limited evidence base with few validations, poor rep...