Sciweavers

CC
2010
Springer

Lower Bounds for Agnostic Learning via Approximate Rank

13 years 1 months ago
Lower Bounds for Agnostic Learning via Approximate Rank
We prove that the concept class of disjunctions cannot be pointwise approximated by linear combinations of any small set of arbitrary real-valued functions. That is, suppose that there exist functions 1, . . . , r : {-1, 1}n R with the property that every disjunction f on n variables has f - r i=1 ii 1/3 for some reals 1, . . . , r. We prove that then r exp{( n)}, which is tight. We prove an incomparable lower bound for the concept class of decision lists. For the concept class of majority functions, we obtain a lower bound of (2n/n), which almost meets the trivial upper bound of 2n for any concept class. These lower bounds substantially strengthen and generalize the polynomial approximation lower bounds of Paturi (1992) and show that the regression-based agnostic learning algorithm of Kalai et al. (2005) is optimal. Keywords. Agnostic learning, approximate rank, matrix analysis, communication complexity Subject classification. 03D15, 68Q32, 68Q17.
Adam R. Klivans, Alexander A. Sherstov
Added 28 Feb 2011
Updated 28 Feb 2011
Type Journal
Year 2010
Where CC
Authors Adam R. Klivans, Alexander A. Sherstov
Comments (0)