Data Selection for ERMs
Hanneke, Steve, Moran, Shay, Shlimovich, Alexander, Yehudayoff, Amir
Learning theory has traditionally followed a model-centric approach, focusing on designing optimal algorithms for a fixed natural learning task (e.g., linear classification or regression). In this paper, we adopt a complementary data-centric perspective, whereby we fix a natural learning rule and focus on optimizing the training data. Specifically, we study the following question: given a learning rule $\mathcal{A}$ and a data selection budget $n$, how well can $\mathcal{A}$ perform when trained on at most $n$ data points selected from a population of $N$ points? We investigate when it is possible to select $n \ll N$ points and achieve performance comparable to training on the entire population. We address this question across a variety of empirical risk minimizers. Our results include optimal data-selection bounds for mean estimation, linear classification, and linear regression. Additionally, we establish two general results: a taxonomy of error rates in binary classification and in stochastic convex optimization. Finally, we propose several open questions and directions for future research.
Apr-25-2025
- Country:
- North America
- United States > California
- San Diego County > San Diego (0.04)
- Canada > Quebec
- Montreal (0.04)
- United States > California
- Europe
- Russia > Central Federal District
- Moscow Oblast > Moscow (0.04)
- Denmark > Capital Region
- Copenhagen (0.04)
- Russia > Central Federal District
- Asia > Middle East
- Israel (0.04)
- North America
- Genre:
- Research Report > New Finding (0.34)
- Technology: