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arxiv: 1910.00965 · v4 · pith:3ZQ2RM2A · submitted 2019-10-02 · cs.LG · stat.ML

Learning Maximally Predictive Prototypes in Multiple Instance Learning

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classification cs.LG stat.ML
keywords learningclassifierfeatureinstancemaximallymultiplepredictiveprototypes
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In this work, we propose a simple model that provides permutation invariant maximally predictive prototype generator from a given dataset, which leads to interpretability of the solution and concrete insights to the nature and the solution of a problem. Our aim is to find out prototypes in the feature space to map the collection of instances (i.e. bags) to a distance feature space and simultaneously learn a linear classifier for multiple instance learning (MIL). Our experiments on classical MIL benchmark datasets demonstrate that proposed framework is an accurate and efficient classifier compared to the existing approaches.

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