2016
DOI: 10.1007/s10618-016-0456-z
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Exact and efficient top-K inference for multi-target prediction by querying separable linear relational models

Abstract: 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… Show more

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References 45 publications
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