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ON GENERALIZED MULTIPLE-INSTANCE LEARNING

Stephen Scott, Jun Zhang, Joshua W. Brown

Year
2005
Citations
68

Abstract

We describe a generalisation of the multiple-instance learning model in which a bag's label is not based on a single instance's proximity to a single target point. Rather, a bag is positive if and only if it contains a collection of instances, each near one of a set of target points. We then adapt a learning-theoretic algorithm for learning in this model and present empirical results on data from robot vision, content-based image retrieval, and protein sequence identification.

Keywords

Computer scienceArtificial intelligenceMachine learningInstance-based learningSet (abstract data type)Sequence (biology)Identification (biology)Point (geometry)Pattern recognition (psychology)Semi-supervised learning

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