Title :
Learnability and automatizability
Author :
Alekhnovich, Misha ; Braverman, Mark ; Feldman, Vitaly ; Klivans, Adam R. ; Pitassi, Toniann
Author_Institution :
IAS, Princeton, NJ, USA
Abstract :
We consider the complexity of properly learning concept classes, i.e. when the learner must output a hypothesis of the same form as the unknown concept. We present the following upper and lower bounds on well-known concept classes: 1) We show that unless NP = RP, there is no polynomial-time PAC learning algorithm for DNF formulae where the hypothesis is an OR-of-thresholds. Note that as special cases, we show that neither DNF nor OR-of-thresholds are properly learnable unless NP = RP. Previous hardness results have required strong restrictions on the size of the output DNF formula. We also prove that it is NP-hard to learn the intersection of ℓ ≥ 2 halfspaces by the intersection of k halfspaces for any constant k > 0. Previous work held for the case when k = ℓ; 2) Assuming that NP
Keywords :
computational complexity; decision trees; graph colouring; learning (artificial intelligence); theorem proving; DNF formulae; NP-hard problem; OR-of-thresholds; approximate hypergraph coloring; automatizability; decision trees; halfspaces; learnability; nontrivial upper bounds; polynomial-time PAC learning; proof complexity; properly learning concept classes complexity; Circuits; Computer science; Cryptography; Decision trees; Polynomials; Scholarships; Upper bound;
Conference_Titel :
Foundations of Computer Science, 2004. Proceedings. 45th Annual IEEE Symposium on
Print_ISBN :
0-7695-2228-9
DOI :
10.1109/FOCS.2004.36