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A Hybrid Multi-criteria Semantic-Enhanced Collaborative Filtering Approach for Personalized Recommendations

机译:个性化推荐的混合多准则语义增强协作过滤方法

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Recommender systems aim to assist web users to find only relevant information to their needs rather than an undifferentiated mass of information. Collaborative filtering (CF) techniques are probably the most popular and widely adopted techniques in recommender systems. Despite of their success in various applications, CF-based techniques still encounter two major limitations, namely sparsity and cold-start problems. More recently, semantic information of items has been successfully used in recommender systems to alleviate such problems. Moreover, the incorporation of multi-criteria ratings in recommender systems can help to produce more accurate recommendations. Thereby, in this paper, we propose a hybrid Multi-Criteria Semantic-enhanced CF (MC-SeCF) approach. The MC-SeCF approach integrates the enhanced MC item-based CF and the item-based semantic filtering approaches to alleviate current limitations of the item-based CF techniques. Experimental results demonstrate the effectiveness of the proposed MC-SeCF approach in terms of improving accuracy, as well as in dealing with very sparse data sets or cold-start items compared to benchmark item-based CF techniques.
机译:推荐系统旨在帮助网络用户仅找到与其需求相关的信息,而不是无差别的信息。协作过滤(CF)技术可能是推荐系统中最流行和广泛采用的技术。尽管基于CF的技术在各种应用中取得了成功,但它们仍然遇到两个主要局限性,即稀疏性和冷启动问题。最近,项目的语义信息已经成功地用于推荐系统中,以减轻这种问题。此外,在推荐系统中纳入多标准评分可以帮助产生更准确的推荐。因此,在本文中,我们提出了一种混合的多标准语义增强CF(MC-SeCF)方法。 MC-SeCF方法将增强的MC基于项目的CF和基于项目的语义过滤方法集成在一起,以减轻基于项目的CF技术的当前限制。实验结果证明,与基于基准项目的CF技术相比,提出的MC-SeCF方法在提高准确性以及处理非常稀疏的数据集或冷启动项目方面是有效的。

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