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A context-aware recommender method based on text and opinion mining

机译:基于文本和意见挖掘的背景知识推荐方法

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A recommender system is an information filtering technology that can be used to recommend items that may be of interest to users. Additionally, there are the context-aware recommender systems that consider contextual information to generate the recommendations. Reviews can provide relevant information that can be used by recommender systems, including contextual and opinion information. In a previous work, we proposed a context-aware recommendation method based on text mining (CARM-TM). The method includes two techniques to extract context from reviews:CIET.5(embed), a technique based on word embeddings; andRulesContext, a technique based on association rules. In this work, we have extended our previous method by includingCEOM, a new technique which extracts context by using aspect-based opinions. We call our extension of CARM-TOM (context-aware recommendation method based on text and opinion mining). To generate recommendations, our method makes use of the CAMF algorithm, a context-aware recommender based on matrix factorization. To evaluate CARM-TOM, we ran an extensive set of experiments in a dataset about restaurants, comparing CARM-TOM against the MF algorithm, an uncontextual recommender system based on matrix factorization; and against a context extraction method proposed in literature. The empirical results strongly indicate that our method is able to improve a context-aware recommender system.
机译:推荐系统是一种信息过滤技术,可用于推荐用户可能感兴趣的项目。此外,还有上下文感知的推荐系统,它考虑生成建议的上下文信息。评论可以提供推荐人系统可以使用的相关信息,包括上下文和意见信息。在以前的工作中,我们提出了一种基于文本挖掘(Carm-T​​M)的背景知识推荐方法。该方法包括两种用于从评论中提取上下文的技术:Ciet.5(嵌入),基于Word Embeddings的技术; Andrulescontext,一种基于关联规则的技术。在这项工作中,我们通过包括通过基于方面的意见来提取上下文的新技术来扩展了先前的方法。我们致电我们的Carm-T​​om(基于文本和意见挖掘的背景推荐方法)。为了生成建议,我们的方法利用CAMF算法,一种基于矩阵分解的上下文感知推荐。为了评估Carm-T​​om,我们在大量餐厅进行了广泛的实验,将Carm-T​​om与MF算法相比,基于矩阵分解的不可能推荐系统;并反对文献中提出的上下文提取方法。经验结果强烈表示我们的方法能够改进上下文感知的推荐系统。

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