We consider the problems of attribute-efficient PAC learning of two well-studied concept classes: parity functions and DNF expressions over {0, 1}n. We show that attribute-efficient learning of parities with respect to the uniform distribution is equivalent to decoding high-rate random linear codes from low number of errors, a long-standing open problem in coding theory. An algorithm is said to use membership queries (MQs) non-adaptively if the points at which the algorithm asks MQs do not depend on the target concept. Using a simple non-adaptive parity learning algorithm and a modification of Levin’s algorithm for locat-ing a weakly-correlated parity due to Bshouty et al., we give the first non-adaptive and attribute-efficient algorithm fo...
This paper continues our earlier work on (non)adaptive attribute-efficient learning. We consider exa...
We study the problem of learning parity functions that depend on at most $k$ variables ($k$-parities...
AbstractWe consider the problem ofattribute-efficientlearning in query and mistake-bound models. Att...
AbstractWe present a membership-query algorithm for efficiently learning DNF with respect to the uni...
We address well-studied problems concerning the learnability of parities and halfspaces in the prese...
AbstractIn this paper we extend the Monotone Theory to the PAC-learning Model with membership querie...
Abstract In a very strong positive result for passive learning algorithms, Bshouty et al. showed tha...
We study the problem of learning parity functions that depend on at most k variables (k-parities) at...
We investigate learnability in the PAC model when the data used for learning, attributes and labels,...
function and let C be a concept class where each concept has size at most t. Define opt = min c∈C Pr...
Since its introduction by Valiant in 1984, PAC learning of DNF expressions remains one of the centra...
We consider two well-studied problems regarding attribute efficient learning: learning decision lis...
We are interested in distributions which are derived as a maximumentropy distribution given a set of...
AbstractProducing a small DNF expression consistent with given data is a classical problem in comput...
We study the problem of learning parity functions that depend on at most k variables (kparities) att...
This paper continues our earlier work on (non)adaptive attribute-efficient learning. We consider exa...
We study the problem of learning parity functions that depend on at most $k$ variables ($k$-parities...
AbstractWe consider the problem ofattribute-efficientlearning in query and mistake-bound models. Att...
AbstractWe present a membership-query algorithm for efficiently learning DNF with respect to the uni...
We address well-studied problems concerning the learnability of parities and halfspaces in the prese...
AbstractIn this paper we extend the Monotone Theory to the PAC-learning Model with membership querie...
Abstract In a very strong positive result for passive learning algorithms, Bshouty et al. showed tha...
We study the problem of learning parity functions that depend on at most k variables (k-parities) at...
We investigate learnability in the PAC model when the data used for learning, attributes and labels,...
function and let C be a concept class where each concept has size at most t. Define opt = min c∈C Pr...
Since its introduction by Valiant in 1984, PAC learning of DNF expressions remains one of the centra...
We consider two well-studied problems regarding attribute efficient learning: learning decision lis...
We are interested in distributions which are derived as a maximumentropy distribution given a set of...
AbstractProducing a small DNF expression consistent with given data is a classical problem in comput...
We study the problem of learning parity functions that depend on at most k variables (kparities) att...
This paper continues our earlier work on (non)adaptive attribute-efficient learning. We consider exa...
We study the problem of learning parity functions that depend on at most $k$ variables ($k$-parities...
AbstractWe consider the problem ofattribute-efficientlearning in query and mistake-bound models. Att...