Mechanism of UV-Induced Damage to Mammalian Collagen

Abstract

We develop a general framework for proving rigorous guarantees on the performance of the EM algorithm and a variant known as gradient EM. Our analysis is divided into two parts: a treatment of these algorithms at the population level (in the limit of infinite data), followed by results that apply to updates based on a finite set of samples. First, we characterize the domain of attraction of any global maximizer of the population likelihood. This characterization is based on a novel view of the EM updates as a perturbed form of likelihood ascent, or in parallel, of the gradient EM updates as a perturbed form of standard gradient ascent. Leveraging this characterization, we then provide non-asymptotic guarantees on the EM and gradient EM algorithms when applied to a finite set of samples. We develop consequences of our general theory for three canonical examples of incomplete-data problems: mixture of Gaussians, mixture of regressions, and linear regression with covariates missing completely at random. In each case, our theory guarantees that with a suitable initialization, a relatively small number of EM (or gradient EM) steps will yield (with high probability) an estimate that is within statistical error of the MLE. We provide simulations to confirm this theoretically predicted behavior.

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Document Details

Document Type
Technical Report
Publication Date
Dec 12, 2014
Accession Number
ADA621745

Entities

People

  • Julian M. Menter

Organizations

  • Morehouse School of Medicine

Tags

Communities of Interest

  • Biomedical

DTIC Thesaurus Topics

  • Body Temperature
  • Chemical Synthesis
  • Chemistry
  • Connective Tissue
  • Department Of Defense
  • Detection
  • Emission Spectra
  • Engineering
  • Free Radicals
  • Heat Of Activation
  • Measurement
  • Medical Personnel
  • Oxidation Reduction Reactions
  • Photochemical Reactions
  • Physical Chemistry
  • Students
  • Tyrosine

Fields of Study

  • Computer science

Readers

  • Adaptive Control and Estimation with Uncertainty in Dynamic Systems.
  • Statistical inference.