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Latent based temporal optimization approach for improving the performance of collaborative filtering

机译:基于潜在的时间优化方法用于提高协同滤波性能

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摘要

Recommendation systems suggest peculiar products to customers based on their past ratings, preferences, and interests. These systems typically utilize collaborative filtering (CF) to analyze customers’ ratings for products within the rating matrix. CF suffers from the sparsity problem because a large number of rating grades are not accurately determined. Various prediction approaches have been used to solve this problem by learning its latent and temporal factors. A few other challenges such as latent feedback learning, customers’ drifting interests, overfitting, and the popularity decay of products over time have also been addressed. Existing works have typically deployed either short or long temporal representation for addressing the recommendation system issues. Although each effort improves on the accuracy of its respective benchmark, an integrative solution that could address all the problems without trading off its accuracy is needed. Thus, this paper presents a Latent-based Temporal Optimization (LTO) approach to improve the prediction accuracy of CF by learning the past attitudes of users and their interests over time. Experimental results show that the LTO approach efficiently improves the prediction accuracy of CF compared to the benchmark schemes.
机译:推荐系统根据其过去的评级,偏好和利益,为客户提出了特殊的产品。这些系统通常利用协作滤波(CF)来分析客户在评级矩阵内的产品的评级。 CF遭受稀疏问题,因为没有准确地确定大量评级等级。通过学习其潜在和时间因素来解决各种预测方法来解决这个问题。还有一些其他挑战,如潜伏的反馈学习,客户漂移的兴趣,过度装备以及随着时间的推移的普及和流行衰减。现有工作通常部署了短期或长时间表示,以解决推荐系统问题。虽然各种努力提高了其各自基准的准确性,但需要一种可在不交易其准确性的情况下解决所有问题的综合解决方案。因此,本文介绍了基于潜在的时间优化(LTO)方法,以通过学习过去的用户和它们随着时间的推移来提高CF的预测准确性。实验结果表明,与基准方案相比,LTO方法有效地提高了CF的预测准确性。

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