LGMar 16, 2022

Reducing Flipping Errors in Deep Neural Networks

arXiv:2203.08390v14 citationsh-index: 14
Originality Incremental advance
AI Analysis

This addresses a specific issue in DNN training for AI applications, offering a method to reduce errors with minimal overhead, though it appears incremental as it builds on existing training paradigms.

The paper tackles the problem of flipping errors in deep neural networks, where misclassified test samples were previously correctly classified during training, and proposes a flipping error reduction (FER) approach that substantially improves generalization, robustness, and transferability without extra parameters or inference cost.

Deep neural networks (DNNs) have been widely applied in various domains in artificial intelligence including computer vision and natural language processing. A DNN is typically trained for many epochs and then a validation dataset is used to select the DNN in an epoch (we simply call this epoch "the last epoch") as the final model for making predictions on unseen samples, while it usually cannot achieve a perfect accuracy on unseen samples. An interesting question is "how many test (unseen) samples that a DNN misclassifies in the last epoch were ever correctly classified by the DNN before the last epoch?". In this paper, we empirically study this question and find on several benchmark datasets that the vast majority of the misclassified samples in the last epoch were ever classified correctly before the last epoch, which means that the predictions for these samples were flipped from "correct" to "wrong". Motivated by this observation, we propose to restrict the behavior changes of a DNN on the correctly-classified samples so that the correct local boundaries can be maintained and the flipping error on unseen samples can be largely reduced. Extensive experiments on different benchmark datasets with different modern network architectures demonstrate that the proposed flipping error reduction (FER) approach can substantially improve the generalization, the robustness, and the transferability of DNNs without introducing any additional network parameters or inference cost, only with a negligible training overhead.

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