山东大学学报 (医学版) ›› 2022, Vol. 60 ›› Issue (4): 10-16.doi: 10.6040/j.issn.1671-7554.0.2021.0175
Li KUANG1,*(
),Xiaoming XU1,Qi ZENG2
摘要:
全球每年有80万人死于自杀,自杀未遂数量大约是其20倍。自杀不仅是严重的公共卫生事件,而且对自杀者周围的人产生重大而深远的影响。更准确、便捷、及时地预测自杀行为一直是研究者的目标。论文对近五年应用于自杀意念与行为的机器学习研究进行回顾,分析机器学习用于自杀研究的有效性、可行性,对机器学习应用于自杀领域的研究提出建议,为未来的研究提供方向。
中图分类号:
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