Finding top performers through email patterns analysis
Q. Wen, P. A. Gloor, A. Fronzetti Colladon, P. Tickoo, T. Joshi

TL;DR
This paper presents a novel method combining social network and semantic analysis of email data to identify top performers, revealing distinctive communication patterns and achieving high predictive accuracy.
Contribution
It introduces a new approach that integrates network and content analysis of emails to predict top performance, validated on a large executive dataset.
Findings
Top performers occupy central network positions.
Top performers use positive, complex, and influential language.
AdaBoost models achieved 83.56% accuracy.
Abstract
In the information economy, individuals' work performance is closely associated with their digital communication strategies. This study combines social network and semantic analysis to develop a method to identify top performers based on email communication. By reviewing existing literature, we identified the indicators that quantify email communication into measurable dimensions. To empirically examine the predictive power of the proposed indicators, we collected 2 million email archive of 578 executives in an international service company. Panel regression was employed to derive interpretable association between email indicators and top performance. The results suggest that top performers tend to assume central network positions and have high responsiveness to emails. In email contents, top performers use more positive and complex language, with low emotionality, but rich in…
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Taxonomy
Methodstravel james
