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A Pre-Filtering Approach for Incorporating Contextual Information Into Deep Learning Based Recommender Systems

机译:一种用于将上下文信息结合到基于深度学习的推荐系统的预过滤方法

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摘要

Depending on the Internet as the main source of information regarding all aspects of our life is becoming a trend. People seek relevant information, suggestions, and recommendations in an overloaded online world and through social ties regarding their daily activities, including places to visit and restaurants to try new food. The wide variety of choices that are available online causes information overloading, which thereby complicates the selection process. Traditional recommender systems are mostly dependent on a conventional model that is based on user-item-rating interaction without considering contextual information. We claim that new generations of recommendation systems able to exploit context in an innovative and efficient way is important and may statistically yield more significant rating predictions. However, only few research works have focused on how to effectively and efficiently exploit context metadata in Deep Learning (DL)-based recommendations. The main reason lies, perhaps most significantly, in the fact that most current DL algorithms are not intrinsically designed to incorporate contextual tags. In this paper, we provide a significant contribution for filling this gap by designing a hybrid algorithm that retrofits and repurposes a pre-filtering contextual incorporation method and feeds the new dimension to a DL-based neural collaborative filtering method, thus preserving and recovering the benefits of both without their limitations. The paper also reports quantitative results that show that our method outperforms the baselines by statistically significant margins.
机译:根据互联网作为关于我们生命的各个方面的主要信息来源正在成为一个趋势。人们在在线世界中寻求相关的信息,建议和建议,并通过关于日常活动的社交关系,包括访问和餐馆的地方,以尝试新的食物。在线提供的各种选择会导致信息重载,从而使选择过程复杂化。传统推荐系统主要取决于传统模型,该模型基于用户项评级交互而不考虑上下文信息。我们声称,新一代推荐系统能够以创新和有效的方式利用上下文是重要的,并且可能在统计上产生更大的评级预测。但是,只有很少的研究作品专注于如何在深度学习(DL)的建议中有效和有效地利用上下文元数据。主要原因在于,最重要的是,在大多数当前DL算法没有本质上设计以合并上下文标签。在本文中,我们通过设计一种混合算法来提供改进和修复预过滤的上下文融合方法并将新尺寸馈送到基于DL的神经协作过滤方法,从而提供了重要的贡献,从而保持和恢复这些效益两者都没有他们的局限性。本文还报告了定量结果,表明我们的方法通过统计上显着的边缘来占据基线。

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