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ImWalkMF: Joint matrix factorization and implicit walk integrative learning for recommendation

机译:ImWalkMF:联合矩阵分解和隐式步行综合学习的推荐

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Data sparsity and cold-start problems are prevalent in recommender systems. To address such problems, both the observable explicit social information (e.g., user-user trust connections) and the inferable implicit correlations (e.g., implicit neighbors computed by similarity measurement) have been introduced to complement user-item ratings data for improving the performances of traditional model-based recommendation algorithms such as matrix factorization. Although effective, (1) the utilization of the explicit user-user social relationships suffers from the weakness of unavailability in real systems such as Netflix or the issue of sparse observable content like 0.03% trust density in Epinions, thus there is no or little explicit social information that can be employed to improve baseline model in real applications; (2) the current similarity measurement approaches focus on inferring implicit correlations between a user (item) and their direct neighbors or top-k similar neighbors based on user-item ratings bipartite network, so that they fail to comprehensively unfold the indirect potential relationships among users and items. To solve these issues regarding both explicit/implicit social recommendation algorithms, we design a joint model of matrix factorization and implicit walk integrative learning, i.e., ImWalkMF, which only uses explicit ratings information yet models both direct rating feedbacks and multiple direct/indirect implicit correlations among users and items from a random walk perspective. We further propose a combined strategy for training two independent components in the proposed model based on sampling. The experimental results on two real-world sparse datasets demonstrate that ImWalkMF outperforms the traditional regularized/probabilistic matrix factorization models as well as other competitive baselines that utilize explicit/implicit social information.
机译:推荐系统中普遍存在数据稀疏和冷启动问题。为了解决这些问题,已经引入了可观察的显式社交信息(例如,用户-用户信任连接)和可推断的隐式相关性(例如,通过相似性度量计算的隐式邻居)来补充用户项目评分数据,以改善传统的基于模型的推荐算法,例如矩阵分解。尽管有效,但(1)利用显式的用户-用户社会关系受到诸如Netflix之类的真实系统中不可用或Epinions中信任度为0.03%的可观察内容稀疏等问题的困扰,因此根本没有或很少可以用于改善实际应用中的基线模型的显式社交信息; (2)当前的相似性度量方法着重于基于用户项目评级双向网络来推断用户(项目)与其直接邻居或前k个相似邻居之间的隐式相关性,从而使他们无法全面展现用户之间的间接潜在关系。用户和项目。为了解决有关显式/隐式社交推荐算法的这些问题,我们设计了矩阵分解和隐式步行整合学习的联合模型,即ImWalkMF,它仅使用显式评级信息,同时对直接评级反馈和多个直接/间接隐式相关进行建模从随机游走的角度来看用户和物品。我们进一步提出了一种组合策略,用于在抽样的基础上训练所提出模型中的两个独立组件。在两个现实世界的稀疏数据集上的实验结果表明,ImWalkMF优于传统的正则化/概率矩阵分解模型以及使用显式/隐式社会信息的其他竞争性基准。

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