Agnostic Active Learning of Single Index Models with Linear Sample Complexity
Aarshvi Gajjar, Wai Ming Tai, Xingyu Xu, Chinmay Hegde, Yi Li,, Christopher Musco

TL;DR
This paper develops sample-efficient active learning algorithms for single index models, achieving near-optimal sample complexity in both known and unknown function settings, with robustness to adversarial noise.
Contribution
It introduces leverage score sampling for agnostic active learning of single index models, improving sample complexity bounds and handling unknown functions.
Findings
Sample complexity of O(d) for known Lipschitz functions
Sample complexity of O(d) for unknown functions
No assumptions on data distribution, optimal up to log factors
Abstract
We study active learning methods for single index models of the form , where and . In addition to their theoretical interest as simple examples of non-linear neural networks, single index models have received significant recent attention due to applications in scientific machine learning like surrogate modeling for partial differential equations (PDEs). Such applications require sample-efficient active learning methods that are robust to adversarial noise. I.e., that work even in the challenging agnostic learning setting. We provide two main results on agnostic active learning of single index models. First, when is known and Lipschitz, we show that samples collected via {statistical leverage score sampling} are sufficient to learn a…
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Taxonomy
TopicsMachine Learning and Algorithms · Fault Detection and Control Systems · Advanced Statistical Process Monitoring
