It's an Alignment, Not a Trade-off: Revisiting Bias and Variance in Deep Models

Abstract

Classical wisdom in machine learning holds that the generalization error can be decomposed into bias and variance, and these two terms exhibit a trade-off. However, in this paper, we show that for an ensemble of deep learning based classification models, bias and variance are aligned at a sample level, where squared bias is approximately equal to variance for correctly classified sample points. We present empirical evidence confirming this phenomenon in a variety of deep learning models and datasets. Moreover, we study this phenomenon from two theoretical perspectives: calibration and neural collapse. We first show theoretically that under the assumption that the models are well calibrated, we can observe the bias-variance alignment. Second, starting from the picture provided by the neural collapse theory, we show an approximate correlation between bias and variance.

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