从敏感警官叙述中发现行为健康案例

Martin Brown, Md Abdullah Khan, Dominic Thomas, Yong Pei, M. Nandan
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引用次数: 0

摘要

早期发现和干预行为健康案例,包括心理健康,对于防止伤害自己和他人至关重要。执勤人员或911报警电话生成的警察报告仍然是识别此类事件的未开发资源。为了加快检测过程,我们提出了一个工作流程,该工作流程涉及专家之间的协作,以手动注释案例并纠正模型预测。这种方法可以提高初始注释和模型性能。因此,我们提倡结合专家的手动注释、自然语言处理(NLP)、主动学习和先进的机器学习技术来检测警察报告中的行为健康案例。实验表明,CNN-LSTM模型对行为健康问题的检测准确率为86.67%,f1得分为0.82。
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Detection of Behavioral Health Cases from Sensitive Police Officer Narratives
Early detection of and intervention in behavioral health cases, including mental health, is crucial to prevent harm to one’s self and others. Police reports generated by officers on duty or in response to 911 calls remain an untapped resource for identifying such incidents. To expedite the detection process, we propose a workflow that involves collaboration between experts to manually annotate cases and correct model predictions. This approach can improve both initial annotation and model performance. Therefore, we advocate for the incorporation of manual annotations from experts, natural language processing (NLP), active learning, and advanced machine learning techniques to detect behavioral health cases within police reports. The experimentation suggests that a CNN-LSTM model achieves the best performance with an accuracy of 86.67% and an F1-score of 0.82 in detecting behavioral health issues.
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