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Exact and efficient top-K inference for multi-target prediction by querying separable linear relational models

机译:通过查询可分离的线性关系模型,对多目标预测进行精确有效的top-K推理

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摘要

Many complex multi-target prediction problems that concern large target spaces are characterised by a need for efficient prediction strategies that avoid the computation of predictions for all targets explicitly. Examples of such problems emerge in several subfields of machine learning, such as collaborative filtering, multi-label classification, dyadic prediction and biological network inference. In this article we analyse efficient and exact algorithms for computing the top-K predictions in the above problem settings, using a general class of models that we refer to as separable linear relational models. We show how to use those inference algorithms, which are modifications of well-known information retrieval methods, in a variety of machine learning settings. Furthermore, we study the possibility of scoring items incompletely, while still retaining an exact top-K retrieval. Experimental results in several application domains reveal that the so-called threshold algorithm is very scalable, performing often many orders of magnitude more efficiently than the naive approach.
机译:许多涉及大目标空间的复杂的多目标预测问题的特征是需要有效的预测策略,这些策略应避免明确计算所有目标的预测。在机器学习的多个子领域中出现了此类问题的示例,例如协作过滤,多标签分类,二元预测和生物网络推理。在本文中,我们使用称为可分离线性关系模型的常规模型,分析了在上述问题设置中计算top-K预测的有效且精确的算法。我们展示了如何在各种机器学习设置中使用那些推理算法,这些算法是对已知信息检索方法的修改。此外,我们研究了对项目进行不完整评分的可能性,同时仍保留了精确的top-K检索。在多个应用领域中的实验结果表明,所谓的阈值算法具有很高的可扩展性,通常比幼稚的方法执行效率高出多个数量级。

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