2022
DOI: 10.48550/arxiv.2203.05443
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Bias-variance decomposition of overparameterized regression with random linear features

Jason W. Rocks,
Pankaj Mehta

Abstract: In classical statistics, the bias-variance trade-off describes how varying a model's complexity (e.g., number of fit parameters) affects its ability to make accurate predictions. According to this tradeoff, optimal performance is achieved when a model is expressive enough to capture trends in the data, yet not so complex that it overfits idiosyncratic features of the training data. Recently, it has become clear that this classic understanding of the bias-variance must be fundamentally revisited in light of the… Show more

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