Towards Solving the Cold Start Transition Problem in Dynamic Recommender Systems

Cheng Luo, Xiongcai Cai, N. Chowdhury
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Abstract

The ability to model the tendency of both user preferences and product attractiveness is vital to the success of recommender systems, which is not covered well in the literature. It is challenging to learn a personalized tendency for recommender systems since users often leave feedback on an item only once and on only one period, i.e. The cold start transition problem. To tackle such a problem, we develop a novel probabilistic personalized and item-wise temporal model without prior assumptions on the structure of the dynamics, which solves the cold start transition problem by collaborative tendencies. The proposed method is evaluated on two benchmark datasets for recommender systems. The experimental results demonstrate that our proposed models significantly outperform a variety of existing methods for the top-k recommendation task.
动态推荐系统中冷启动过渡问题的解决
对用户偏好和产品吸引力的趋势进行建模的能力对推荐系统的成功至关重要,这在文献中没有得到很好的覆盖。学习推荐系统的个性化倾向是具有挑战性的,因为用户通常只在一个时期对一个项目留下一次反馈,即冷启动过渡问题。为了解决这一问题,我们开发了一种新的概率个性化和逐项时间模型,该模型不需要对动力学结构进行预先假设,该模型通过协作倾向解决了冷启动过渡问题。在推荐系统的两个基准数据集上对所提出的方法进行了评估。实验结果表明,我们提出的模型在top-k推荐任务上的表现明显优于现有的各种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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