Learning switching concepts

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Abstract

We consider learning in situations where the function used to classify examples may switch back and forth between a small number of different concepts during the course of learning. We examine several models for such situations: oblivious models in which switches are made independent of the selection of examples, and more adversarial models in which a single adversary controls both the concept switches and example selection. We show relationships between the more benign models and the p-concepts of Kearns and Schapire, and present polynomial-time algorithms for learning switches between two k-DNF formulas. For the most adversarial model, we present a model of success patterned after the popular competitive analysis used in studying on-line algorithms. We describe a randomized query algorithm for such adversarial switches between two monotone disjunctions that is `1-competitive' in that the total number of mistakes plus queries is with high probability bounded by the number of switches plus some fixed polynomial in n (the number of variables). We also use notions described here to provide sufficient conditions under which learning a p-concept class `with a decision rule' implies being able to learn the class `with a model of probability.'

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APA

Blum, A., & Chalasani, P. (1992). Learning switching concepts. In Proceedings of the Fifth Annual ACM Workshop on Computational Learning Theory (pp. 231–242). Publ by ACM. https://doi.org/10.1145/130385.130411

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