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arxiv: 2205.03940 · v3 · pith:CUBOGJEZnew · submitted 2022-05-08 · 💻 cs.LG

Investigating Generalization by Controlling Normalized Margin

classification 💻 cs.LG
keywords marginnormalizedgeneralizationcausalcontroleffectfindsgamma
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Weight norm $\|w\|$ and margin $\gamma$ participate in learning theory via the normalized margin $\gamma/\|w\|$. Since standard neural net optimizers do not control normalized margin, it is hard to test whether this quantity causally relates to generalization. This paper designs a series of experimental studies that explicitly control normalized margin and thereby tackle two central questions. First: does normalized margin always have a causal effect on generalization? The paper finds that no -- networks can be produced where normalized margin has seemingly no relationship with generalization, counter to the theory of Bartlett et al. (2017). Second: does normalized margin ever have a causal effect on generalization? The paper finds that yes -- in a standard training setup, test performance closely tracks normalized margin. The paper suggests a Gaussian process model as a promising explanation for this behavior.

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