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Collaborative filtering embeddings for memory-based recommender systems

机译:基于内存的推荐器系统的协作过滤嵌入

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摘要

Word embeddings techniques have attracted a lot of attention recently due to their effectiveness in different tasks. Inspired by the continuous bag-of-words model, we present prefs2vec, a novel embedding representation of users and items for memory-based recommender systems that rely solely on user-item preferences such as ratings. To improve the performance and prevent overfitting, we use a variant of dropout as regularization, which can leverage existent word2vec implementations. Additionally, we propose a procedure for incremental learning of embeddings that boosts the applicability of our proposal to production scenarios. The experiments show that prefs2vec with a standard memory-based recommender system outperforms all the state-of-the-art baselines in terms of ranking accuracy, diversity, and novelty.
机译:词嵌入技术由于其在不同任务中的有效性,最近引起了很多关注。受连续词袋模型的启发,我们介绍了prefs2vec,这是一种新颖的用户和项的嵌入表示形式,用于基于内存的推荐系统,该系统仅依赖于用户项首选项(例如评分)。为了提高性能并防止过度拟合,我们使用辍学的一种变体作为正则化,可以利用现有的word2vec实现。此外,我们提出了一种渐进式学习嵌入的程序,可以提高我们的提议对生产方案的适用性。实验表明,基于标准内存的推荐系统的prefs2vec在排名准确性,多样性和新颖性方面均优于所有最新基准。

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