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Real-time Attention Based Look-alike Model for Recommender System

机译:基于立即注意的基于Look-相似的推荐系统模型

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Recently, deep learning models play more and more important roles in contents recommender systems. However, although the performance of recommendations is greatly improved, the "Matthew effect" becomes increasingly evident. While the head contents get more and more popular, many competitive long-tail contents are difficult to achieve timely exposure because of lacking behavior features. This issue has badly impacted the quality and diversity of recommendations. To solve this problem, look-alike algorithm is a good choice to extend audience for high quality long-tail contents. But the traditional look-alike models which widely used in online advertising are not suitable for recommender systems because of the strict requirement of both real-time and effectiveness. This paper introduces a real-time attention based look-alike model (RALM) for recommender systems, which tackles the challenge of conflict between real-time and effectiveness. RALM realizes real-time lookalike audience extension benefiting from seeds-to-user similarity prediction and improves the effectiveness through optimizing user representation learning and look-alike learning modeling. For user representation learning, we propose a novel neural network structure named attention merge layer to replace the concatenation layer, which significantly improves the expressive ability of multi-fields feature learning. On the other hand, considering the various members of seeds, we design global attention unit and local attention unit to learn robust and adaptive seeds representation with respect to a certain target user. At last, we introduce seeds clustering mechanism which not only reduces the time complexity of attention units prediction but also minimizes the loss of seeds information at the same time. According to our experiments, RALM shows superior effectiveness and performance than popular lookalike models. RALM has been successfully deployed in "Top Stories" Recommender System of WeChat, leading to great improvement on diversity and quality of recommendations. As far as we know, this is the first real-time look-alike model applied in recommender systems.
机译:最近,深度学习模型在目录推荐系统中发挥了越来越重要的角色。然而,虽然建议的表现大大提高,但“马修效应”变得越来越明显。虽然头部内容越来越受欢迎,但由于缺乏行为特征,许多竞争性的长尾内容难以及时曝光。这个问题严重影响了建议的质量和多样性。为了解决这个问题,看起来很相似的算法是扩展高质量的长尾内容的观众的良好选择。但是,广泛用于在线广告的传统外观模型不适合推荐系统,因为严格要求实时和有效性。本文介绍了适用于推荐系统的实时关注的外观模型(RALM),该系统在实时和有效性之间解决冲突的挑战。 RALM实现了从种子到用户相似性预测的实时看法扩展,并通过优化用户表示学习和看起来相似的学习建模来提高效果。对于用户表示学习,我们提出了一种名为注意合并层的新型神经网络结构来更换替代层,这显着提高了多场特征学习的表现力。另一方面,考虑到种子的各种成员,我们设计全球注意力单元和当地的注意单元,以了解某个目标用户的鲁棒和自适应种子表示。最后,我们介绍了种子聚类机制,不仅减少了注意单元预测的时间复杂性,而且同时也会最大限度地减少种子信息的损失。根据我们的实验,RALM表现出优异的效率和性能而不是流行的小型模型。 RALM已成功部署在微信的“顶部故事”推荐系统中,从而彻底改善了建议的多样性和质量。据我们所知,这是应用于推荐系统中的第一个实时视野模型。

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