Exploring Early Prediction of Buyer-Seller Negotiation Outcomes (2004.02363v2)
Abstract: Agents that negotiate with humans find broad applications in pedagogy and conversational AI. Most efforts in human-agent negotiations rely on restrictive menu-driven interfaces for communication. To advance the research in language-based negotiation systems, we explore a novel task of early prediction of buyer-seller negotiation outcomes, by varying the fraction of utterances that the model can access. We explore the feasibility of early prediction by using traditional feature-based methods, as well as by incorporating the non-linguistic task context into a pretrained LLM using sentence templates. We further quantify the extent to which linguistic features help in making better predictions apart from the task-specific price information. Finally, probing the pretrained model helps us to identify specific features, such as trust and agreement, that contribute to the prediction performance.
- Kushal Chawla (17 papers)
- Gale Lucas (7 papers)
- Jonathan May (76 papers)
- Jonathan Gratch (20 papers)