Without-Replacement Sampling for Stochastic Gradient Methods
–Neural Information Processing Systems
In contrast, sampling without replacement is far less understood, yet in practice it is very common, often easier to implement, and usually performs better. In this paper, we provide competitive convergence guarantees for without-replacement sampling under several scenarios, focusing on the natural regime of few passes over the data.
Neural Information Processing Systems
Nov-21-2025, 09:48:15 GMT
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