The support vector machine (SVM) has provided higher performance than traditional learning machines and has been widely applied in real-world classification problems and nonlinear function estimation problems. Unfortunately, the training process of the SVM is sensitive to the outliers or noises in the training set. In this paper, a common misunderstanding of Gaussian-function-based kernel fuzzy clustering is corrected, and a kernel fuzzy c-means clustering-based fuzzy SVM algorithm (KFCM-FSVM) is developed to deal with the classification problems with outliers or noises. In the KFCM-FSVM algorithm, we first use the FCM clustering to cluster each of two classes from the training set in the high-dimensional feature space. The farthest pair of...
Abstract: This paper presents a fuzzy clustering-based technique for image segmentation. Many attemp...
Artículo de publicación ISISupport Vector Clustering (SVC) is an important density-based clustering ...
Fuzzy clustering can be helpful in finding natural vague boundaries in data. The fuzzy c-means metho...
The support vector machine (SVM) has provided higher performance than traditional learning machines ...
Over the last decade kernel based learning algorithms known as Support Vector Machines (SVMs) have b...
Support vector machines (SVMs) is a popular machine learning technique, which works effectively with...
Support vector machine (SVM) is one of effective biner classification technic with structural risk m...
Clustering algorithms are an integral part of both computational intelligence and pattern recognitio...
n this paper, a Complementary Fuzzy Support Vector Machine (CMTFSVM) technique is proposed to handle...
Fuzzy systems which are an artificial intelligent technique are applicable for controlling and decis...
Abstract: Outliers are data values that lie away from the general clusters of other data values. It ...
This thesis studied the methodologies to improve the quality of training data in order to enhance cl...
Abstract: Since SVM is very sensitive to outliers and noises in the training set, a fuzzy support ve...
To improve the performance of segmentation for the images corrupted by noise, many variants of stand...
One-class support vector machine (OCSVM) is one of the most popular algorithms in the one-class clas...
Abstract: This paper presents a fuzzy clustering-based technique for image segmentation. Many attemp...
Artículo de publicación ISISupport Vector Clustering (SVC) is an important density-based clustering ...
Fuzzy clustering can be helpful in finding natural vague boundaries in data. The fuzzy c-means metho...
The support vector machine (SVM) has provided higher performance than traditional learning machines ...
Over the last decade kernel based learning algorithms known as Support Vector Machines (SVMs) have b...
Support vector machines (SVMs) is a popular machine learning technique, which works effectively with...
Support vector machine (SVM) is one of effective biner classification technic with structural risk m...
Clustering algorithms are an integral part of both computational intelligence and pattern recognitio...
n this paper, a Complementary Fuzzy Support Vector Machine (CMTFSVM) technique is proposed to handle...
Fuzzy systems which are an artificial intelligent technique are applicable for controlling and decis...
Abstract: Outliers are data values that lie away from the general clusters of other data values. It ...
This thesis studied the methodologies to improve the quality of training data in order to enhance cl...
Abstract: Since SVM is very sensitive to outliers and noises in the training set, a fuzzy support ve...
To improve the performance of segmentation for the images corrupted by noise, many variants of stand...
One-class support vector machine (OCSVM) is one of the most popular algorithms in the one-class clas...
Abstract: This paper presents a fuzzy clustering-based technique for image segmentation. Many attemp...
Artículo de publicación ISISupport Vector Clustering (SVC) is an important density-based clustering ...
Fuzzy clustering can be helpful in finding natural vague boundaries in data. The fuzzy c-means metho...