Revisiting the Importance of Amplifying Bias for Debiasing
Jungsoo Lee, Jeonghoon Park, Daeyoung Kim, Juyoung Lee, Edward Choi, Jaegul Choo
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- github.com/kakaoenterprise/biasensemblepytorch★ 19
Abstract
In image classification, "debiasing" aims to train a classifier to be less susceptible to dataset bias, the strong correlation between peripheral attributes of data samples and a target class. For example, even if the frog class in the dataset mainly consists of frog images with a swamp background (i.e., bias-aligned samples), a debiased classifier should be able to correctly classify a frog at a beach (i.e., bias-conflicting samples). Recent debiasing approaches commonly use two components for debiasing, a biased model f_B and a debiased model f_D. f_B is trained to focus on bias-aligned samples (i.e., overfitted to the bias) while f_D is mainly trained with bias-conflicting samples by concentrating on samples which f_B fails to learn, leading f_D to be less susceptible to the dataset bias. While the state-of-the-art debiasing techniques have aimed to better train f_D, we focus on training f_B, an overlooked component until now. Our empirical analysis reveals that removing the bias-conflicting samples from the training set for f_B is important for improving the debiasing performance of f_D. This is due to the fact that the bias-conflicting samples work as noisy samples for amplifying the bias for f_B since those samples do not include the bias attribute. To this end, we propose a simple yet effective data sample selection method which removes the bias-conflicting samples to construct a bias-amplified dataset for training f_B. Our data sample selection method can be directly applied to existing reweighting-based debiasing approaches, obtaining consistent performance boost and achieving the state-of-the-art performance on both synthetic and real-world datasets.