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Prior-based bayesian pairwise ranking for one-class collaborative filtering

机译:基于先前的贝叶斯成对排名为单级协同过滤

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摘要

In many real-world applications, only user-item interactions (one-class feedback) can be observed. The recommendation methods have been studied for personalized ranking with one-class feedback in recent years. Pairwise ranking methods have been widely used for dealing with the one-class problem with the assumption that users prefer their observed items over unobserved items. However, existing some items that users have not seen yet. It is unsuitable for treating all unobserved items of the user as negative feed-back. In this paper, we propose a Prior-based Bayesian Pairwise Ranking (PBPR) model, which relaxes the simple pairwise preference assumption in previous works by further considering the pairwise preference between two unobserved items. Moreover, we calculate users & rsquo; potential preference scores on unobserved items, i.e., prior information, based on historical interactions. The prior information can be used to mea-sure the fine-grained preference difference between any two unobserved items of each user. Through extensive experiments on real-world datasets, we demonstrate the effectiveness of our proposed recom-mendation method.(c) 2021 Elsevier B.V. All rights reserved.
机译:在许多实际应用中,只有用户交互的项目(一类反馈)可以观察到。推荐方法已经研究了近年来一个一流的反馈个性化的排名。成对的排名方法已被广泛用于与一类问题的假设处理用户喜欢他们的观测项目在未观察到的项目。但是,现有的一些项目用户还没有看到。它是不适合治疗用户负反馈的所有未观察到的项目。在本文中,我们提出了一个基于在此之前,两两贝叶斯排名(PBPR)模型,它放宽进一步考虑两种不可观测的项目之间的成对偏好在以前的作品中简单的配对偏好的假设。此外,我们计算用户和rsquo的;上未观察到的物品,即,先验信息的基础上,历史交互潜在偏好分数。先验信息可用于MEA-确保每个用户的任意两个未观察到的项之间的细粒度偏好差异。通过对现实世界的数据集大量的实验,我们证明我们提出的中建议mendation方法的有效性。版权所有(C)2021爱思唯尔B.V.所有权利。

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