Almakadmeh, Khaled (2010) Statistical modeling for simultaneous data clustering, features selection, and outliers rejection. Masters thesis, Concordia University.
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Abstract
Model-based approaches and in particular finite mixture models are widely used for data clustering, which is a crucial step in several applications of practical importance. Indeed, many pattern recognition, computer vision, and image processing applications can be approached as feature space clustering problems. However, the use of these approaches for complex high-dimensional data presents several challenges such as the presence of many irrelevant features, which may affect the speed, and compromise the accuracy of the used learning algorithm. Another problem is the presence of outliers which potentially influence the resulting model parameters. Generally; clustering, features selection, and outliers detection problems have been approached separately. In this thesis, we propose a unified statistical framework to address the three problems simultaneously. The proposed statistical model partitions a given data set without a priori information about the number of clusters, the saliency of the features, or the number of outliers. We illustrate the performance of our approach using different applications involving synthetic data, real data, and objects shape clustering.
Divisions: | Concordia University > Gina Cody School of Engineering and Computer Science > Concordia Institute for Information Systems Engineering |
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Item Type: | Thesis (Masters) |
Authors: | Almakadmeh, Khaled |
Pagination: | xi, 59 leaves : ill. ; 29 cm. |
Institution: | Concordia University |
Degree Name: | M.A. Sc. |
Program: | Institute for Information Systems Engineering |
Date: | 2010 |
Thesis Supervisor(s): | Bouguila, Nizar |
Identification Number: | LE 3 C66I54M 2010 A46 |
ID Code: | 979461 |
Deposited By: | Concordia University Library |
Deposited On: | 09 Dec 2014 17:59 |
Last Modified: | 13 Jul 2020 20:12 |
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