Title :
Combining Dialectical Optimization and Gradient Descent Methods for Improving the Accuracy of Straight Line Segment Classifiers
Author :
Rodriguez, Rosario A Medina ; Hashimoto, Ronaldo Fumio
Author_Institution :
Dept. of Comput. Sci., Univ. of Sao Paulo, Sao Paulo, Brazil
Abstract :
A recent published pattern recognition technique called Straight Line Segment (SLS) uses two sets of straight line segments to classify a set of points from two different classes and it is based on distances between hese points and each set of straight line segments. It has been demonstrated that, using this technique, it is possible to generate classifiers which can reach high accuracy rates for supervised pattern classification. However, a critical issue in this technique is to find the optimal positions of the straight line segments given a training data set. This paper proposes a combining method of the dialectical optimization method (DOM) and the gradient descent technique for solving this optimization problem. The main advantage of DOM, such as any evolutionary algorithm, is the capability of escaping from local optimum by multi-point stochastic searching. On the other hand, the strength of gradient descent method is the ability of finding local optimum by pointing the direction that maximizes the objective function. Our hybrid method combines the main characteristics of these two methods. We have applied our combining approach to several data sets obtained from artificial distributions and UCI databases. These experiments show that the proposed algorithm in most cases has higher classification rates with respect to single gradient descent method and the combination of gradient descent with genetic algorithms.
Keywords :
genetic algorithms; gradient methods; image classification; image segmentation; search problems; visual databases; UCI databases; artificial distributions; data sets; dialectical optimization method; evolutionary algorithm; genetic algorithms; gradient descent methods; local optimum; multipoint stochastic searching; pattern recognition technique; straight line segment classifiers; supervised pattern classification; training data set; Optimization methods; Pattern recognition; Probability density function; Training; Training data; Vectors; dialectical optimization; genetic algorithms; gradient descent technique; pattern recognition; straight line segments;
Conference_Titel :
Graphics, Patterns and Images (Sibgrapi), 2011 24th SIBGRAPI Conference on
Conference_Location :
Maceio, Alagoas
Print_ISBN :
978-1-4577-1674-4
DOI :
10.1109/SIBGRAPI.2011.8