JMLR

The Sample Complexity of Parameter-Free Stochastic Convex Optimization

Authors
Jared Lawrence Ari Kalinsky Hannah Bradfield Yair Carmon Oliver Hinder
Research Topics
Computational Statistics
Paper Information
  • Journal:
    Journal of Machine Learning Research
  • Added to Tracker:
    Jul 06, 2026
Abstract

We study the sample complexity of stochastic convex optimization when problem parameters such as the distance to optimality and the Lipschitz constant are unknown. We pursue two strategies. First, we develop a reliable model selection method that avoids overfitting to the validation set. This method allows us to generically tune the learning rate of stochastic optimization methods to match the optimal known-parameter sample complexity up to $\log\log$ factors. Second, we develop a regularization-based method that is specialized to the case that only the distance to optimality is unknown. More specifically, it uses norm-regularized empirical risk minimization to estimate the distance to optimality to within a constant factor, allowing known-parameter stochastic optimization methods to achieve optimal sample complexity. This method provides perfect adaptability to unknown distance to optimality, demonstrating a separation between the sample and computational complexity of parameter-free stochastic convex optimization. Combining these two methods allows us to simultaneously adapt to multiple problem structures. Experiments performing few-shot learning on CIFAR-10 by fine-tuning CLIP models and prompt engineering Gemini to count shapes indicate that our reliable model selection method can help mitigate overfitting to small validation sets.

Author Details
Jared Lawrence
Author
Ari Kalinsky
Author
Hannah Bradfield
Author
Yair Carmon
Author
Oliver Hinder
Author
Research Topics & Keywords
Computational Statistics
Research Area
Citation Information
APA Format
Jared Lawrence , Ari Kalinsky , Hannah Bradfield , Yair Carmon & Oliver Hinder . The Sample Complexity of Parameter-Free Stochastic Convex Optimization. Journal of Machine Learning Research .
BibTeX Format
@article{paper1364,
  title = { The Sample Complexity of Parameter-Free Stochastic Convex Optimization },
  author = { Jared Lawrence and Ari Kalinsky and Hannah Bradfield and Yair Carmon and Oliver Hinder },
  journal = { Journal of Machine Learning Research },
  url = { https://www.jmlr.org/papers/v27/25-2383.html }
}