通过专家和可信赖的代理提高推荐的质量

Fabiana Lorenzi, Mara Abel, S. Loh, André Peres
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引用次数: 7

摘要

在多智能体推荐系统中,智能体能够根据客户的偏好生成推荐。然而,在某些领域,为了撰写推荐,需要特定的知识,而代理可能无法获得这些知识。在这些情况下,代理需要与社区中的其他代理进行通信,以搜索特定的信息来完成推荐。提出了一种基于信任和专家代理的多智能体推荐系统。它的目的是提高代理之间交换信息的质量,因为通信主要发生在可信源之间,希望减少通信负载。同时,代理成为特定类型推荐的专家。该方法在旅游领域通过旅游套餐推荐进行了验证,并进行了实验来说明使用信任分配对专家代理生成的推荐质量的影响。结果证实了直觉,即使用信任机制的专家代理能够提高所提供推荐的质量。
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Enhancing the Quality of Recommendations through Expert and Trusted Agents
In multi-agent recommender systems, agents are able to generate recommendations according to the preferences of the customer. However, in some domains, specific knowledge is required in order to compose a recommendation and this knowledge may be not available for the agent. In these cases, agents need to communicate with other agents in the community searching for the specific information to complete the recommendation. This paper presents a multi-agent recommender system based on trust and expert agents. It aims at improving the quality of the information exchanged among agents because communication will occur primarily with trusted sources in the hope to decrease the communication load. Also, agents become experts in specific types of recommendation. The approach was validate in the tourism domain by means of recommendations of travel packages and experiments were performed to illustrate the impact of using trust assignment in the quality of the recommendations generated by expert agents. Results corroborate the intuition that expert agents that use a trust mechanism are able to increase the quality of recommendation provided.
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