Printable PDF
Department of Mathematics,
University of California San Diego

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

Math 278A - Center for Computational Mathematics Seminar

Jiawang Nie

UCSD

Learning diagonal Gaussian mixture models and incomplete tensor decompositions

Abstract:

This paper studies how to learn parameters in diagonal Gaussian mixture models. The problem can be formulated as computing incomplete symmetric tensor decompositions. We use generating polynomials to compute incomplete symmetric tensor decompositions and approximations. Then the tensor approximation method is used to learn diagonal Gaussian mixture models. We also do the stability analysis. When the first and third order moments are sufficiently accurate, we show that the obtained parameters for the Gaussian mixture models are also highly accurate. Numerical experiments are also provided.

October 31, 2023

11:00 AM

APM 2402 and Zoom ID 915 4615 4399
 

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