演讲人:
                        David P. Woodruff IBM Almaden Research Center  
                        时间: 2012-09-10 16:00-2012-09-10 17:00
                        地点:FIT 1-222
                                                内容:
                    
                     We improve the running times of algorithms for least squares regression and  low-rank approximation to account for the sparsity of the input matrix. Namely,  if nnz(A) denotes the number of non-zero entries of an input matrix A:- we show  how to solve approximate least squares regression given an n x d matrix A in  nnz(A) + poly(d log n) time- we show how to find an approximate best rank-k  approximation of an n x n matrix in nnz(A) + n*poly(k log n) time. All  approximations are relative error. Previous algorithms based on fast  Johnson-Lindenstrauss transforms took at least ndlog d or nnz(A)*k time. We have  implemented our algorithms, and preliminary results suggest the algorithms are  competitive in practice.
Joint work with Ken Clarkson.
                    
                         
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