AbstractTwo fundamental measures of the efficiency of a learning algorithm are its running time and the number of examples it requires (its sample complexity). In this paper we demonstrate that even for simple concept classes, an inherent tradeoff can exist between running time and sample complexity. We present a concept class of 1-decision lists and prove that while a computationally unbounded learner can learn the class from O(1) examples, under a standard cryptographic assumption any polynomial-time learner requires almost Θ(n) examples. Using a different construction, we present a concept class of k-decision lists which exhibits a similar but stronger gap in sample complexity. These results strengthen the results of Decatur et al. (1997...
AbstractWe present a new perspective for investigating the probably approximate correct (PAC) learna...
Despite decades of intensive research, efficient - or even sub-exponential time - distribution-free ...
Statistical learning theory chiefly studies restricted hypothesis classes, particularly those with f...
AbstractTwo fundamental measures of the efficiency of a learning algorithm are its running time and ...
In a variety of PAC learning models, a tradeo between time and information seems to exist: with unl...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2002.Includes bibliogr...
AbstractWe consider the complexity of properly learning concept classes, i.e. when the learner must ...
Motivated by the goal of showing stronger structural results about the complexity of learning, we st...
AbstractWe prove a lower bound of Ω((1/ɛ)ln(1/δ)+VCdim(C)/ɛ) on the number of random examples requir...
In a statistical setting of the classification (pattern recognition) problem the number of examples ...
Thesis (Ph.D.)--University of Washington, 2020We present several novel results on computational prob...
A fundamental problem in adversarial machine learning is to quantify how much training data is neede...
In this paper, we extend Valiant's sequential model of concept learning from examples [Valiant 1984]...
AbstractThe distribution-independent model of concept learning from examples (“PAC-learning”) due to...
Motivated by the goal of showing stronger structural results about the complexity of learning, we st...
AbstractWe present a new perspective for investigating the probably approximate correct (PAC) learna...
Despite decades of intensive research, efficient - or even sub-exponential time - distribution-free ...
Statistical learning theory chiefly studies restricted hypothesis classes, particularly those with f...
AbstractTwo fundamental measures of the efficiency of a learning algorithm are its running time and ...
In a variety of PAC learning models, a tradeo between time and information seems to exist: with unl...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2002.Includes bibliogr...
AbstractWe consider the complexity of properly learning concept classes, i.e. when the learner must ...
Motivated by the goal of showing stronger structural results about the complexity of learning, we st...
AbstractWe prove a lower bound of Ω((1/ɛ)ln(1/δ)+VCdim(C)/ɛ) on the number of random examples requir...
In a statistical setting of the classification (pattern recognition) problem the number of examples ...
Thesis (Ph.D.)--University of Washington, 2020We present several novel results on computational prob...
A fundamental problem in adversarial machine learning is to quantify how much training data is neede...
In this paper, we extend Valiant's sequential model of concept learning from examples [Valiant 1984]...
AbstractThe distribution-independent model of concept learning from examples (“PAC-learning”) due to...
Motivated by the goal of showing stronger structural results about the complexity of learning, we st...
AbstractWe present a new perspective for investigating the probably approximate correct (PAC) learna...
Despite decades of intensive research, efficient - or even sub-exponential time - distribution-free ...
Statistical learning theory chiefly studies restricted hypothesis classes, particularly those with f...