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Ranking-Oriented Collaborative Filtering: A Listwise Approach

机译:面向排名的协作过滤:基于列表的方法

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摘要

CF paradigm that seeks improvement in both accuracy and efficiency in comparison with pairwise CF. In ListCF, each user is represented as a probability distribution of the permutations over rated items based on the Plackett-Luce model, and the similarity between users is measured based on the Kullback--Leibler divergence between their probability distributions over the set of commonly rated items. Given a target user and the most similar users, ListCF directly predicts a total order of items for each user based on similar users’ probability distributions over permutations of the items. Besides, we also reveal insightful connections among pointwise, pairwise, and listwise CF algorithms from the perspective of the matrix representations. In addition, to make our algorithm more scalable and adaptive, we present an incremental algorithm for ListCF, which allows incrementally updating the similarities between users when certain user submits a new rating or updates an existing rating. Extensive experiments on benchmark datasets in comparison with the state-of-the-art approaches demonstrate the promise of our approach.
机译:与成对CF相比,CF范例寻求准确性和效率上的改进。在ListCF中,每个用户都表示为基于Plackett-Luce模型的额定项目上排列的概率分布,并且基于Kullback-Leibler在相同额定水平上的概率分布之间的方差来衡量用户之间的相似性项目。给定目标用户和最相似的用户,ListCF根据相似用户在项目排列上的概率分布,直接预测每个用户的项目总顺序。此外,我们还从矩阵表示的角度揭示了点对,逐对和按列表CF算法之间的深入联系。另外,为了使我们的算法更具可扩展性和适应性,我们提出了ListCF的增量算法,当某些用户提交新评分或更新现有评分时,该算法允许增量更新用户之间的相似性。与最新方法相比,对基准数据集进行了广泛的实验,证明了我们方法的前景。

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