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Improving One-Class Collaborative Filtering via Ranking-Based Implicit Regularizer

机译:通过基于排名的隐式规范器改进单级协同滤波

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One-class collaborative filtering (OCCF) problems are vital in many applications of recommender systems, such as news and music recommendation, but suffers from sparsity issues and lacks negative examples. To address this problem, the state-of-the-arts assigned smaller weights to unobserved samples and performed low-rank approximation. However, the ground-truth ratings of unobserved samples are usually set to zero but ill-defined. In this paper, we propose a ranking-based implicit regularizer and provide a new general framework for OCCF, to avert the ground-truth ratings of unobserved samples. We then exploit it to regularize a ranking-based loss function and design efficient optimization algorithms to learn model parameters. Finally, we evaluate them on three real-world datasets. The results show that the proposed regularizer significantly improves ranking-based algorithms and that the proposed framework outperforms the state-of-the-art OCCF algorithms.
机译:一流的协作过滤(OCCF)问题在推荐系统的许多应用中至关重要,例如新闻和音乐推荐,但遭受稀疏问题并缺乏否定例子。 为了解决这个问题,最先进的最先进的权重,可以向未观察的样本分配,并执行低秩近似。 然而,未观察样本的地面真理评级通常设定为零但不明显。 在本文中,我们提出了一种基于排名的隐式规范化器,并为OCCF提供了一个新的一般框架,以避免未观察样本的地面真理评级。 然后,我们利用它来规范基于排名的损失函数和设计有效的优化算法来学习模型参数。 最后,我们在三个现实世界数据集中评估它们。 结果表明,该规范器显着改善了基于排名的算法,并且所提出的框架优于最先进的OCCF算法。

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