On-Average Stability of Multipass Preconditioned SGD and Effective Dimension
arXiv cs.LG / 3/13/2026
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Key Points
- The paper studies how the geometry of population risk curvature, gradient noise, and preconditioning jointly affect generalization in multipass PSGD.
- It shows that when these geometries do not align, an aggressive modification can improve one aspect while worsening another, leading to suboptimal statistical behavior.
- It introduces a new on-average stability analysis for multipass SGD that accounts for correlations from data reuse and connects generalization to an effective dimension.
- It derives excess risk bounds that depend on the effective dimension and demonstrates that a poorly chosen preconditioner can harm both optimization and generalization.
- It provides matching instance-dependent lower bounds to complement the upper bounds, highlighting a tight characterization of the trade-offs.
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