Seminar

Randomized Linear Algebra - An Introduction

January 10, 2025
Part I: 10:30 AM (Jan 10) | Part II: 2:30 PM (Jan 13)
Part I: Room B-303, EE Department | Part II: MMCR (room C-241), EE Department
randomized algorithms linear algebra matrix computation importance sampling random projection least squares low-rank approximation sketch matrices

Speaker

Prof. S. Lakshmivarahan
University of Oklahoma

Host

Prof. Chandra Sekhar Seelamantula

Abstract

Large scale matrix problems naturally arise in many applications - image processing, text processing, etc. This series of two lectures will provide an overview of the basic ideas relating to solving many of the standard problems - matrix-vector multiply, matrix-matrix multiply, sketch or a low rank approximation of a matrix, approximating the range space of a matrix, etc. using randomized algorithms.

First is the data dependent approach based on importance sampling and second is the data independent approach based on random projection. We will discuss two ways of approximating the solution to large scale linear least squares problems.

About the Speaker

S. Lakshmivarahan is George Lynn Cross Research Professor Emeritus at the School of Computer Science, University of Oklahoma, Norman, Oklahoma. After 46 years in academia, he retired in 2019. His research interests include Data Analytics, Dynamic Data Assimilation and their applications. He got his PhD from IISc in Electrical Engineering in 1973. He is a Fellow of the IEEE and ACM.