Cusp Catastrophe Regression and Its Application in Public Health and Behavioral Research
The cusp catastrophe model is an innovative approach for investigating a phenomenon that consists of both continuous and discrete changes in one modeling framework. However, its application to empirical health and behavior data has been hindered by the complexity in data-model fit. In this study, we...
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doaj-808d02751e144b4aa928eec4d00a838d2020-11-24T21:59:43ZengMDPI AGInternational Journal of Environmental Research and Public Health1660-46012017-10-011410122010.3390/ijerph14101220ijerph14101220Cusp Catastrophe Regression and Its Application in Public Health and Behavioral ResearchDing-Geng Chen0Xinguang Chen1School of Social Work, University of North Carolina, Chapel Hill, NC 27599, USADepartment of Epidemiology, College of Public Health & Health Professions, College of Medicine, University of Florida, Gainesville, FL 32610, USAThe cusp catastrophe model is an innovative approach for investigating a phenomenon that consists of both continuous and discrete changes in one modeling framework. However, its application to empirical health and behavior data has been hindered by the complexity in data-model fit. In this study, we reported our work in the development of a new modeling method—cusp catastrophe regression (RegCusp in short) by casting the cusp catastrophe into a statistical regression. With the RegCusp approach, unbiased model parameters can be estimated with the maximum likelihood estimation method. To validate the RegCusp method, a series of simulations were conducted to demonstrate the unbiasedness of parameter estimation. Since the estimated residual variance with the Fisher information matrix method was over-dispersed, a bootstrap re-sampling procedure was developed and used as a remedy. We also demonstrate the practical applicability of the RegCusp with empirical data from an NIH-funded project to evaluate an HIV prevention intervention program to educate adolescents in the Bahamas for condom use. Study findings indicated that the model parameters estimated with RegCusp were practically more meaningful than those estimated with comparable methods, especially the estimated cusp point.https://www.mdpi.com/1660-4601/14/10/1220cusp catastrophe regressionmaximum likelihood estimationbifurcationasymmetrybootstrappingHIV prevention |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ding-Geng Chen Xinguang Chen |
spellingShingle |
Ding-Geng Chen Xinguang Chen Cusp Catastrophe Regression and Its Application in Public Health and Behavioral Research International Journal of Environmental Research and Public Health cusp catastrophe regression maximum likelihood estimation bifurcation asymmetry bootstrapping HIV prevention |
author_facet |
Ding-Geng Chen Xinguang Chen |
author_sort |
Ding-Geng Chen |
title |
Cusp Catastrophe Regression and Its Application in Public Health and Behavioral Research |
title_short |
Cusp Catastrophe Regression and Its Application in Public Health and Behavioral Research |
title_full |
Cusp Catastrophe Regression and Its Application in Public Health and Behavioral Research |
title_fullStr |
Cusp Catastrophe Regression and Its Application in Public Health and Behavioral Research |
title_full_unstemmed |
Cusp Catastrophe Regression and Its Application in Public Health and Behavioral Research |
title_sort |
cusp catastrophe regression and its application in public health and behavioral research |
publisher |
MDPI AG |
series |
International Journal of Environmental Research and Public Health |
issn |
1660-4601 |
publishDate |
2017-10-01 |
description |
The cusp catastrophe model is an innovative approach for investigating a phenomenon that consists of both continuous and discrete changes in one modeling framework. However, its application to empirical health and behavior data has been hindered by the complexity in data-model fit. In this study, we reported our work in the development of a new modeling method—cusp catastrophe regression (RegCusp in short) by casting the cusp catastrophe into a statistical regression. With the RegCusp approach, unbiased model parameters can be estimated with the maximum likelihood estimation method. To validate the RegCusp method, a series of simulations were conducted to demonstrate the unbiasedness of parameter estimation. Since the estimated residual variance with the Fisher information matrix method was over-dispersed, a bootstrap re-sampling procedure was developed and used as a remedy. We also demonstrate the practical applicability of the RegCusp with empirical data from an NIH-funded project to evaluate an HIV prevention intervention program to educate adolescents in the Bahamas for condom use. Study findings indicated that the model parameters estimated with RegCusp were practically more meaningful than those estimated with comparable methods, especially the estimated cusp point. |
topic |
cusp catastrophe regression maximum likelihood estimation bifurcation asymmetry bootstrapping HIV prevention |
url |
https://www.mdpi.com/1660-4601/14/10/1220 |
work_keys_str_mv |
AT dinggengchen cuspcatastropheregressionanditsapplicationinpublichealthandbehavioralresearch AT xinguangchen cuspcatastropheregressionanditsapplicationinpublichealthandbehavioralresearch |
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1725847503426813952 |