Intelligent Bargaining in Market Using Reinforcement Learning
Subject Areas : electrical and computer engineeringM. A. Saadatjoo 1 , V. Derhami 2 , فاطمه سعادت جو 3
1 -
2 - Yazd University
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Keywords: Reinforcement learning price offer seller and customer selection negotiation,
Abstract :
Using Information Technology techniques have been increased complication and dynamicity of supply-and-demand systems like auctions. In this paper, we introduce a novel method by applying Reinforcement Learning (RL) price offer as one of the robust methods of agent learning which can be used in interactive conditions with minimum level of information in auction and reverse auction. Negotiation as one of the challengeable and complicated behaviors is caused an agreement on price in auctions. The main aim of our method is maximizing seller’s and customer’s profits. We formulate seller and customer selection in form of two different RL problems. All of the RL parameters like states, actions, and reinforcement function are defined. Also, we describe an experimental method to compare with our proposed method for proving advantages of our method.
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