Personal Information

  • Master Tutor
  • (Associate professor)
  • Name (Pinyin):

    yinqingyan
  • School/Department:

    理学院
  • Gender:

    Female
  • Professional Title:

    Associate professor
  • Status:

    Employed
  • Academic Titles:

    西安建筑科技大学理学院数学专业教师
  • Alma Mater:

    西安交通大学数学与统计学院

Other Contact Information

  • Email:

A New Imbalanced Learning Technique Based on the Parallel Genetic Algorithm of Feature Selection and Ensemble Learning

  • Release time:2024-08-09
  • Hits:
  • Affiliation of Author(s):

    理学院
  • Journal:

    Advances in Intelligent Systems and Computing
  • Key Words:

    中文关键字:不平衡分类;特征选择;集成学习;并行遗传算法,英文关键字:Imbalanced classification; Feature selection; Ense
  • Abstract:

    Ensemble learning currently is a popular and effective learning strategy in dealing with class-imbalance problems. For high dimensional small sample datasets, it is necessary to conduct effective feature selection to extract potentially useful information. Combined with parallel genetic feature selection algorithm with SMOTEBoost imbalanced learning algorithm, we proposed a novel imbalanced learning algorithm SMOTEBoost_PGA. It firstly utilizes PGA_GLM algorithm to select important feature, and then in each iteration it utilizes SMOTEBoost algorithm to learn the ensemble classifier on the subspace based the selected feature, and finally combines these ensemble learners. Experimental results show that the newly proposed algorithm has relatively higher AUC, F-measure, and G-mean values than many existing imbalanced learning methods. Moreover, it has approximately the shortest testing time as that of feature selection when the same number of weak classifiers are used, which is significantly faster than other imbalanced learning algorithms.
  • Note:

    殷清燕
  • First Author:

    zhengxiuyun,litizheng,shijiarong,yinqingyan
  • Indexed by:

    Journal paper
  • Volume:

    卷:
  • Issue:

    期:
  • Page Number:

    页:
  • Translation or Not:

    no
  • Date of Publication:

    2016-12-01
Back
Top