Combining local and global learners in the pairwise multiclass classification

被引:0
作者
Mohammad Ali Bagheri
Qigang Gao
Sergio Escalera
机构
[1] Dalhousie University,Faculty of Computer Science
[2] Centre de Visio per Computador,undefined
[3] Campus UAB,undefined
来源
Pattern Analysis and Applications | 2015年 / 18卷
关键词
Multiclass classification; Pairwise approach; One-versus-one;
D O I
暂无
中图分类号
学科分类号
摘要
Pairwise classification is a well-known class binarization technique that converts a multiclass problem into a number of two-class problems, one problem for each pair of classes. However, in the pairwise technique, nuisance votes of many irrelevant classifiers may result in a wrong class prediction. To overcome this problem, a simple, but efficient method is proposed and evaluated in this paper. The proposed method is based on excluding some classes and focusing on the most probable classes in the neighborhood space, named Local Crossing Off (LCO). This procedure is performed by employing a modified version of standard K-nearest neighbor and large margin nearest neighbor algorithms. The LCO method takes advantage of nearest neighbor classification algorithm because of its local learning behavior as well as the global behavior of powerful binary classifiers to discriminate between two classes. Combining these two properties in the proposed LCO technique will avoid the weaknesses of each method and will increase the efficiency of the whole classification system. On several benchmark datasets of varying size and difficulty, we found that the LCO approach leads to significant improvements using different base learners. The experimental results show that the proposed technique not only achieves better classification accuracy in comparison to other standard approaches, but also is computationally more efficient for tackling classification problems which have a relatively large number of target classes.
引用
收藏
页码:845 / 860
页数:15
相关论文
共 46 条
  • [1] Allwein EL(2001)Reducing multiclass to binary: a unifying approach for margin classifiers J Mach Learn Res 1 113-141
  • [2] Schapire RE(1995)Efficient classification for multiclass problems using modular neural networks IEEE Trans Neural Netw 6 117-124
  • [3] Singer Y(2011)Libsvm: a library for support vector machines ACM Trans Intell Syst Technol 2 1-27
  • [4] Anand R(2006)Statistical comparisons of classifiers over multiple data sets J Mach Learn Res 7 1-30
  • [5] Mehrotra K(1995)Solving multiclass learning problems via error-correcting output codes J Artif Intell Res 2 263-286
  • [6] Mohan CK(2010)On the decoding process in ternary error-correcting output codes IEEE Trans Pattern Anal Mach Intell 32 120-134
  • [7] Ranka S(2010)Re-coding ecocs without re-training Pattern Recognit Lett 31 555-562
  • [8] Chang CC(2006)Binary tree of svm: a new fast multiclass training and cassification algorithm IEEE Trans Neural Netw 17 696-704
  • [9] Lin CJ(2002)Round robin classification J Mach Learn Res 2 721-747
  • [10] Demsar J(2011)An empirical study of binary classifier fusion methods for multiclass classification Inform Fusion 12 111-130