Sciweavers

FOCS
1990
IEEE

Separating Distribution-Free and Mistake-Bound Learning Models over the Boolean Domain

13 years 9 months ago
Separating Distribution-Free and Mistake-Bound Learning Models over the Boolean Domain
Two of the most commonly used models in computational learning theory are the distribution-free model in which examples are chosen from a fixed but arbitrary distribution, and the absolute mistake-bound model in which examples are presented in an arbitrary order. Over the Boolean domain {0, 1}n, it is known that if the learner is allowed unlimited computational resources then any concept class learnable in one model is also learnable in the other. In addition, any polynomial-time learning algorithm for a concept class in the mistake-bound model can be transformed into one that learns the class in the distribution-free model. This paper shows that if one-way functions exist, then the mistake-bound model is strictly harder than the distribution-free model for polynomial-time learning. Specifically, given a one-way function, we show how to create a concept class over {0, 1}n that is learnable in polynomial time in the distribution-free model, but not in the absolute mistake-bound model. I...
Avrim Blum
Added 11 Aug 2010
Updated 11 Aug 2010
Type Conference
Year 1990
Where FOCS
Authors Avrim Blum
Comments (0)