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Latent Structured Ranking

机译:潜在结构化排名

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摘要

Many latent (factorized) models have been proposed for recommendation tasks like collaborative filtering and for ranking tasks like document or image retrieval and annotation. Common to all those methods is that during inference the items are scored independently by their similarity to the query in the latent embedding space. The structure of the ranked list (i.e. considering the set of items returned as a whole) is not taken into account. This can be a problem because the set of top predictions can be either too diverse (contain results that contradict each other) or are not diverse enough. In this paper we introduce a method for learning latent structured rankings that improves over existing methods by providing the right blend of predictions at the top of the ranked list. Particular emphasis is put on making this method scalable. Empirical results on large scale image annotation and music recommendation tasks show improvements over existing approaches.
机译:已经提出了许多潜在(分解)模型用于推荐任务(例如协作过滤)以及用于对任务进行排名(例如文档或图像检索和注释)。所有这些方法的共同点是,在推理过程中,通过项与潜在嵌入空间中查询的相似性对项进行独立评分。未考虑排名列表的结构(即考虑整体返回的项目集)。这可能是一个问题,因为顶级预测的集合可能过于多样化(包含相互矛盾的结果),也可能不够多样化。在本文中,我们介绍了一种用于学习潜在结构化排名的方法,该方法通过在排名列表的顶部提供正确的预测混合,从而对现有方法进行了改进。特别强调使这种方法可扩展。大规模图像注释和音乐推荐任务的经验结果表明,与现有方法相比有所改进。

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