Anthony A. Mangino, Kendall A. Smith, W. H. Finch, M. Hernández-Finch
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Improving Predictive Classification Models Using Generative Adversarial Networks in the Prediction of Suicide Attempts
Abstract A number of machine learning methods can be employed in the prediction of suicide attempts. However, many models do not predict new cases well in cases with unbalanced data. The present study improved prediction of suicide attempts via the use of a generative adversarial network.
期刊介绍:
Measurement and Evaluation in Counseling and Development is an official journal of the Association of Assessment and Research in Counseling (AARC), a member association and division of the American Counseling Association. Articles range in appeal from those that deal with theoretical and other problems of the measurement specialist to those directed to the administrator, the counselor, or the personnel worker--in schools and colleges, public and private agencies, business, industry, and government. All articles clearly describe implications for the counseling field and for practitioners, educators, administrators, researchers, or students in assessment, measurement, and evaluation.