首页> 外文期刊>Arabian Journal for Science and Engineering. Section A, Sciences >A Multi-criteria Collaborative Filtering Recommender System Using Learning-to-Rank and Rank Aggregation
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A Multi-criteria Collaborative Filtering Recommender System Using Learning-to-Rank and Rank Aggregation

机译:使用等级到等级和等级聚合的多准则协同过滤推荐系统

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摘要

Recommender system suggests a top-N list from unseen items for its users through a prediction or a ranking order process. Fromthe recommendation perspective, the item’s order in the generated list is more important than its predicted rating. Moreover,finding the top-N list for a multi-criteria recommendation is a challenging problem as we have many criterions for each item.One can find the average over all criteria; however, this requires a score from each criterion and hence a compensation effect willoccur. This resembles many prediction-based recommendation systems working in parallel. Alternately, this paper proposes athree-step hybrid ranking order system for finding the top-N list for the multi-criteria recommendation system. The first stepdecomposes the multi-criteria user-item matrix into many single-rating user-item matrices while the second step finds partialrankedlists for each item using a learning-to-rank method. This allows us to reflect the interest of the user for each criterionand then pass on this information for the next stage. The last step aggregates the partial-ranked lists into a global-rankedlist using a ranking aggregation method. This will reduce the processing time and improve the recommendation quality byrepresenting the user preference for each criterion. Three different sets of experiments are conducted on Yahoo!Movie dataset,and the results show that the proposed multi-criteria-ranking approach outperforms both the traditional no-ranking item-basedcollaborative recommendation and single-criteria-ranking approach that uses two popular learning-to-rank methods.
机译:推荐系统通过预测或排名顺序过程为用户建议未见项目的前N个列表。从推荐的角度来看,该项目在生成的列表中的顺序比其预计的等级重要。此外,要找到多准则建议的前N名列表是一个具有挑战性的问题,因为我们对每一项都有很多准则。但是,这需要每个标准的得分,因此会产生补偿效果。这类似于许多并行工作的基于预测的推荐系统。另外,本文提出了一种三步混合排序系统,用于查找多准则推荐系统的前N个列表。第一步将多准则用户项矩阵分解为许多单评分用户项矩阵,而第二步使用“按等级学习”方法为每个项目找到部分排名列表。这使我们能够反映用户对每个标准的兴趣,然后将此信息传递给下一阶段。最后一步,使用排名聚合方法将部分排名列表聚合为全局排名列表。通过代表每个标准的用户偏好,这将减少处理时间并提高推荐质量。在Yahoo!Movie数据集上进行了三组不同的实验,结果表明,所提出的多标准排名方法优于传统的基于非排名项目的协作推荐和单准则排名方法,后者使用两种流行的学习方法-排名方法。

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