Title :
Dynamic Sampling Approach to Training Neural Networks for Multiclass Imbalance Classification
Author :
Minlong Lin ; Ke Tang ; Xin Yao
Author_Institution :
Nature Inspired Comput. & Applic. Lab., Univ. of Sci. & Technol. of China, Hefei, China
Abstract :
Class imbalance learning tackles supervised learning problems where some classes have significantly more examples than others. Most of the existing research focused only on binary-class cases. In this paper, we study multiclass imbalance problems and propose a dynamic sampling method (DyS) for multilayer perceptrons (MLP). In DyS, for each epoch of the training process, every example is fed to the current MLP and then the probability of it being selected for training the MLP is estimated. DyS dynamically selects informative data to train the MLP. In order to evaluate DyS and understand its strength and weakness, comprehensive experimental studies have been carried out. Results on 20 multiclass imbalanced data sets show that DyS can outperform the compared methods, including pre-sample methods, active learning methods, cost-sensitive methods, and boosting-type methods.
Keywords :
learning (artificial intelligence); multilayer perceptrons; pattern classification; probability; sampling methods; DyS; MLP training selection probability estimation; class imbalance supervised learning problems; dynamic sampling method; multiclass imbalance classification; multilayer perceptrons; neural network training; training process epoch; Accuracy; Boosting; Heuristic algorithms; Sampling methods; Training; Training data; Cost-sensitive learning; dynamic sampling; multiclass imbalance learning; multilayer perceptrons;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2012.2228231