Language of Bargaining

Mourad Heddaya, Solomon E Dworkin, Chenhao Tan, Rob Voigt, Alexander K Zentefis

Main: Computational Social Science and Cultural Analytics Main-poster Paper

Poster Session 7: Computational Social Science and Cultural Analytics (Poster)
Conference Room: Frontenac Ballroom and Queen's Quay
Conference Time: July 12, 11:00-12:30 (EDT) (America/Toronto)
Global Time: July 12, Poster Session 7 (15:00-16:30 UTC)
Keywords: human behavior analysis
TLDR: Leveraging an established exercise in negotiation education, we build a novel dataset for studying how the use of language shapes bilateral bargaining. Our dataset extends existing work in two ways: 1) we recruit participants via behavioral labs instead of crowdsourcing platforms and allow participa...
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Abstract: Leveraging an established exercise in negotiation education, we build a novel dataset for studying how the use of language shapes bilateral bargaining. Our dataset extends existing work in two ways: 1) we recruit participants via behavioral labs instead of crowdsourcing platforms and allow participants to negotiate through audio, enabling more naturalistic interactions; 2) we add a control setting where participants negotiate only through alternating, written numeric offers. Despite the two contrasting forms of communication, we find that the average agreed prices of the two treatments are identical. But when subjects can talk, fewer offers are exchanged, negotiations finish faster, the likelihood of reaching agreement rises, and the variance of prices at which subjects agree drops substantially. We further propose a taxonomy of speech acts in negotiation and enrich the dataset with annotated speech acts. We set up prediction tasks to predict negotiation success and find that being reactive to the arguments of the other party is advantageous over driving the negotiation.