用可解释的人工智能解释员工流失的因素

K. Sekaran, Shanmugam S
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引用次数: 7

摘要

员工流失对每个组织来说都是一个巨大的挑战。任何组织的发展都直接取决于有才能的员工。每个员工都被视为一种资源,经过多年的关键技能培训,在组织的关键职位上建立了依赖性。员工做出这个决定的背后有几个原因。组织有责任识别员工的流失,因为它会对流程产生许多影响。保留员工,反过来,减少了招聘新候选人的负担,增加了稳定性,减少了浪费在培训上的时间,等等。为了解决这一关键挑战,我们采用了一个复杂的解释模型来追踪人员流失的原因。本文论证了两种强大的可解释人工智能(XAI)模型——局部可解释模型不可知论解释器(LIME)和Shapley加性解释器(SHAP)在解释决定员工流失的因素方面的功效。这些模型揭示了数据的逻辑见解,可以帮助管理当局应对员工流失的风险。
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Interpreting the Factors of Employee Attrition using Explainable AI
Employee attrition is a great challenge for every organization. The growth of any organization directly depends on talented employees. Each employee is considered as a resource, trained over years on crucial skills, builds dependency over critical positions in an organization. There exists several reasons behind the decision made by the employee. It is the responsibility of the organization to identify the attrition of employees as it creates many implications for the processes. Retention of the employee, in turn, reduces the burden of hiring new candidates, increases stability, reduces wasting time on training, etc. To address this key challenge, a sophisticated interpretation model is employed to trace out the reason for attrition. This paper demonstrates the efficacy of two powerful Explainable AI (XAI) models named Local Interpre table Model-Agnostic Explainer (LIME) and Shapley Additive eXplainer (SHAP) on interpreting the factors deciding employee attrition. These models unveiled logical insights from the data that could assist the management authorities in countermeasure the risk of employee attrition.
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