Probably Approximately Correct (i.e., PAC) learning is a core concept of sample complexity theory, and efficient PAC learnability is often seen as a natural counterpart to the class P in classical computational complexity. But while the nascent theory of parameterized complexity has allowed us to push beyond the P-NP "dichotomy" in classical computational complexity and identify the exact boundaries of tractability for numerous problems, there is no analogue in the domain of sample complexity that could push beyond efficient PAC learnability. As our core contribution, we fill this gap by developing a theory of parameterized PAC learning which allows us to shed new light on several recent PAC learning results that incorporated elements of ...
We present a new perspective for investigating the Probably Approximate Correct (PAC) learnability o...
International audienceA PAC teaching model -under helpful distributions - is proposed which introduc...
International audienceA PAC teaching model -under helpful distributions - is proposed which introduc...
AbstractWe present a systematic framework for classifying, comparing, and defining models of PAC lea...
AbstractWe present a systematic framework for classifying, comparing, and defining models of PAC lea...
This paper focuses on a general setup for obtaining sample size lower bounds for learning concept cl...
In a variety of PAC learning models, a tradeo between time and information seems to exist: with unl...
A PAC teaching model -under helpful distributions -is proposed which introduces the classical ideas...
A PAC teaching model -under helpful distributions -is proposed which introduces the classical ideas...
AbstractThis paper focuses on a general setup for obtaining sample size lower bounds for learning co...
We study a distribution dependent form of PAC learning that uses probability distributions related t...
AbstractWe investigate learning of classes of distributions over a discrete domain in a PAC context....
We investigate learning of classes of distributions over a discrete domain in a PAC context. We intr...
We investigate learning of classes of distributions over a discrete domain in a PAC context. We intr...
We investigate learning of classes of distributions over a discrete domain in a PAC context. We intr...
We present a new perspective for investigating the Probably Approximate Correct (PAC) learnability o...
International audienceA PAC teaching model -under helpful distributions - is proposed which introduc...
International audienceA PAC teaching model -under helpful distributions - is proposed which introduc...
AbstractWe present a systematic framework for classifying, comparing, and defining models of PAC lea...
AbstractWe present a systematic framework for classifying, comparing, and defining models of PAC lea...
This paper focuses on a general setup for obtaining sample size lower bounds for learning concept cl...
In a variety of PAC learning models, a tradeo between time and information seems to exist: with unl...
A PAC teaching model -under helpful distributions -is proposed which introduces the classical ideas...
A PAC teaching model -under helpful distributions -is proposed which introduces the classical ideas...
AbstractThis paper focuses on a general setup for obtaining sample size lower bounds for learning co...
We study a distribution dependent form of PAC learning that uses probability distributions related t...
AbstractWe investigate learning of classes of distributions over a discrete domain in a PAC context....
We investigate learning of classes of distributions over a discrete domain in a PAC context. We intr...
We investigate learning of classes of distributions over a discrete domain in a PAC context. We intr...
We investigate learning of classes of distributions over a discrete domain in a PAC context. We intr...
We present a new perspective for investigating the Probably Approximate Correct (PAC) learnability o...
International audienceA PAC teaching model -under helpful distributions - is proposed which introduc...
International audienceA PAC teaching model -under helpful distributions - is proposed which introduc...