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首页> 外文期刊>Computers in Human Behavior >Forecasting managerial turnover through e-mail based social network analysis
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Forecasting managerial turnover through e-mail based social network analysis

机译:通过基于电子邮件的社交网络分析预测管理人员流动

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In this study we propose a method based on e-mail social network analysis to compare the communication behavior of managers who voluntarily quit their job and managers who decide to stay. Collecting 18 months of e-mail, we analyzed the communication behavior of 866 managers, out of which 111 left a large global service company. We compared differences in communication patterns by computing social network metrics, such as betweenness and closeness centrality, and content analysis indicators, such as emotionality and complexity of the language used. To study the emergence of managers' disengagement, we made a distinction based on the period of e-mail data examined. We observed communications during months 5 and 4 before managers left, and found significant variations in both their network structure and use of language. Results indicate that on average managers who quit had lower closeness centrality and less engaged conversations. In addition, managers who chose to quit tended to shift their communication behavior starting from 5 months before leaving, by increasing their degree and closeness centrality, the complexity of their language, as well as their oscillations in betweenness centrality and the number of "nudges" they need to send to peers before getting an answer. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在这项研究中,我们提出了一种基于电子邮件社交网络分析的方法,用于比较自愿辞职的经理和决定留下的经理的沟通行为。收集了18个月的电子邮件,我们分析了866位经理的沟通行为,其中111位经理离开了一家大型全球服务公司。我们通过计算社交网络指标(例如介意和亲密关系的中心度)以及内容分析指标(例如所用语言的情感性和复杂性)来比较沟通模式的差异。为了研究经理人脱离接触的出现,我们根据检查的电子邮件数据的时间进行了区分。我们在经理离开之前的第5个月和第4个月观察到交流,发现他们的网络结构和语言使用都存在很大差异。结果表明,平均而言,辞职的经理人的亲密性较低,交谈的参与度也较低。此外,选择辞职的管理人员倾向于从离开前的5个月开始改变他们的沟通行为,方法是增加其程度和亲密性,语言的复杂性以及中间性和“轻推”次数的波动他们需要先发送给同龄人才能得到答案。 (C)2017 Elsevier Ltd.保留所有权利。

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