An Updated EM Algorithm for Classification in Protein Interaction Networks

Authors

  • Hanen Ben Hassen* Institut supérieur de biotechnologie de sfax
  • Aida Jarraya

DOI:

https://doi.org/10.11145/249

Abstract

We provide an updated Expectation-Maximization (UEM) algorithm toВ В estimate parameters of finite Gaussian mixture distributions in Bayesian networks. The UEM algorithm is composed by three steps: an expectation (E) and a maximization (M) steps, akin to the EM algorithm, where a created function for log-likelihood isВ В valuated using the current estimate for the parameter after that the parameters estimated are maximized. Given a graph specifying the relationship between nodes and based on Lauritzen formula, the third step (U) updates the M-estimates. We demonstrate that UEMВ В algorithm is useful to system biology data, by considering protein interaction networks where arcs represent probabilistic relationships (interaction) between nodes (proteins). The UEM algorithm provides the classification of the data to each Gaussian distribution cluster. We apply our algorithm on a simulation study of the EGFR protein interaction network.

Downloads

Published

2014-04-01

Issue

Section

Conference Contributions