4.6 Article

Capped Linex Metric Twin Support Vector Machine for Robust Classification

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Summary: This paper proposes a novel support vector machine, called Linex-RSVM, for classification problems. It introduces the ramp Linex loss function, which provides advantages over existing SVMs such as avoiding the influence of outliers, sparseness, and differential treatment of instances based on their locations.

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