Latent Factor Models Fusing User & Item Attributes

Huiwei Wang, Yong Zhao, Qingya Wang, Bo Zhou
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引用次数: 1

Abstract

Data sparsity, cold-start, and suboptimal recommendation for local users or items have been recognized as the most crucial three challenges in the latent factor model (LFM) for recommender systems. This paper proposes an approach that integrates the User-Item attributes into the classical LFM named UILFM focusing on above challenges. First, for the problem of data sparsity and cold-start, we develop an online learning algorithm to update the weights of user or item attribute for identifying the importance of different attributes. By aggregating the users and items based on their similar attributes, we obtain the local neighbor group which makes it possible for recom- mender to estimate some missing ratings based on adjacent user's ratings towards items and adjacent item's ratings. By introducing the convex mixed-parameters, we combine the estimate ratings with the classical LFM to predict the missing entries of the high-dimensional and sparse (HiDS) matrix for further closing the true ratings and reducing matrix sparsity. Second, for the suboptimal recommendation problem, we propose a new matrix filling (for missing ratings) method based on positive and negative samples, in which when the sparsity of the HiDS matrix is reduced to a threshold, the classical LFM will dominate the filling procedure, instead, the prediction based on neighbors' ratings remains a domination role. This method elegantly solves the suboptimal recommendation problem that the ratings of partial users are extremely sparse and the number of ratings per user are unbalanced. The proposed algorithm is tested by the MovieLens dataset, the results show that it promotes the recommendation accuracy compared with the classical LFM algorithm and the dimensionality reduction approaches as well as the collaborative filtering (CF) algorithms.
融合用户和项目属性的潜在因素模型
数据稀疏性、冷启动和对本地用户或项目的次优推荐被认为是推荐系统潜在因素模型(LFM)中最关键的三个挑战。针对上述问题,本文提出了一种将User-Item属性集成到经典LFM中的方法,即UILFM。首先,针对数据稀疏性和冷启动问题,我们开发了一种在线学习算法来更新用户或项目属性的权重,以识别不同属性的重要性。通过对用户和物品的相似属性进行聚合,得到局部邻居组,使得推荐修复器可以根据相邻用户对物品的评级和相邻物品的评级来估计缺失评级。通过引入凸混合参数,将估计评级与经典LFM相结合,预测高维稀疏(HiDS)矩阵的缺失条目,进一步接近真实评级,降低矩阵稀疏度。其次,针对次优推荐问题,提出了一种新的基于正、负样本的矩阵填充(缺失评级)方法,当HiDS矩阵的稀疏度降至阈值时,经典LFM将主导填充过程,而基于邻居评级的预测仍然占主导地位。该方法很好地解决了部分用户评分极度稀疏和每个用户评分数量不平衡的次优推荐问题。通过MovieLens数据集对该算法进行了测试,结果表明,与经典的LFM算法、降维方法以及协同过滤(CF)算法相比,该算法提高了推荐精度。
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