Title :
Agnostically learning halfspaces
Author :
Kalai, Adam Tauman ; Klivans, Adam R. ; Mansour, Yishay ; Servedio, Rocco A.
Author_Institution :
TTI-Chicago, Chicago, IL, USA
Abstract :
We give the first algorithm that (under distributional assumptions) efficiently learns halfspaces in the notoriously difficult agnostic framework of Kearns, Schapire, & Sellie, where a learner is given access to labeled examples drawn from a distribution, without restriction on the labels (e.g. adversarial noise). The algorithm constructs a hypothesis whose error rate on future examples is within an additive ε of the optimal halfspace, in time poly(n) for any constant ε > 0, under the uniform distribution over {-1, 1}n or the unit sphere in Rn , as well as under any log-concave distribution over R n. It also agnostically learns Boolean disjunctions in time 2O~(√n) with respect to any distribution. The new algorithm, essentially L1 polynomial regression, is a noise-tolerant arbitrary distribution generalization of the "low degree" Fourier algorithm of Linial, Mansour, & Nisan. We also give a new algorithm for PAC learning halfspaces under the uniform distribution on the unit sphere with the current best bounds on tolerable rate of "malicious noise".
Keywords :
Boolean functions; computational complexity; learning (artificial intelligence); polynomials; regression analysis; Boolean disjunction; Fourier algorithm; agnostic learning halfspace; noise-tolerant arbitrary distribution generalization; optimal halfspace; polynomial regression; uniform distribution; Artificial neural networks; Boolean functions; Engineering profession; Error analysis; Learning systems; Machine learning; Machine learning algorithms; Optimized production technology; Polynomials; Support vector machines;
Conference_Titel :
Foundations of Computer Science, 2005. FOCS 2005. 46th Annual IEEE Symposium on
Print_ISBN :
0-7695-2468-0
DOI :
10.1109/SFCS.2005.13