VC Dimension and Distribution-Free Sample-Based Testing
December 07, 2020 ยท Declared Dead ยท ๐ Symposium on the Theory of Computing
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Authors
Eric Blais, Renato Ferreira Pinto, Nathaniel Harms
arXiv ID
2012.03923
Category
cs.LG: Machine Learning
Cross-listed
cs.CC,
cs.DS
Citations
15
Venue
Symposium on the Theory of Computing
Last Checked
4 months ago
Abstract
We consider the problem of determining which classes of functions can be tested more efficiently than they can be learned, in the distribution-free sample-based model that corresponds to the standard PAC learning setting. Our main result shows that while VC dimension by itself does not always provide tight bounds on the number of samples required to test a class of functions in this model, it can be combined with a closely-related variant that we call "lower VC" (or LVC) dimension to obtain strong lower bounds on this sample complexity. We use this result to obtain strong and in many cases nearly optimal lower bounds on the sample complexity for testing unions of intervals, halfspaces, intersections of halfspaces, polynomial threshold functions, and decision trees. Conversely, we show that two natural classes of functions, juntas and monotone functions, can be tested with a number of samples that is polynomially smaller than the number of samples required for PAC learning. Finally, we also use the connection between VC dimension and property testing to establish new lower bounds for testing radius clusterability and testing feasibility of linear constraint systems.
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