printable pdf
比利时vs摩洛哥足彩 ,
university of california san diego

****************************

math 295 - mathematics colloquium

daniel robinson

department of applied mathematics and statistics - johns hopkins university

scalable optimization algorithms for large-scale subspace clustering

abstract:

i present recent work on the design of scalable optimization algorithms for aiding in the big data task of subspace clustering. in particular, i will describe three approaches that we recently developed to solve optimization problems constructed from the so-called self-expressiveness property of data that lies in the union of low-dimensional subspaces. sources of data that lie in the union of low-dimensional subspaces include multi-class clustering and motion segmentation. our optimization algorithms achieve scalability by leveraging three features: a rapidly adapting active-set approach, a greedy optimization method, and a divide-and-conquer technique. numerical results demonstrating the scalability of our approaches will be presented.

host: philip gill

march 23, 2017

4:00 pm

ap&m 6402

****************************