Motivated by the goal of showing stronger structural results about the complexity of learning, we study the learnability of strong concept classes beyond P/poly, such as PSPACE/poly and EXP/poly. We show the following: 1) (Unconditional Lower Bounds for Learning) Building on [Adam R. Klivans et al., 2013], we prove unconditionally that BPE/poly cannot be weakly learned in polynomial time over the uniform distribution, even with membership and equivalence queries. 2) (Robustness of Learning) For the concept classes EXP/poly and PSPACE/poly, we show unconditionally that worst-case and average-case learning are equivalent, that PAC-learnability and learnability over the uniform distribution are equivalent, and that membership queries do not he...
It is becoming increasingly important to understand the vulnerability of machine learning models to ...
We prove several results giving new and stronger connections between learning theory, circuit comple...
Probably Approximately Correct (i.e., PAC) learning is a core concept of sample complexity theory, a...
Motivated by the goal of showing stronger structural results about the complexity of learning, we st...
AbstractWe consider the complexity of properly learning concept classes, i.e. when the learner must ...
For some representation classes, we relate its polynomial time query learnability to the complexity ...
In a variety of PAC learning models, a tradeo between time and information seems to exist: with unl...
Carmosino, Impagliazzo, Kabanets, and Kolokolova (CCC, 2016) showed that the existence of natural pr...
This thesis focuses on problems which themselves encode questions about circuits or algorithms, also...
AbstractTwo fundamental measures of the efficiency of a learning algorithm are its running time and ...
We aim at developing a learning theory where `simple' concepts are easily learnable. In Valiant...
AbstractWe describe a new approach for understanding the difficulty of designing efficient learning ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2002.Includes bibliogr...
We show that for any concept class C the number of equiv-alence and membership queries that are need...
AbstractWe present a systematic framework for classifying, comparing, and defining models of PAC lea...
It is becoming increasingly important to understand the vulnerability of machine learning models to ...
We prove several results giving new and stronger connections between learning theory, circuit comple...
Probably Approximately Correct (i.e., PAC) learning is a core concept of sample complexity theory, a...
Motivated by the goal of showing stronger structural results about the complexity of learning, we st...
AbstractWe consider the complexity of properly learning concept classes, i.e. when the learner must ...
For some representation classes, we relate its polynomial time query learnability to the complexity ...
In a variety of PAC learning models, a tradeo between time and information seems to exist: with unl...
Carmosino, Impagliazzo, Kabanets, and Kolokolova (CCC, 2016) showed that the existence of natural pr...
This thesis focuses on problems which themselves encode questions about circuits or algorithms, also...
AbstractTwo fundamental measures of the efficiency of a learning algorithm are its running time and ...
We aim at developing a learning theory where `simple' concepts are easily learnable. In Valiant...
AbstractWe describe a new approach for understanding the difficulty of designing efficient learning ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2002.Includes bibliogr...
We show that for any concept class C the number of equiv-alence and membership queries that are need...
AbstractWe present a systematic framework for classifying, comparing, and defining models of PAC lea...
It is becoming increasingly important to understand the vulnerability of machine learning models to ...
We prove several results giving new and stronger connections between learning theory, circuit comple...
Probably Approximately Correct (i.e., PAC) learning is a core concept of sample complexity theory, a...