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代价敏感学习中的损失函数设计
引用本文:李秋洁,赵亚琴,顾洲.代价敏感学习中的损失函数设计[J].控制理论与应用,2015,32(5):689-694.
作者姓名:李秋洁  赵亚琴  顾洲
作者单位:1. 南京林业大学机械电子工程学院,江苏南京,210037
2. 南京林业大学机械电子工程学院,江苏南京210037;东南大学自动化学院,江苏南京210096
基金项目:国家自然科学青年基金项目(31200496), 南京林业大学高学历人才基金项目(163040671)资助.
摘    要:一般的学习算法通过最小化分类损失使分类错误率最小化,而代价敏感学习则以最小化分类代价为目标,需构造代价敏感损失.本文探讨代价敏感损失的设计准则,首先介绍基于代价敏感风险优化的代价敏感学习方法,然后在Bayes最优分类理论框架下,提出两条代价敏感损失设计准则.接着采用两种常用代价敏感损失生成方法构造平方损失、指数损失、对数损失、支持向量机损失等经典损失函数的代价敏感扩展形式.根据所提出的设计准则,从理论上分析这些代价敏感损失的性能.最后通过实验表明,同时满足两条设计准则的代价敏感损失能有效降低分类代价,从而证明了本文提出的代价敏感损失设计准则的合理性.

关 键 词:学习算法  代价敏感学习  损失函数  Bayes最优决策  代价敏感损失
收稿时间:6/5/2014 12:00:00 AM
修稿时间:1/9/2015 12:00:00 AM

Design of loss function for cost-sensitive learning
LI Qiu-jie,ZHAO Ya-qin and GU Zhou.Design of loss function for cost-sensitive learning[J].Control Theory & Applications,2015,32(5):689-694.
Authors:LI Qiu-jie  ZHAO Ya-qin and GU Zhou
Affiliation:College of Mechanical and Electronic Engineering, Nanjing Forestry University,College of Mechanical and Electronic Engineering, Nanjing Forestry University,College of Mechanical and Electronic Engineering, Nanjing Forestry University
Abstract:Conventional learning algorithms minimize the classification error through minimizing the classification loss. However, the cost-sensitive learning minimizes the classification cost; thus, cost-sensitive losses have to be constructed. This paper studies the design criteria for cost-sensitive loss functions. Firstly, cost-sensitive learning methods based on cost-sensitive risk minimization are briefly introduced. Then, under the theory framework of Bayes optimal classification, two design guidelines of cost-sensitive loss function are proposed. The cost-sensitive extensions of several classic loss functions (e.g., square loss, exponential loss, log loss and support vector machine (SVM) loss) are generated via two most popular construction methods of cost-sensitive loss. The performances of these cost-sensitive losses are theoretically analyzed based on the proposed two design guidelines. Experimental results have shown that those cost-sensitive losses that satisfy both of the two design criteria significantly reduce classification costs, demonstrating the rationality of the proposed design criteria of cost-sensitive loss.
Keywords:learning algorithms  cost-sensitive learning  loss function  Bayes optimal decision  cost-sensitive risk
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