Talks
Spring 2020

Randomized Algorithms in Linear Algebra
Tuesday, February 25th, 2020, 10:45 am–11:15 am
Event:
Speaker:
Ravi Kannan (Microsoft Research India)
Location:
Calvin Lab Auditorium
A small random sample of rows/columns of any matrix is a decent proxy for the matrix, provided sampling probabilities are proportional to squared lengths. Since the early theorems on this from the 90’s, there has been a substantial body of work using sampling (random projections and probabil-ties based on leverage scores are two examples) to reduce matrix sizes for Linear Algebra computations. The talk will describe theorems, applications and challenges in the area.
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