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Multi-Agent Joint Learning from Argumentation

机译:议论的多智能体联合学习

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Joint learning from argumentation is the idea that groups of agents with different individual knowledge take part in argumentation to communicate with each other to improve their learning ability. This paper focuses on association rule, and presents MALA, a model for argumentation based multi-agent joint learning which integrates ideas from machine learning, data mining and argumentation. We introduce the argumentation model Arena as a communication platform with which the agents can communicate their individual knowledge mined from their own datasets. We experimentally show that MALA can get a shared and agreed knowledge base and improve the performance of association rule mining.
机译:通过论证进行联合学习是这样一种思想,即具有不同个人知识的特工群体参与论证以相互交流以提高他们的学习能力。本文着重讨论关联规则,并提出MALA,这是一个基于论证的多主体联合学习模型,该模型融合了机器学习,数据挖掘和论证的思想。我们将论证模型Arena作为通讯平台,代理商可以通过该平台交流从他们自己的数据集中获取的个人知识。我们通过实验证明,MALA可以获取共享和约定的知识库,并且可以提高关联规则挖掘的性能。

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