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ECML
1993
Springer

Complexity Dimensions and Learnability

13 years 10 months ago
Complexity Dimensions and Learnability
In machine learning theory, problem classes are distinguished because of di erences in complexity. In 6 , a stochastic model of learning from examples was introduced. This PAClearning model PAC = probably approximately correct re ects di erences in complexity of concept classes, i.e. very complex classes are not e ciently PAC-learnable. Blumer et al. 1 found, that e cient PAC-learnability depends on the size of the Vapnik Chervonenkis dimension  7  of a class. In Section 2 we will discuss this dimension and give an algorithm to compute it, in order to provide the reader with the intuitive idea behind it. In 3 a new, equivalent dimension is de ned for well-ordered classes. These well-ordered classes happen to satisfy a general condition, that is su cient for the possible construction of a number of equivalent dimensions. We will give this condition, as well as a generalized notion of an equivalent dimension. Also, a relatively e cient algorithm for the calculation of one such dimen...
Shan-Hwei Nienhuys-Cheng, Mark Polman
Added 09 Aug 2010
Updated 09 Aug 2010
Type Conference
Year 1993
Where ECML
Authors Shan-Hwei Nienhuys-Cheng, Mark Polman
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