Abstract
Self-disclosure is a key social strategy employed in conversation to build relations and increase conversational depth. It has been heavily studied in psychology and linguistic literature, particularly for its ability to induce self-disclosure from the recipient, a phenomena known as reciprocity. However, we know little about how self-disclosure manifests in conversation with automated dialog systems, especially as any self-disclosure on the part of a dialog system is patently disingenuous. In this work, we run a large-scale quantitative analysis on the effect of self-disclosure by analyzing interactions between real-world users and a spoken dialog system in the context of social conversation. We find that indicators of reciprocity occur even in human-machine dialog, with far-reaching implications for chatbots in a variety of domains including education, negotiation and social dialog.
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CITATION STYLE
Ravichander, A., & Black, A. (2018). An empirical study of self-disclosure in spoken dialogue systems. In SIGDIAL 2018 - 19th Annual Meeting of the Special Interest Group on Discourse and Dialogue - Proceedings of the Conference (pp. 253–263). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/w18-5030
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