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Addition of Learning to Critic Agent as a Solution to the Multi-Agent Credit Assignment Problem

机译:添加学习批评代理作为多代理商信用分配问题的解决方案

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Multi-agent systems (MAS) is a solution to the nowadays encountered problems, which have the characteristics such as distributiveness, dynamism and the need to adaptation, robustness, efficiency, and reusability. This paper proposed a solution to multi-agent credit assignment problem. The contribution is to equip the critic agent (who is responsible for distributing reinforcements among agents) with learning capability. Some criteria are used to propose an inner feedback to the critic. Results of simulation show the applicability of the method to a task, which has the characteristic that the agent has to decide from a large set of actions. The research is a preliminary step to more in-depth thinking for a solution to multi-agent critic assignment.
机译:多代理系统(MAS)是当前遇到的问题的解决方案,这些问题具有分销力,动态性和适应性,鲁棒性,效率和可重用性等特征。本文提出了多智能经纪人信用分配问题的解决方案。贡献是为批评者(负责在代理商之间分发增援)的批评能力。一些标准用于向评论家提出内部反馈。仿真结果表明该方法对任务的适用性,这具有代理必须从一系列动作决定的特征。该研究是对更深入的深入思考多智能经纪人评论批评分配的初步步骤。

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