This paper demonstrates the practical application of recently developed techniques of efficient numerical analysis for dynamic models. The models presented share a common basic structural foundation but nevertheless cover a very large arena of possible applications, as will be shown. K ~Y \YOKDS Qu
Attribute-Efficient Learning in Query and Mistake-Bound Models
โ Scribed by Nader Bshouty; Lisa Hellerstein
- Publisher
- Elsevier Science
- Year
- 1998
- Tongue
- English
- Weight
- 351 KB
- Volume
- 56
- Category
- Article
- ISSN
- 0022-0000
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โฆ Synopsis
We consider the problem of attribute-efficient learning in query and mistake-bound models. Attribute-efficient algorithms make a number of queries or mistakes that is polynomial in the number of relevant variables in the target function, but only sublinear in the number of irrelevant variables. We consider a variant of the membership query model in which the learning algorithm is given as input the number of relevant variables of the target function. We show that in this model, any projection and embedding closed class of functions (including parity) that can be learned in polynomial time can be learned attributeefficiently in polynomial time. We show that this does not hold in the randomized membership query model. In the mistake-bound model, we consider the problem of learning attribute-efficiently using hypotheses that are formulas of small depth. Our results extend the work of A.
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