The Vapnik-Chervonenkis (VC) dimension is a combinatorial measure of a certain class of machine learning problems, which may be used to obtain upper and lower bounds on the number of training examples needed to learn to prescribed levels of accuracy. Most of the known bounds apply to the Probably Approximately Correct (PAC) framework, which is the framework within which we work in this paper. For a learning problem with some known VC dimension, much is known about the order of growth of the sample-size requirement of the problem, as a function of the PAC parameters. The exact value of sample-size requirement is however less well-known, and depends heavily on the particular learning algorithm being used. This is a major obstacle to the pract...
Abstract. The Vapnik-Chervonenkis (V-C) dimension is an important combinatorial tool in the analysis...
We consider the problem of learning a concept from examples in the distribution-free model by Valian...
This paper focuses on a general setup for obtaining sample size lower bounds for learning concept cl...
A proof that a concept class is learnable provided the Vapnik—Chervonenkis dimension is finite is gi...
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...
Lecture Notes in Artificial Intelligence 744, 279-287, 1993The Vapnik-Chervonenkis (VC) dimension is...
AbstractIn the PAC-learning model, the Vapnik-Chervonenkis (VC) dimension plays the key role to esti...
AbstractWe consider the problem of learning a concept from examples in the distribution-free model b...
In the PAC-learning model, the Vapnik-Chervonenkis (VC) dimension plays the key role to estimate the...
Abstract. Within the framework of pac-learning, we explore the learnability of concepts from samples...
Statistical learning theory chiefly studies restricted hypothesis classes, particularly those with f...
textabstractA stochastic model of learning from examples has been introduced by Valiant [1984]. This...
Proc. European Conference on Machine Learning, Lecture Notes in Artificial Intelligence 784, 415-418...
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 consider the problem of learning a concept from examples in the distribution-free model by Valian...
This paper focuses on a general setup for obtaining sample size lower bounds for learning concept cl...
A proof that a concept class is learnable provided the Vapnik—Chervonenkis dimension is finite is gi...
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...
Lecture Notes in Artificial Intelligence 744, 279-287, 1993The Vapnik-Chervonenkis (VC) dimension is...
AbstractIn the PAC-learning model, the Vapnik-Chervonenkis (VC) dimension plays the key role to esti...
AbstractWe consider the problem of learning a concept from examples in the distribution-free model b...
In the PAC-learning model, the Vapnik-Chervonenkis (VC) dimension plays the key role to estimate the...
Abstract. Within the framework of pac-learning, we explore the learnability of concepts from samples...
Statistical learning theory chiefly studies restricted hypothesis classes, particularly those with f...
textabstractA stochastic model of learning from examples has been introduced by Valiant [1984]. This...
Proc. European Conference on Machine Learning, Lecture Notes in Artificial Intelligence 784, 415-418...
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 consider the problem of learning a concept from examples in the distribution-free model by Valian...
This paper focuses on a general setup for obtaining sample size lower bounds for learning concept cl...