Pavel Kisilev, Daniel Freedman, et al.
ICPR 2012
We describe parallel methods for solving large-scale, high-dimensional, sparse least-squares problems that arise in machine learning applications such as document classification. The basic idea is to solve a two-class response problem using a fast regression technique based on minimizing a loss function, which consists of an empirical squared-error term, and one or more regularization terms. We consider the use of Lanczos-based methods for solving these regularized least-squares problems, with the parallel implementation in the Parallel Machine Learning (PML) framework, and performance results on the IBM Blue Gene/P parallel computer. © 2009 IEEE.
Pavel Kisilev, Daniel Freedman, et al.
ICPR 2012
Michelle X. Zhou, Fei Wang, et al.
ICMEW 2013
Sudeep Sarkar, Kim L. Boyer
Computer Vision and Image Understanding
James E. Gentile, Nalini Ratha, et al.
BTAS 2009