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Intelligent Agent to Negotiate on Goal Oriented Conversations

机译:智能代理商谈判面向目标的对话

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In this study we propose a model to develop intelligent agents which are capable of negotiating on goal oriented conversations. These agents have the ability to learn negotiation using past experience and form strategies such as persuasion to negotiate successfully. In order to train these agents, they were made to interact with Simulated Users (SU). A corpus was generated and then annotated with speech acts to be used by a n-gram model. The SUs use this model to generate responses. In this study, we focused on single issue negotiations. A Markov Decision Process (MDP) was used to model the problem by defining the states and actions. The agent was made to interact with the SU to learn an optimal policy. For this we used the SARSA algorithm which is a temporal difference (TD) method. Once the agent is trained it was evaluated by a set of SUs built on different cultural norms. The number of dialogue turns and the policy score obtained when negotiating with these SUs were recorded and evaluated. It was observed that the agent was able to successfully negotiate to make a deal and also persuade them to a profitable offer. It can be concluded that the proposed model is successful and it can be used to train intelligent agents which can negotiate.
机译:在这项研究中,我们提出了一种模型来开发能够在面向目标的对话方面进行谈判的智能代理。这些代理商有能力使用过去的经验和形式策略来学习谈判,例如说服成功谈判。为了训练这些代理商,他们是与模拟用户相互作用(SU)。生成了语料库,然后用N-GRAM模型用语音作用注释。 SUS使用此模型来生成响应。在这项研究中,我们专注于单一问题谈判。 Markov决策过程(MDP)用于通过定义状态和行动来模拟问题。代理商与苏互动以学习最佳政策。为此,我们使用了SARSA算法,该算法是一个时间差异(TD)方法。一旦培训代理人,就通过了一套基于不同文化规范的SUS评估。记录和评估对话次数转向和在与这些SU谈判时获得的政策评分。观察到该代理商能够成功谈判以进行交易,并说服他们盈利报价。可以得出结论,拟议的模型是成功的,它可以用来培训可以协商的智能代理商。

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