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ISTCS
1997
Springer

Learning with Queries Corrupted by Classification Noise

14 years 4 months ago
Learning with Queries Corrupted by Classification Noise
Kearns introduced the "statistical query" (SQ) model as a general method for producing learning algorithms which are robust against classification noise. We extend this approach in several ways in order to tackle algorithms that use "membership queries", focusing on the more stringent model of "persistent noise". The main ingredients in the general analysis are: (1) Smallness of dimension of the classes of both the target and the queries. (2) Independence of the noise variables. Persistence restricts independence, forcing repeated invocation of the same point x to give the same label. We apply the general analysis to get a noise-robust version of Jackson's Harmonic Sieve, which learns DNF under the uniform distribution. This corrects an error in his earlier analysis of noise tolerant DNF learning. Key words: Machine Learning, Statistical Query, Noise Tolerance, Disjunctive Normal Form, Harmonic Sieve Revised and expanded version of paper that appeare...
Jeffrey C. Jackson, Eli Shamir, Clara Shwartzman
Added 26 Aug 2010
Updated 26 Aug 2010
Type Conference
Year 1997
Where ISTCS
Authors Jeffrey C. Jackson, Eli Shamir, Clara Shwartzman
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