We study sublinear algorithms that solve linear systems locally. In the classical version of this problem the input is a matrix S in R^{n x n} and a vector b in R^n in the range of S, and the goal is to output x in R^n satisfying Sx=b. For the case when the matrix S is symmetric diagonally dominant (SDD), the breakthrough algorithm of Spielman and Teng [STOC 2004] approximately solves this problem in near-linear time (in the input size which is the number of non-zeros in S), and subsequent papers have further simplified, improved, and generalized the algorithms for this setting. Here we focus on computing one (or a few) coordinates of x, which potentially allows for sublinear algorithms. Formally, given an index u in [n] together with S and...
AbstractThis paper presents a sublinear parallel algorithm for dynamic programming problems such as ...
We study the problem of solving semidefinite programs (SDP) in the streaming model. Specifically, $m...
We study sublinear time algorithms for estimating the size of maximummatching. After a long line of ...
Original manuscript January 28, 2013In this paper, we present a simple combinatorial algorithm that ...
We present an improved algorithm for solving symmetrically diagonally dominant linear systems. On in...
In this thesis we study iterative algorithms with simple sublinear time update steps, and we show ho...
We show how to solve a number of problems in numerical linear algebra, such as least squares regress...
We present an algorithm for solving a linear system in a symmetric M-matrix. In particular, for $n t...
We give sublinear-time approximation algorithms for some optimization problems arising in machine le...
We present an algorithm that on input of an n×n symmetric diagonally dominant matrix A with m non-ze...
We design a sublinear-time approximation algorithm for quadratic function minimization problems with...
In solving a linear system with iterative methods, one is usually confronted with the dilemma of hav...
In this paper we show how to accelerate randomized coordinate descent methods and achieve faster con...
In this paper, we present a simple combinatorial algorithm that solves symmetric diagonally dominant...
In solving a linear system with iterative methods, one is usually confronted with the dilemma of hav...
AbstractThis paper presents a sublinear parallel algorithm for dynamic programming problems such as ...
We study the problem of solving semidefinite programs (SDP) in the streaming model. Specifically, $m...
We study sublinear time algorithms for estimating the size of maximummatching. After a long line of ...
Original manuscript January 28, 2013In this paper, we present a simple combinatorial algorithm that ...
We present an improved algorithm for solving symmetrically diagonally dominant linear systems. On in...
In this thesis we study iterative algorithms with simple sublinear time update steps, and we show ho...
We show how to solve a number of problems in numerical linear algebra, such as least squares regress...
We present an algorithm for solving a linear system in a symmetric M-matrix. In particular, for $n t...
We give sublinear-time approximation algorithms for some optimization problems arising in machine le...
We present an algorithm that on input of an n×n symmetric diagonally dominant matrix A with m non-ze...
We design a sublinear-time approximation algorithm for quadratic function minimization problems with...
In solving a linear system with iterative methods, one is usually confronted with the dilemma of hav...
In this paper we show how to accelerate randomized coordinate descent methods and achieve faster con...
In this paper, we present a simple combinatorial algorithm that solves symmetric diagonally dominant...
In solving a linear system with iterative methods, one is usually confronted with the dilemma of hav...
AbstractThis paper presents a sublinear parallel algorithm for dynamic programming problems such as ...
We study the problem of solving semidefinite programs (SDP) in the streaming model. Specifically, $m...
We study sublinear time algorithms for estimating the size of maximummatching. After a long line of ...