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A novel approach based on multi-view reliability measures to alleviate data sparsity in recommender systems

机译:一种基于多视图可靠性措施来缓解推荐系统中数据稀疏性的新方法

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摘要

Recommender systems are intelligent programs to suggest relevant contents to users according to their interests which are widely expressed as numerical ratings. Collaborative filtering is an important type of recommender systems which has established itself as the principal means of recommending items. However, collaborative filtering suffers from two important problems including cold start and data sparsity. These problems make it difficult to accurately compute user similarity and hence to find reliable similar users. To deal with these problems, a novel recommender method is proposed in this paper which is based on three different views of reliability measures. For the first view, a user-based reliability measure is proposed to evaluate the performance of users' rating profiles in predicting unseen items. Then, a novel mechanism is proposed to enhance the rating profiles with low quality by adding a number of reliable ratings. To this end, an item-based reliability measure is proposed as the second view of the reliability measures and then a number of items with highest reliability values are selected to add into the target rating profile. Then, similarity values between users and also initial ratings of unseen items are calculated using the enhanced users' rating profiles. Finally, a rating-based reliability measure is used as the third view of the reliability measures to evaluate the initial predicted ratings and a novel mechanism is proposed to recalculate unreliable predicted ratings. Experimental results using four well-known datasets indicate that the proposed method significantly outperforms other recommender methods.
机译:推荐系统是智能计划,以根据其兴趣提出用户对用户的相关内容,这些内容被广泛表示为数值评级。协作过滤是一类重要的推荐系统,已成为推荐物品的主要手段。然而,协同过滤遭受两个重要问题,包括冷启动和数据稀疏性。这些问题使得难以准确地计算用户相似性,从而可以找到可靠的类似用户。为了处理这些问题,本文提出了一种新颖的推荐方法,基于可靠性措施的三种不同视图。对于第一个视图,提出了一种基于用户的可靠性度量来评估用户评级配置文件在预测未完成项目中的性能。然后,提出了一种新的机制来通过添加许多可靠的额定来增强具有低质量的评级曲线。为此,提出了一种基于项目的可靠性度量作为可靠性措施的第二视图,然后选择具有最高可靠性值的多个项目来添加到目标额定值轮廓中。然后,使用增强的用户的评级配置文件计算用户之间的相似性值以及未经检验项的初始评估。最后,基于额定值的可靠性测量用作评估初始预测评级的可靠性措施的第三视图,并且提出了一种新机制来重新计算不可靠的预测评级。使用四个众所周知的数据集的实验结果表明所提出的方法显着优于其他推荐方法。

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