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Mining the voice of employees: A text mining approach to identifying and analyzing job satisfaction factors from online employee reviews

机译:矿业声音:识别和分析来自在线员工评论的工作满意因子的文本挖掘方法

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摘要

Online reviews have become a significant information source for business practitioners to know about customers' opinions of their products or services. Previous studies examined product or service satisfaction factors of customers by analyzing online consumer reviews. However, examining job satisfaction factors of employees through online employee reviews has rarely been studied. In this study, we first identified job satisfaction factors from 35,063 online employee reviews posted on jobplanet.co.kr using Latent Dirichlet Allocation (LDA). Then, we conducted a series of analyses based on the factors. We measured the sentiment and importance of each job satisfaction factor at industry, company, group, and chronological levels. Dominance analysis examined the relative importance of each star-rated job satisfaction factor on overall job satisfaction. Further, the association strength between each job satisfaction factor and overall job satisfaction is computed from correspondence analysis. The results from this study will provide business managers with profound insights into making decisions on managing job satisfaction of their employees in various aspects.
机译:在线评论已成为商业从业者了解客户对其产品或服务意见的重要信息来源。以前的研究通过分析在线消费者评论,检查了客户的产品或服务满意因素。但是,通过在线员工评论审查员工的工作满意度因素很少已经研究过。在这项研究中,我们首先使用潜在Dirichlet分配(LDA)发布的35,063个在线员工评论的工作满意因素。然后,我们根据因素进行了一系列分析。我们衡量了行业,公司,集团和年表水平的每个工作满意度因素的情感和重要性。优势分析检验了每个星级工作满意度因素对整体工作满意度的相对重要性。此外,从对应分析计算每个作业满意度因素和整体工作满意度之间的关联强度。本研究的结果将为商业管理人员提供深刻的见解,以决定在各个方面管理员工的工作满意度。

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