基于关联聚合的神经网络可解释性缺勤预测

Julio Marcos Gomes Junior, Fabricio M. Lopes
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引用次数: 0

摘要

员工缺勤被称为旷工,旷工的原因多种多样,如体力活动剧烈、年龄较大、工作心理要求高等。旷工影响公司的直接和间接成本,可能达到工资的15%。因此,了解其主要原因并为控制和缓解战略作出贡献至关重要。神经网络已经成功地应用于几个问题的分类,但它们是黑盒子,因为它们不能解释在决策中考虑哪些方面。这方面在健康应用中非常重要,在这方面有必要解释和清楚地解释结果。在此背景下,本研究提出了一种通过神经网络和分层相关传播(LRP)聚合对旷工进行分类的方法,以识别最相关的特征,并为每个班级和所有班级单独分配相关分数。通过将广泛使用的数据集作为基准,并与现有文献方法进行比较,对所提出的方法进行了评估。所提出的方法在比较的方法中呈现出最高的自信率,达到0.83的平均准确率,通过相关性评分识别出与缺勤分类最相关的特征。因此,调查结果可以解释每一类缺勤的原因,这有助于人力资源管理、职业医学和制定减轻缺勤的战略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpretability with Relevance Aggregation in Neural Networks for Absenteeism Prediction
The lack of attendance of employees is called absenteeism and occurs for various reasons, such as vigorous physical activity, advanced age and high psychological demands of the work. The absenteeism affects the direct and indirect costs of the companies, and may reach 15% of the payroll. Therefore, it is fundamental to know its main causes and contribute to control and mitigation strategies. Neural networks have been successfully applied in the classification of several problems, but they are black boxes, because they do not explain which aspects are considered in their decisions. This aspect is very important in health applications, in which it is necessary to explain and clearly interpret the results. In this context, this work presents an approach to classify absenteeism through neural networks and Layer-wise relevance propagation (LRP) aggregation in order to identify the most relevant features and to assign relevance scores individually per class and among all classes. The proposed approach was assessed by considering a dataset widely used as a benchmark and compared to the existing literature methods. The proposed approach presented the highest assertiveness rates among the compared methods, reaching an average accuracy of 0.83, identifying the most relevant features for the classification of absenteeism through a relevance score. Therefore, the results allow the interpretability of the causes of each class of absenteeism, which contribute to the management of human resources, occupational medicine and the development of strategies for its mitigation.
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