notice
Master Thesis Defense - December 6, 2016: Cluster Analysis of Multivariate Data Using Scaled Dirichlet Finite Mixture Model
Eromonsele Samuel Oboh
Tuesday, December 6, 2016 at 10:00 a.m.
Room EV001.162
You are invited to attend the following M.A.Sc. (Quality Systems Engineering) thesis examination.
Examining Committee
Dr. A. Ben Hamza, Chair
Dr. N. Bouguila, Supervisor
Dr. J. Bentahar, CIISE Examiner
Dr. H. Rivaz, External Examiner (ECE)
Abstract
We have designed and implemented a finite mixture model, using the scaled Dirichlet distribution for the cluster analysis of multivariate proportional data. In this thesis, the task of cluster analysis first involves model selection which helps to discover the number of natural groupings underlying a dataset. This activity is then followed by that of estimating the model parameters for those natural groupings using the expectation maximization framework.
This work, aims to address the flexibility challenge of the Dirichlet distribution by introduction of a distribution with an extra model parameter. This is important because scientists and researchers are constantly searching for the best models that can fully describe the intrinsic characteristics of the observed data. And flexible models are increasingly used to achieve such purposes.
In addition, we have applied our estimation and model selection algorithm to both synthetic and real datasets. Most importantly, we considered two areas of application in software modules defect prediction and in customer segmentation. Today, there is a growing challenge of detecting defected modules in the early stages of complex software development projects and this makes our machine learning algorithm crucial in driving key quality improvements that impacts bottom-line and customer satisfaction.
Graduate Program Coordinators
For more information, contact Silvie Pasquarelli or Mireille Wahba.