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Group Recommender System Based on Rank Aggregation - An Evolutionary Approach

机译:基于等级聚集的组推荐系统 - 一种进化方法

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Recommender systems (RSs) have emerged as a remarkable tool that very effectively handle information overload problem caused by unprecedented growth of resources available on the www. RSs research has mainly focused on algorithms for recommending items for individual users. However, Group recommender systems (GRSs) provide recommendations to group of persons i.e. they take all individual group members' preferences into account and try to satisfy them optimally. The well known Kemeny optimal aggregation generates an aggregated list that minimizes the average Kendall tau Distance from the input lists; however such aggregation is NP-Hard. In this work, we design and develop a novel approach to GRS based on Kemeny optimal aggregation using genetic algorithm (GA). We have employed edge recombination operator (ERO) and scramble sub-list mutation as genetic sequencing operators. Experimental results clearly demonstrate that proposed GA approach to rank aggregation (RA) based GRS, GA-RA-GRS outperforms the well known GRS techniques.
机译:推荐系统(RSS)已成为一个显着的工具,非常有效地处理由WWW上可用资源的前所未有的资源增长引起的信息过载问题。 RSS研究主要集中在为各个用户推荐项目的算法。但是,组推荐系统(GRS)向一组人提供建议,即他们考虑所有个人团体成员的偏好,并尝试最佳地满足它们。众所周知的kemeny最佳聚合生成一个聚合列表,最小化了输入列表的平均Kendall Tau距离;然而,这种聚合是NP - 硬。在这项工作中,我们使用遗传算法(GA)基于Kemeny最佳聚集的基于Kemeny最优聚集的GRS的新方法。我们使用边缘重组操作员(ERO)和争夺子列表突变作为遗传测序运营商。实验结果清楚地证明了提出的GA方法是对基于族聚集(RA)的GRS,GA-RA-GRS优于众所周知的GRS技术。

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