基于电子邮件沟通的组织人员流失建模

Akshay Patil, Juan Liu, Jianqiang Shen, Oliver Brdiczka, Jie Gao, J. Hanley
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引用次数: 10

摘要

将人们的网络行为与他们的现实社会环境相关联是一个有趣而重要的研究问题。在本文中,我们基于两个在线数据集介绍了我们对现实世界组织中人员流失行为的初步研究:一个数据集来自一家小型初创公司(40+用户),另一个数据集来自一家大型美国公司(3600+用户)。小型创业公司数据集是使用我们的隐私保护数据记录工具收集的,该工具从内容数据中删除个人身份信息,仅提取汇总统计信息,如词频计数和情感特征。隐私保护措施使我们能够招募参与者来支持本研究。对创业公司数据集的相关分析表明,在统计上,人们的在线行为往往存在一个变化点,数据显示出的微弱趋势可能是现实世界人员流失的表现。同样的发现也在大型公司数据集中得到了验证。此外,我们已经训练了一个分类器来预测现实世界的人员流失,在大型公司数据集上的准确度为60-65%。考虑到数据的不完整性和嘈杂性,其准确性是令人鼓舞的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Attrition in Organizations from Email Communication
Modeling people's online behavior in relation to their real-world social context is an interesting and important research problem. In this paper, we present our preliminary study of attrition behavior in real-world organizations based on two online datasets: a dataset from a small startup (40+ users) and a dataset from one large US company (3600+ users). The small startup dataset is collected using our privacy-preserving data logging tool, which removes personal identifiable information from content data and extracts only aggregated statistics such as word frequency counts and sentiment features. The privacy-preserving measures have enabled us to recruit participants to support this study. Correlation analysis over the startup dataset has shown that statistically there is often a change point in people's online behavior, and data exhibits weak trends that may be manifestation of real-world attrition. Same findings are also verified in the large company dataset. Furthermore, we have trained a classifier to predict real-world attrition with a moderate accuracy of 60-65% on the large company dataset. Given the incompleteness and noisy nature of data, the accuracy is encouraging.
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