Conversations Gone Awry, But Then? Evaluating Conversational Forecasting Models
Tran, Son Quoc, Gangavarapu, Tushaar, Chernogor, Nicholas, Chang, Jonathan P., Danescu-Niculescu-Mizil, Cristian
–arXiv.org Artificial Intelligence
We often rely on our intuition to anticipate the direction of a conversation. Endowing automated systems with similar foresight can enable them to assist human-human interactions. Recent work on developing models with this predictive capacity has focused on the Conversations Gone Awry (CGA) task: forecasting whether an ongoing conversation will derail. In this work, we revisit this task and introduce the first uniform evaluation framework, creating a benchmark that enables direct and reliable comparisons between different architectures. This allows us to present an up-to-date overview of the current progress in CGA models, in light of recent advancements in language modeling. Our framework also introduces a novel metric that captures a model's ability to revise its forecast as the conversation progresses.
arXiv.org Artificial Intelligence
Jul-28-2025
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