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A Comparison of Data-Driven and Traditional Approaches to Employee Performance Assessment

机译:对员工绩效评估的数据驱动和传统方法的比较

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Employee performance monitoring is not new. Traditional systems consider an average of peer and direct supervisor reviews across various subjective criteria in yearly performance appraisals. This leads to problems such as recency and social biases that devalue the credibility of the review process. Modern, data-driven systems have made it easier to automatically track employee data regarding various common performance metrics in useful ways. Statistical measures are derived from these metrics that are collated over a defined period. These measures are used to determine if and when any appropriate action needs to be taken. However, the statistics fail to account for common characteristics of the employee population. Instead of comparing individual performance against rigid idealistic norms, this paper presents an automated and objective approach to determine the collective population norm and calculate abnormal deviations from it. Employees who deviate from the norm are automatically flagged and subject to further review from management. Ideally, a combination of calculated metrics using this approach can be used to accurately reflect real-world situations and highlight anomalies in the employee work force. We compare the results of the proposed statistical approach with traditional human review approaches and evaluate their correlation.
机译:员工性能监测并不是新的。传统系统在年度绩效评估中考虑各种主观标准的同行和直接主管审查。这导致问题和社会偏见等问题贬值审查过程的可信度。现代数据驱动的系统使得更容易以有用的方式自动跟踪有关各种常见性能度量的员工数据。统计措施源自在规定的时间内整理的这些指标。这些措施用于确定是否需要采取任何适当的行动。但是,统计数据未能考虑员工人口的共同特征。本文提出了一种自动化和客观方法来确定集体群体规范的自动化和客观方法,而不是比较刚性理想性规范。偏离常量的员工将被自动标记,并有进一步审查管理层。理想情况下,使用这种方法的计算指标组合可用于准确反映现实世界的情况,并在员工职责中突出异常。我们将拟议的统计方法的结果与传统的人类审查方法进行比较并评估其相关性。

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