Support vector machines (SVMs) is a popular machine learning technique, which works effectively with balanced datasets. However, when it comes to imbalanced datasets, SVMs produce suboptimal classification models. On the other hand, the SVM algorithm is sensitive to outliers and noise present in the datasets. Therefore, although the existing class imbalance learning (CIL) methods can make SVMs less sensitive to class imbalance, they can still suffer from the problem of outliers and noise. Fuzzy SVMs (FSVMs) is a variant of the SVM algorithm, which has been proposed to handle the problem of outliers and noise. In FSVMs, training examples are assigned different fuzzy-membership values based on their importance, and these membership values are...
Rare events are involved in many challenging real world classification problems, where the minority ...
Part 3: Big Data Analysis and Machine LearningInternational audienceSupport Vector Machine (SVM) can...
A hybrid sampling technique is proposed by combining Complementary Fuzzy Support Vector Machine (CMT...
In medical datasets classification, support vector machine (SVM) is considered to be one of the most...
This thesis studied the methodologies to improve the quality of training data in order to enhance cl...
Imbalanced data learning is one of the most active and important fields in machine learning research...
The support vector machine (SVM) has provided higher performance than traditional learning machines ...
The support vector machine (SVM) has provided higher performance than traditional learning machines ...
Support Vector Machines is a very popular machine learning technique. De-spite of all its theoretica...
Support vector machine (SVM) is one of effective biner classification technic with structural risk m...
A hybrid sampling technique is proposed by combining Complementary Fuzzy Support Vector Machine (CMT...
Support Vector Machine (SVM) learning from imbalanced datasets, as well as most learning machines, c...
Linear Proximal Support Vector Machines (LPSVMs), like decision trees, classic SVM, etc. are origina...
n this paper, a Complementary Fuzzy Support Vector Machine (CMTFSVM) technique is proposed to handle...
National Research Foundation (NRF) Singapore under International Research Centres in Singapore Fundi...
Rare events are involved in many challenging real world classification problems, where the minority ...
Part 3: Big Data Analysis and Machine LearningInternational audienceSupport Vector Machine (SVM) can...
A hybrid sampling technique is proposed by combining Complementary Fuzzy Support Vector Machine (CMT...
In medical datasets classification, support vector machine (SVM) is considered to be one of the most...
This thesis studied the methodologies to improve the quality of training data in order to enhance cl...
Imbalanced data learning is one of the most active and important fields in machine learning research...
The support vector machine (SVM) has provided higher performance than traditional learning machines ...
The support vector machine (SVM) has provided higher performance than traditional learning machines ...
Support Vector Machines is a very popular machine learning technique. De-spite of all its theoretica...
Support vector machine (SVM) is one of effective biner classification technic with structural risk m...
A hybrid sampling technique is proposed by combining Complementary Fuzzy Support Vector Machine (CMT...
Support Vector Machine (SVM) learning from imbalanced datasets, as well as most learning machines, c...
Linear Proximal Support Vector Machines (LPSVMs), like decision trees, classic SVM, etc. are origina...
n this paper, a Complementary Fuzzy Support Vector Machine (CMTFSVM) technique is proposed to handle...
National Research Foundation (NRF) Singapore under International Research Centres in Singapore Fundi...
Rare events are involved in many challenging real world classification problems, where the minority ...
Part 3: Big Data Analysis and Machine LearningInternational audienceSupport Vector Machine (SVM) can...
A hybrid sampling technique is proposed by combining Complementary Fuzzy Support Vector Machine (CMT...