Article ID Journal Published Year Pages File Type
384954 Expert Systems with Applications 2012 16 Pages PDF
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. For complex high-dimensional data, however, the use of these approaches presents several challenges such as the presence of many irrelevant features which may affect the speed and also compromise the accuracy of the used learning algorithm. Another problem is the presence of outliers which potentially influence the resulting model’s parameters. For this purpose, we propose and discuss an algorithm that 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.

► An algorithm for simultaneous clustering and feature selection is proposed. ► The proposed approach is based on finite Gamma mixture models and is robust against outliers. ► An approach for model selection using integrated likelihood is developed. ► The model is applied to the challenging problem of shape clustering.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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