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Stochastically Robust Personalized Ranking for LSH Recommendation Retrieval

机译:用于LSH推荐检索的随机强大的个性化排名

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Locality Sensitive Hashing (LSH) has become one of the most commonly used approximate nearest neighbor search techniques to avoid the prohibitive cost of scanning through all data points. For recommender systems, LSH achieves efficient recommendation retrieval by encoding user and item vectors into binary hash codes, reducing the cost of exhaustively examining all the item vectors to identify the top-k items. However, conventional matrix factorization models may suffer from performance degeneration caused by randomly-drawn LSH hash functions, directly affecting the ultimate quality of the recommendations. In this paper, we propose a framework named SRPR, which factors in the stochasticity of LSH hash functions when learning real-valued user and item latent vectors, eventually improving the recommendation accuracy after LSH indexing. Experiments on publicly available datasets show that the proposed framework not only effectively learns user's preferences for prediction, but also achieves high compatibility with LSH stochasticity, producing superior post-LSH indexing performances as compared to state-of-the-art baselines.
机译:地区敏感散列(LSH)已成为最常用的近似最近邻搜索技术之一,以避免扫描所有数据点的扫描成本。对于推荐系统,LSH通过将用户和项目向量进行编码为二进制哈希代码来实现高效的推荐检索,从而降低了令人遗憾地检查所有项目向量以识别顶-K项的成本。然而,传统的矩阵分解模型可能遭受由随机绘制的LSH散列函数引起的性能变性,直接影响建议的最终质量。在本文中,我们提出了一个名为SRPR的框架,在学习真实价值的用户和项目潜在的矢量时,LSH散列函数的随机性的因素,最终提高了LSH索引后的推荐准确性。公开可用数据集的实验表明,拟议的框架不仅有效地学习了用户的预测偏好,而且还达到了LSH随机性的高兼容性,与最先进的基线相比,产生优异的LSH索引性能。

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