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Structured DropConnect for Uncertainty Inference in Image Classification

16 June 2021
Wenqing Zheng
Jiyang Xie
Weidong Liu
Zhanyu Ma
    UQCV
    BDL
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Abstract

With the complexity of the network structure, uncertainty inference has become an important task to improve the 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 distribution by match its moments with the mean and variance of the outputs of these sub-networks. The entropy of the estimated Dirichlet distribution is finally utilized for uncertainty inference. In this paper, this framework is implemented on LeNet555 and VGG161616 models for misclassification detection and out-of-distribution detection on MNIST and CIFAR-101010 datasets. Experimental results show that the performance of the proposed SDC can be comparable to other uncertainty inference methods. Furthermore, the SDC is adapted well to different network structures with certain generalization capabilities and research prospects.

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