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PAC learning

Probably Approximately Correct (PAC) learning analyzes machine learning mathematically using probability bounds.

Papers

Showing 3140 of 289 papers

TitleStatusHype
Of Dice and Games: A Theory of Generalized Boosting0
Implicit High-Order Moment Tensor Estimation and Learning Latent Variable Models0
Effective Littlestone Dimension0
Probably Approximately Precision and Recall Learning0
Learning multivariate Gaussians with imperfect advice0
Reliable Learning of Halfspaces under Gaussian Marginals0
Probably approximately correct high-dimensional causal effect estimation given a valid adjustment set0
Prospective Learning: Learning for a Dynamic FutureCode1
Screw Geometry Meets Bandits: Incremental Acquisition of Demonstrations to Generate Manipulation Plans0
Enhancing PAC Learning of Half spaces Through Robust Optimization Techniques0
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