我國的法律規定妨害性自主罪受刑人需接受專業鑒定,但卻缺乏「高再犯可能」的標準。本研究期待利用類神經網路預測模型,提供精神醫療人員進行司法鑒定時重要的決策支援,進而加強預測度、降低與實際的誤差,同時節省人力、財力。本研究以民國84及85年間自臺灣北部某監獄出監的552位個案,分別追蹤其自離開監獄至92年12月31日及93年12月31日止的妨害性自主罪再犯情形為樣本。分析相關性較高的22個再犯因子後,利用類神經網路建構預測模型,並與邏輯迴歸模型、RRASOR、MnSOST-R及Static-99的ROC曲線相比較以檢驗其預測能力。建構出的類神經網路模型擁有最大的ROC曲線之曲線下面積,和其他預測方法相比整體而言有較佳的預測能力。
In Taiwan, sexual offenders need to receive professional assessments before leaving the prison, but the lack of "high recidivism risk" standard is a serious problem. This study try to use artificial neural network model to provide an important reference to forensic psychiatric professionals, thereby strengthening the predict ability, reduce errors, and saving manpower and money. Participants of this study were 552 sexual offenders released from a prison in northern Taiwan in 1995 and 1996, and we follow all cases from the time of release to December 31, 2003 and 2004 separately. 22 risk predictors with statistic significance are selected to construct a artificial neural network (ANN) model for the sexual offender recidivism prediction. Then we examined the predict ability of the ANN model by receiver operating characteristic (ROC) analysis, and compare with the model constructed by logistic regression, RRASOR, MnSOST-R, and Static-99. The area under the ROC curve for ANN model is the biggest, after comparing with all prediction models, ANN model got better predict ability.