How Did We Get Here? Summarizing Conversation Dynamics
Throughout a conversation, the way participants interact with each other is in constant flux: their tones may change, they may resort to different strategies to convey their points, or they might alter their interaction patterns. An understanding of these dynamics can complement that of the actual f...
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Zusammenfassung: | Throughout a conversation, the way participants interact with each other is
in constant flux: their tones may change, they may resort to different
strategies to convey their points, or they might alter their interaction
patterns. An understanding of these dynamics can complement that of the actual
facts and opinions discussed, offering a more holistic view of the trajectory
of the conversation: how it arrived at its current state and where it is likely
heading.
In this work, we introduce the task of summarizing the dynamics of
conversations, by constructing a dataset of human-written summaries, and
exploring several automated baselines. We evaluate whether such summaries can
capture the trajectory of conversations via an established downstream task:
forecasting whether an ongoing conversation will eventually derail into toxic
behavior. We show that they help both humans and automated systems with this
forecasting task. Humans make predictions three times faster, and with greater
confidence, when reading the summaries than when reading the transcripts.
Furthermore, automated forecasting systems are more accurate when constructing,
and then predicting based on, summaries of conversation dynamics, compared to
directly predicting on the transcripts. |
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DOI: | 10.48550/arxiv.2404.19007 |