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Learning parities in the mistake-bound model
Authors:Harry Buhrman  Arie Matsliah
Affiliation:CWI Amsterdam, Netherlands
Abstract:We study the problem of learning parity functions that depend on at most k variables (k-parities) attribute-efficiently in the mistake-bound model. We design a simple, deterministic, polynomial-time algorithm for learning k-parities with mistake bound View the MathML source. This is the first polynomial-time algorithm to learn ω(1)-parities in the mistake-bound model with mistake bound o(n).Using the standard conversion techniques from the mistake-bound model to the PAC model, our algorithm can also be used for learning k-parities in the PAC model. In particular, this implies a slight improvement over the results of Klivans and Servedio (2004) 1] for learning k-parities in the PAC model.We also show that the View the MathML source time algorithm from Klivans and Servedio (2004) 1] that PAC-learns k-parities with sample complexity View the MathML source can be extended to the mistake-bound model.
Keywords:On-line algorithms  Parities  Mistake-bound  Attribute-efficient learning
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