2020
DOI: 10.1109/access.2020.3015954
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Incremental Cost-Sensitive Support Vector Machine With Linear-Exponential Loss

Abstract: Incremental learning or online learning as a branch of machine learning has attracted more attention recently. For large-scale problems and dynamic data problem, incremental learning overwhelms batch learning, because of its efficient treatment for new data. However, class imbalance problem, which always appears in online classification brings a considerable challenge for incremental learning. The serious class imbalance problem may directly lead to a useless learning system. Cost-sensitive learning is an impo… Show more

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Cited by 22 publications
(5 citation statements)
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“…Consider an augmented dataset {(x i , y i )} l i=1 ={(x i ;1),y i )} l i=1 ⊆ X × Y , where x i indicates the ith augmented representation by appending 1 to the original feature representation x i , for a simple form without the bias term; X and Y = {1, −1} are feature and label spaces respectively, l is the size of dataset. According to [3], the formulation of CSLINEX-SVM is provided as follows.…”
Section: Linex Loss Functionmentioning
confidence: 99%
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“…Consider an augmented dataset {(x i , y i )} l i=1 ={(x i ;1),y i )} l i=1 ⊆ X × Y , where x i indicates the ith augmented representation by appending 1 to the original feature representation x i , for a simple form without the bias term; X and Y = {1, −1} are feature and label spaces respectively, l is the size of dataset. According to [3], the formulation of CSLINEX-SVM is provided as follows.…”
Section: Linex Loss Functionmentioning
confidence: 99%
“…When dealing with imbalanced dataset, LINEX loss function can impose linear penalty on the misclassification of the majority class and exponential penalty on the misclassification of the minority class. More details can refer to [3]. Since CSLINEX-SVM can successfully handle imbalanced learning problem and credit risk assessment possesses class-imbalanced characteristic, we aim to adopted CSLINEX-SVM in the application of credit risk assessment.…”
Section: Linex Loss Functionmentioning
confidence: 99%
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“…The algorithm was also adapted for regression [41][42][43]. The incremental approach was revisited more recently in [44], where a linear exponential cost-sensitive incremental SVM was defined. In the following, Equations ( 5)-( 14) are taken from [39].…”
Section: Kuhn-tucker Conditions and Vector Migration In Incremental-decremental Svmsmentioning
confidence: 99%
“…For example, the samples discarded from the majority class could be vital in efficiently training the classifiers [ 20 ]. Therefore, several studies have resorted to using algorithm-level methods such as ensemble learning and cost-sensitive learning to effectively handle the imbalanced data instead of data-level techniques [ 26 , 27 , 28 , 29 ].…”
Section: Introductionmentioning
confidence: 99%