Back to Search
Start Over
Computational sample complexity
- Source :
- Scopus-Elsevier, COLT
-
Abstract
- In a variety of PAC learning models, a trade-off between time and information seems to exist: with unlimited time, a small amount of information suffices, but with time restrictions, more information sometimes seems to be required. In addition, it has long been known that there are concept classes that can be learned in the absence of computational restrictions, but (under standard cryptographic assumptions) cannot be learned in polynomial time (regardless of sample size). Yet, these results do not answer the question of whether there are classes for which learning from a small set of examples is computationally infeasible, but becomes feasible when the learner has access to (polynomially) more examples. To address this question, we introduce a new measure of learning complexity called computational sample complexity that represents the number of examples sufficient for polynomial time learning with respect to a fixed distribution. We then show concept classes that (under similar cryptographic assumptions) possess arbitrarily sized gaps between their standard (information-theoretic) sample complexity and their computational sample complexity. We also demonstrate such gaps for learning from membership queries and learning from noisy examples.
- Subjects :
- Theoretical computer science
General Computer Science
Computer science
General Mathematics
Descriptive complexity theory
Computational resource
PH
Structural complexity theory
Computational learning theory
Sample size determination
Sample exclusion dimension
Asymptotic computational complexity
Time complexity
Algorithm
Mathematics
Quantum complexity theory
Subjects
Details
- Database :
- OpenAIRE
- Journal :
- Scopus-Elsevier, COLT
- Accession number :
- edsair.doi.dedup.....93f7abcf33685a3e382baefb7e3b3a99