CLJun 12, 2017

Dialog Structure Through the Lens of Gender, Gender Environment, and Power

arXiv:1706.03441v110 citations
Originality Synthesis-oriented
AI Analysis

This work addresses social scientists and computer scientists by providing insights into social context effects on dialog behavior and enhancing automated inference methods, though it is incremental as it builds on existing gender and power studies with a new dataset.

The study investigates how gender and gender environment influence power dynamics in organizational email interactions, using a newly created Gender Identified Enron Corpus with 23,000 individuals and 97,000 emails. It finds that both factors affect power manifestations in dialog structure and demonstrates that gender information improves automatic prediction of power direction between participants.

Understanding how the social context of an interaction affects our dialog behavior is of great interest to social scientists who study human behavior, as well as to computer scientists who build automatic methods to infer those social contexts. In this paper, we study the interaction of power, gender, and dialog behavior in organizational interactions. In order to perform this study, we first construct the Gender Identified Enron Corpus of emails, in which we semi-automatically assign the gender of around 23,000 individuals who authored around 97,000 email messages in the Enron corpus. This corpus, which is made freely available, is orders of magnitude larger than previously existing gender identified corpora in the email domain. Next, we use this corpus to perform a large-scale data-oriented study of the interplay of gender and manifestations of power. We argue that, in addition to one's own gender, the "gender environment" of an interaction, i.e., the gender makeup of one's interlocutors, also affects the way power is manifested in dialog. We focus especially on manifestations of power in the dialog structure --- both, in a shallow sense that disregards the textual content of messages (e.g., how often do the participants contribute, how often do they get replies etc.), as well as the structure that is expressed within the textual content (e.g., who issues requests and how are they made, whose requests get responses etc.). We find that both gender and gender environment affect the ways power is manifested in dialog, resulting in patterns that reveal the underlying factors. Finally, we show the utility of gender information in the problem of automatically predicting the direction of power between pairs of participants in email interactions.

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