Principal components is a true workhorse of science and technology, applied everywhere from radio frequency signal processing to financial econometrics, genomics, and social network analysis. In this talk, I will review some of these applications and then describe the challenge posed by modern ‘big data asymptotics’ where there are roughly as many dimensions as observations; this setting has seemed in the past full of mysteries. Over the last ten years random matrix theory has developed a host of new tools that now can be deployed to meet this challenge; I will describe these new tools and show how I think we have recently crossed a threshold where some of the former mysteries are now cleared up. This is joint work with Matan Gavish (Hebrew Univ), Iain Johnstone and Edgar Dobriban (Stanford).
Principal Components Analysis in Light of the Spiked Model
On February 2, 2016 at 11:00 am till 12:00 pm