D. Kröhling, Omar J. A. Chiotti, Ernesto C. Martínez
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引用次数: 0
Abstract
This work presents the hypothesis that guided the research efforts and a summary of the contributions of the doctoral thesis '`Aprendizaje y adaptación de estrategias para negociación automatizada entre agentes conscientes del contexto'. Succinctly, the thesis focuses on agents for automated bilateral negotiations that make use of the context as a key source of information to learn and adapt negotiation strategies in two levels of temporal abstraction. At the highest level, agents employ reinforcement learning to select strategies according to contextual circumstances. At the lowest level, agents use Gaussian Processes and artificial Theory of Mind to model their opponents and adapt their strategies. Agents are then tested in two Peer-to-Peer markets comprising an Eco-Industrial Park and a Smart Grid. The results highlight the significance for the automation of bilateral negotiations of incorporating the context as an informative source.
本作品介绍了指导研究工作的假设,并总结了博士论文 "Aprendizaje y adaptación de estrategias para negociación automatizada entre agentes conscientes del contexto "的贡献。简而言之,该论文侧重于自动双边谈判的代理,这些代理利用上下文作为关键的信息来源,在两个时间抽象层次上学习和调整谈判策略。在最高级别,代理采用强化学习,根据上下文环境选择策略。在最低层面,代理使用高斯过程和人工心智理论来模拟对手并调整策略。然后,在由生态工业园和智能电网组成的两个点对点市场中对代理进行了测试。结果凸显了将上下文作为信息来源对双边谈判自动化的重要意义。