Evaluating Persuasion Strategies and Deep Reinforcement Learning methods for Negotiation Dialogue agents

نویسندگان

  • Alex Lascarides
  • Oliver Lemon
  • Markus Guhe
  • Simon Keizer
  • Heriberto Cuayáhuitl
  • Ioannis Efstathiou
  • Klaus-Peter Engelbrecht
  • Mihai Sorin Dobre
چکیده

In this paper we present a comparative evaluation of various negotiation strategies within an online version of the game “Settlers of Catan”. The comparison is based on human subjects playing games against artificial game-playing agents (‘bots’) which implement different negotiation dialogue strategies, using a chat dialogue interface to negotiate trades. Our results suggest that a negotiation strategy that uses persuasion, as well as a strategy that is trained from data using Deep Reinforcement Learning, both lead to an improved win rate against humans, compared to previous rule-based and supervised learning baseline dialogue negotia-

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تاریخ انتشار 2017