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A Multi-Trans Matrix Factorization Model With Improved Time Weight in Temporal Recommender Systems

机译:一种多跨矩阵分解模型,具有改进时间重量的时间推荐系统

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摘要

In real-world recommender systems, users' interest and products' characteristics tend to go through a distinct series of changes over time. Thus, designing a recommender system that can simultaneously track the temporal dynamics of both drifts becomes a significant task. However, most of the existing temporal recommender systems only focus on users' dynamics, ignoring changes in products' characteristics. In this study, we propose a Multi-Trans matrix factorization (MTMF) model with improved time weight to capture temporal dynamics. Firstly, we introduce a personalized time weight that combines the forgetting curve and item similarity to reduce the impact of outdated information and retain the influence of users' stable preferences. Then, we model user and item dynamics by learning the multiple transitions at the userfactor and factor-item latent space between the ongoing time period and all past time periods. Accordingly, we formulate a joint objective function and take a gradient-based alternating optimization algorithm to solve this joint problem. Experimental results on historical datasets MovieLens show that the recommendation accuracy of MTMF with improved time weight is superior to the existing temporal recommendation methods.
机译:在现实世界推荐系统中,用户的兴趣和产品的特性往往会随着时间的推移通过一个不同的一系列变化。因此,设计可以同时跟踪两个漂移的时间动态的推荐系统成为重要任务。但是,大多数现有的时间推荐系统仅关注用户的动态,忽略产品的变化。在这项研究中,我们提出了一种多转矩阵分解(MTMF)模型,其具有改进的时间权重以捕获时间动态。首先,我们引入了个性化的时间重量,这些时间重量结合了遗忘曲线和项目相似性,以减少过时信息的影响并保留用户稳定偏好的影响。然后,我们通过在持续的时间段和所有过去的时间段之间学习userfactor和因子项潜空间的多个转换来模拟用户和项目动态。因此,我们制定联合目标函数,并采用基于梯度的交替优化算法来解决这个联合问题。历史数据集Movielens的实验结果表明,MTMF具有改善的时间重量的推荐准确性优于现有的时间推荐方法。

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