AbstractWe consider the problem of learning a concept from examples in the distribution-free model by Valiant. (An essentially equivalent model, if one ignores issues of computational difficulty, was studied by Vapnik and Chervonenkis.) We introduce the notion of dynamic sampling, wherein the number of examples examined may increase with the complexity of the target concept. This method is used to establish the learnability of various concept classes with an infinite Vapnik-Chervonenkis dimension. We also discuss an important variation on the problem of learning from examples, called approximating from examples. Here we do not assume that the target concept T is a member of the concept class C from which approximations are chosen. This prob...
AbstractWe prove a lower bound of Ω((1/ɛ)ln(1/δ)+VCdim(C)/ɛ) on the number of random examples requir...
Abstract. The Vapnik-Chervonenkis (V-C) dimension is an important combinatorial tool in the analysis...
We prove alower bound of ( 1 ln 1 + VCdim(C) ) on the number of random examples required for distrib...
We consider the problem of learning a concept from examples in the distribution-free model by Valian...
AbstractWe consider the problem of learning a concept from examples in the distribution-free model b...
A proof that a concept class is learnable provided the Vapnik—Chervonenkis dimension is finite is gi...
AbstractA proof that a concept class is learnable provided the Vapnik—Chervonenkis dimension is fini...
A proof that a concept is learnable provided the Vapnik-Chervonenkis dimension is finite is given. T...
AbstractA proof that a concept class is learnable provided the Vapnik—Chervonenkis dimension is fini...
The Vapnik-Chervonenkis (VC) dimension is a combinatorial measure of a certain class of machine lear...
AbstractValiant's protocol for learning is extended to the case where the distribution of the exampl...
AbstractValiant's protocol for learning is extended to the case where the distribution of the exampl...
AbstractWe prove a lower bound of Ω((1/ɛ)ln(1/δ)+VCdim(C)/ɛ) on the number of random examples requir...
Abstract. Within the framework of pac-learning, we explore the learnability of concepts from samples...
Within the framework of pac-learning, we explore the learnability of concepts from samples using the...
AbstractWe prove a lower bound of Ω((1/ɛ)ln(1/δ)+VCdim(C)/ɛ) on the number of random examples requir...
Abstract. The Vapnik-Chervonenkis (V-C) dimension is an important combinatorial tool in the analysis...
We prove alower bound of ( 1 ln 1 + VCdim(C) ) on the number of random examples required for distrib...
We consider the problem of learning a concept from examples in the distribution-free model by Valian...
AbstractWe consider the problem of learning a concept from examples in the distribution-free model b...
A proof that a concept class is learnable provided the Vapnik—Chervonenkis dimension is finite is gi...
AbstractA proof that a concept class is learnable provided the Vapnik—Chervonenkis dimension is fini...
A proof that a concept is learnable provided the Vapnik-Chervonenkis dimension is finite is given. T...
AbstractA proof that a concept class is learnable provided the Vapnik—Chervonenkis dimension is fini...
The Vapnik-Chervonenkis (VC) dimension is a combinatorial measure of a certain class of machine lear...
AbstractValiant's protocol for learning is extended to the case where the distribution of the exampl...
AbstractValiant's protocol for learning is extended to the case where the distribution of the exampl...
AbstractWe prove a lower bound of Ω((1/ɛ)ln(1/δ)+VCdim(C)/ɛ) on the number of random examples requir...
Abstract. Within the framework of pac-learning, we explore the learnability of concepts from samples...
Within the framework of pac-learning, we explore the learnability of concepts from samples using the...
AbstractWe prove a lower bound of Ω((1/ɛ)ln(1/δ)+VCdim(C)/ɛ) on the number of random examples requir...
Abstract. The Vapnik-Chervonenkis (V-C) dimension is an important combinatorial tool in the analysis...
We prove alower bound of ( 1 ln 1 + VCdim(C) ) on the number of random examples required for distrib...