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arxiv: 1906.01150 · v1 · pith:MS7GKKGDnew · submitted 2019-06-04 · 💻 cs.LG · stat.ML

Breaking Inter-Layer Co-Adaptation by Classifier Anonymization

classification 💻 cs.LG stat.ML
keywords classifierfeatureco-adaptationextractoroptimizationanonymizationconditionsdistribution
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This study addresses an issue of co-adaptation between a feature extractor and a classifier in a neural network. A naive joint optimization of a feature extractor and a classifier often brings situations in which an excessively complex feature distribution adapted to a very specific classifier degrades the test performance. We introduce a method called Feature-extractor Optimization through Classifier Anonymization (FOCA), which is designed to avoid an explicit co-adaptation between a feature extractor and a particular classifier by using many randomly-generated, weak classifiers during optimization. We put forth a mathematical proposition that states the FOCA features form a point-like distribution within the same class in a class-separable fashion under special conditions. Real-data experiments under more general conditions provide supportive evidences.

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