4.7 Article

Kernel Based Data-Adaptive Support Vector Machines for Multi-Class Classification

期刊

MATHEMATICS
卷 9, 期 9, 页码 -

出版社

MDPI
DOI: 10.3390/math9090936

关键词

classification; data-adaptive kernel functions; image data; multi-category classifier; predictive models; support vector machine

资金

  1. Fundamental Research Funds for the Central Universities
  2. Natural Science and Engineering Research Council of Canada (NSERC)
  3. CIHR Team at Image-Guided Prostate Cancer Management at the University of Western Ontario

向作者/读者索取更多资源

The article introduces the use of data-adaptive SVM for instance classification in multi-class classification problems and proposes a multi-class data-dependent kernel function to enhance classification accuracy. Through simulation studies and real dataset, the excellent performance of the method is demonstrated, especially in detecting rare class instances.
Imbalanced data exist in many classification problems. The classification of imbalanced data has remarkable challenges in machine learning. The support vector machine (SVM) and its variants are popularly used in machine learning among different classifiers thanks to their flexibility and interpretability. However, the performance of SVMs is impacted when the data are imbalanced, which is a typical data structure in the multi-category classification problem. In this paper, we employ the data-adaptive SVM with scaled kernel functions to classify instances for a multi-class population. We propose a multi-class data-dependent kernel function for the SVM by considering class imbalance and the spatial association among instances so that the classification accuracy is enhanced. Simulation studies demonstrate the superb performance of the proposed method, and a real multi-class prostate cancer image dataset is employed as an illustration. Not only does the proposed method outperform the competitor methods in terms of the commonly used accuracy measures such as the F-score and G-means, but also successfully detects more than 60% of instances from the rare class in the real data, while the competitors can only detect less than 20% of the rare class instances. The proposed method will benefit other scientific research fields, such as multiple region boundary detection.

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