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Kernel Self-Attention in Deep Multiple Instance Learning

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arxiv 2005.12991 v2 pith:AN4CRIFS submitted 2020-05-25 cs.LG cs.CVstat.ML

Kernel Self-Attention in Deep Multiple Instance Learning

classification cs.LG cs.CVstat.ML
keywords instanceslabelself-attentionaggregationdependenciesimageinstancekernel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Not all supervised learning problems are described by a pair of a fixed-size input tensor and a label. In some cases, especially in medical image analysis, a label corresponds to a bag of instances (e.g. image patches), and to classify such bag, aggregation of information from all of the instances is needed. There have been several attempts to create a model working with a bag of instances, however, they are assuming that there are no dependencies within the bag and the label is connected to at least one instance. In this work, we introduce Self-Attention Attention-based MIL Pooling (SA-AbMILP) aggregation operation to account for the dependencies between instances. We conduct several experiments on MNIST, histological, microbiological, and retinal databases to show that SA-AbMILP performs better than other models. Additionally, we investigate kernel variations of Self-Attention and their influence on the results.

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