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首页> 外文期刊>International journal of business information systems >Applying data mining algorithms to encourage mental health disclosure in the workplace
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Applying data mining algorithms to encourage mental health disclosure in the workplace

机译:应用数据挖掘算法鼓励工作场所的心理健康披露

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摘要

The importance of sharing mental health issues with supervisors is well established. However, the decision to disclose such intimate information is complex and is influenced by many intrinsic and extrinsic variables. The purpose of this study is to use machine learning algorithms to develop a tool that supervisors may use to enhance disclosure of mental health issues among their employees. Several interpretable machine learning algorithms are established based on a Kaggle dataset of more than 1,400 participants that measures attitudes towards mental health and prevalence of mental health disorders in the tech workplace. The C4.5 algorithm is chosen as the best classifier of willingness to disclose a mental health disorder to supervisors, based on a variety of classification performance measures. Tailored intervention programs are applied and are shown to have the potential to increase the probability of disclosure by between 20% and 60%.
机译:与监事会分享心理健康问题的重要性得到了很好的成熟。 然而,揭示这种亲密信息的决定是复杂的并且受许多内在和外在变量的影响。 本研究的目的是使用机器学习算法来开发监督员可以使用的工具来加强员工之间的心理健康问题的披露。 基于超过1,400名参与者的滑动阶数据集建立了几种可解释的机器学习算法,这些参与者可以测量对精神健康和精神健康障碍的患者在技术工作场所的态度。 基于各种分类绩效措施,选择了C4.5算法作为向监事披露心理健康障碍的最佳分类器。 应用量身定制的干预计划,并显示有可能将披露的可能性增加20%和60%。

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