Lower bounds for adaptive sparse recovery
Eric Price, David P. Woodruff
SODA 2013
Motivated by the desire to extend fast randomized techniques to nonlinear lp regression, we consider a class of structured regression problems. These problems involve Vandermonde matrices which arise naturally in various statistical modeling settings, including classical polynomial fitting problems, additive models and approximations to recently developed randomized techniques for scalable kernel methods. We show that this structure can be exploited to further accelerate the solution of the regression problem, achieving running times that are faster than "input sparsity". We present empirical results confirming both the practical value of our modeling framework, as well as speedup benefits of randomized regression.
Eric Price, David P. Woodruff
SODA 2013
Ankan Saha, Vikas Sindhwani
WSDM 2012
Po-Sen Huang, Haim Avron, et al.
ICASSP 2014
David P. Woodruff
ICDT 2016