Mining Contextual Knowledge for Context-Aware Recommender Systems

Wenping Zhang, Raymond Y. K. Lau, Xiaohui Tao
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引用次数: 6

Abstract

With the rapid growth of the number of electronic transactions conducted over the Internet, recommender systems have been proposed to provide consumers with personalized product recommendations. A hybrid symbolic and quantitative approach for recommender agent systems is promising because it can improve the recommender agents' prediction effectiveness, learning autonomy, and explanatory power. However, recommender agents must be empowered with sufficient domain-specific knowledge so as to reason about specific recommendation contexts to improve their prediction accuracy. This paper illustrates a novel text mining method which is applied to automatically extract domain-specific knowledge for context-aware recommendations. According to our preliminary experiments, recommender agents empowered by the text mining mechanism outperform the agents without text mining capabilities. To our best knowledge, this is the first study of integrating text mining method into a symbolic logical framework for the development of recommender agents.
为上下文感知推荐系统挖掘上下文知识
随着互联网上电子交易数量的快速增长,人们提出了推荐系统,为消费者提供个性化的产品推荐。一种用于推荐代理系统的混合符号和定量方法是有前途的,因为它可以提高推荐代理的预测有效性、学习自主性和解释力。但是,推荐代理必须具有足够的领域特定知识,以便对特定的推荐上下文进行推理,以提高其预测准确性。本文提出了一种新的文本挖掘方法,用于自动提取特定领域的知识,用于上下文感知推荐。根据我们的初步实验,通过文本挖掘机制授权的推荐代理比没有文本挖掘功能的代理表现更好。据我们所知,这是第一个将文本挖掘方法集成到用于开发推荐代理的符号逻辑框架中的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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