Understanding Dialogue Acts by Bayesian Inference and Reinforcement Learning

Akane Matsushima, N. Oka, Chie Fukada, Kazuaki Tanaka
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引用次数: 3

Abstract

evel (Austin 1962). DAs constitute the most fundamental part of communication, and the comprehension of DAs is essential to human-agent interaction. The purpose of this study is to enable an agent to behave properly in response to DAs without their explicit representation on one hand and to estimate the DAs explicitly on the other hand. The former is realized by reinforcement learning and the latter by Bayesian inference. The simulation results demonstrated that the agent not only responded to DAs successfully but also inferred the DAs correctly.
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通过贝叶斯推理和强化学习理解对话行为
水平(奥斯汀1962)。DAs是沟通中最基本的部分,理解DAs对人机交互至关重要。本研究的目的是一方面使代理能够在没有明确表示的情况下对DAs做出适当的反应,另一方面使代理能够明确地估计DAs。前者通过强化学习实现,后者通过贝叶斯推理实现。仿真结果表明,该智能体不仅能够成功地响应DAs,而且能够正确地推断DAs。
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