Many real-world classification problems come with costs which can vary for different types of misclassification. It is thus important to develop cost-sensitive classifiers which minimize the total misclassification cost. Although binary cost-sensitive classifiers have been well-studied, solving multicategory classification problems is still challenging. A popular approach to address this issue is to construct K classification functions for a K-class problem and remove the redundancy by imposing a sum-to-zero constraint. However, such method usually results in higher computational complexity and inefficient algorithms. In this paper, we propose a novel angle-based cost-sensitive classification framework for multicategory classification without the sum-to-zero constraint. Loss functions that included in the angle-based cost-sensitive classification framework are further justified to be Fisher consistent. To show the usefulness of the framework, two cost-sensitive multicategory boosting algorithms are derived as concrete instances. Numerical experiments demonstrate that proposed boosting algorithms yield competitive classification performances against other existing boosting approaches.
翻译:许多现实世界的分类问题涉及成本,而成本可能因不同类别的分类错误而不同,因此,重要的是开发成本敏感分类器,以尽量减少整个分类错误的成本。虽然对成本敏感的二进制分类器进行了认真研究,但解决多类分类问题仍然是挑战。一个解决这一问题的流行办法是为K类问题构建K分类功能,并通过强制实施从零到零的限制来消除冗余。然而,这种方法通常导致计算复杂性提高,而且算法效率低下。在本文中,我们提议为多类分类制定一个新的基于角度的成本敏感分类框架,而没有从零到零的限制。在基于角度的成本敏感的分类框架中所包含的损失功能,也有理由进一步保持一致。为了显示该框架的有用性,有两种成本敏感的多类增强算法作为具体的例子。数字实验表明,拟议的推进算法与其他现有的提振方法相比,能够产生竞争性的分类性表现。