We consider a model of learning Boolean functions from examples generated by a uniform random walk on {0,1}n. We give a polynomial time algorithm for learning decision trees and DNF formulas in this model. This is the first efficient algorithm for learning these classes in a natural passive learning model where the learner has no influence over the choice of examples used for learning
Abstract In a very strong positive result for passive learning algorithms, Bshouty et al. showed tha...
Abstract. This work gives a polynomial time algorithm for learning decision trees with respect to th...
We give an algorithm that learns any monotone Boolean function f: f1; 1gn! f1; 1g to any constant ac...
AbstractWe consider a model of learning Boolean functions from examples generated by a uniform rando...
We consider a model of learning Boolean functions from examples generated by a uniform random walk o...
We consider a model of learning Boolean functions from examples generated by a uniform random walk o...
We consider a model of learning Boolean functions from examples generated by a uniform random walk o...
We consider a model of learning Boolean functions from examples generated by a uniform random walk o...
We consider a model of learning Boolean functions from examples generated by a uniform random walk o...
We consider a natural framework of learning from correlated data, in which successive examples used ...
AbstractIn this paper we consider an approach to passive learning. In contrast to the classical PAC ...
AbstractWe define the rank of a decision tree and show that for any fixed r, the class of all decisi...
Abstract. We investigate the problem of learning Boolean functions with a short DNF representation u...
AbstractWe give an algorithm that with high probability properly learns random monotone DNF with t(n...
AbstractWe define the rank of a decision tree and show that for any fixed r, the class of all decisi...
Abstract In a very strong positive result for passive learning algorithms, Bshouty et al. showed tha...
Abstract. This work gives a polynomial time algorithm for learning decision trees with respect to th...
We give an algorithm that learns any monotone Boolean function f: f1; 1gn! f1; 1g to any constant ac...
AbstractWe consider a model of learning Boolean functions from examples generated by a uniform rando...
We consider a model of learning Boolean functions from examples generated by a uniform random walk o...
We consider a model of learning Boolean functions from examples generated by a uniform random walk o...
We consider a model of learning Boolean functions from examples generated by a uniform random walk o...
We consider a model of learning Boolean functions from examples generated by a uniform random walk o...
We consider a model of learning Boolean functions from examples generated by a uniform random walk o...
We consider a natural framework of learning from correlated data, in which successive examples used ...
AbstractIn this paper we consider an approach to passive learning. In contrast to the classical PAC ...
AbstractWe define the rank of a decision tree and show that for any fixed r, the class of all decisi...
Abstract. We investigate the problem of learning Boolean functions with a short DNF representation u...
AbstractWe give an algorithm that with high probability properly learns random monotone DNF with t(n...
AbstractWe define the rank of a decision tree and show that for any fixed r, the class of all decisi...
Abstract In a very strong positive result for passive learning algorithms, Bshouty et al. showed tha...
Abstract. This work gives a polynomial time algorithm for learning decision trees with respect to th...
We give an algorithm that learns any monotone Boolean function f: f1; 1gn! f1; 1g to any constant ac...