识别CEO傲慢的语言标记:一种机器学习方法

Identifying Linguistic Markers of CEO Hubris: A Machine Learning Approach

BRITISH JOURNAL OF MANAGEMENT · 2021
被引 28
人大 A-ABS 4

中文导读

用机器学习分析CEO讲话中的傲慢语言标记,发现算法能自动区分傲慢与非傲慢CEO,为预测和预防破坏性领导行为提供新方法。

Abstract

Abstract This paper explores the potential of machine learning for recognizing and analysing linguistic markers of hubris in CEO speech. This research is based on three assumptions: hubris is associated with potentially destructive leader behaviours; linguistic utterances are a way of distinguishing between leaders who are likely to exhibit such behaviours; identifying hubris at‐a‐distance using machine learning techniques provides a reliable, automated and scalable method for the identification and prevention of destructive outcomes emanating from CEO hubris. Using machine learning techniques, we analysed spoken utterances from a sample of hubristic CEOs and compared them with non‐hubristic CEOs. We found that machine learning algorithms have the ability to identify automatically hubristic versus non‐hubristic speech patterns. One of the main implications of this study is building a foundation for future studies that are interested in the application of machine learning in the fields of hubristic and other forms of destructive leadership, and in the study of the role that language plays in management and organizations more generally. We discuss the implications of automated data extraction and analysis for the prediction of CEOs’, and other employees’, category membership, intentions and behaviours. We offer recommendations for how hubristic and destructive leadership in organizations can be managed and curtailed more effectively, thereby obviating their negative consequences.

CEO傲慢机器学习语言标记破坏性领导