2021
DOI: 10.48550/arxiv.2106.08624
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Structured DropConnect for Uncertainty Inference in Image Classification

Abstract: With the complexity of the network structure, uncertainty inference has become an important task to improve classification accuracy for artificial intelligence systems. For image classification tasks, we propose a structured DropConnect (SDC) framework to model the output of a deep neural network by a Dirichlet distribution. We introduce a DropConnect strategy on weights in the fully connected layers during training. In test, we split the network into several sub-networks, and then model the Dirichlet distribu… Show more

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