An efficient class-dependent learning label approach using feature selection to improve multi-label classification algorithms

被引:1
|
作者
Zhao, Hao [1 ]
Li, Panpan [1 ]
机构
[1] Fujian Agr & Forestry Univ, Jinshan Coll, Fuzhou 350002, Fujian, Peoples R China
关键词
Feature selection; Normalization unsupervised-learning; Advanced hybrid MLC; Reduction in dimensions;
D O I
10.1007/s10586-024-04756-1
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Recently, multi-label categorization learning has emerged as a new area of study in machine learning since it offers a multi-dimensional perspective of the multi-dimensional object. To build a multi-label classification (MLC) system that is both quick and efficient, one must consider the large data environment. This paper introduces a new MLC model, RR-IPLST (Ridge Regression-Principal Label Space Transformation), which uses a combination of ridge regression and original label space transformation (IPLST). The model includes Advanced Orthogonal Projection to Latent Structures (AOPLS) for optimal dimensionality reduction, increasing data set relevance. IPLST uses Singular Value Decomposition (SVD) to identify label correlations, while RR mitigates multicollinearity problems. Unsupervised learning, especially the value learning method, refines label predictions. The proposed model is rigorously evaluated on ten diverse multi-label datasets and demonstrates its effectiveness. Support vector machine, simple Bayes polynomial, k nearest neighbor, decision trees, linear and discriminant analysis are five regularly used data set classification techniques whose outputs are compared. The simulation results showed that the application of the proposed solution is of higher quality compared to similar methods in terms of accuracy, precision, convergence, error measurement, stability and other tested parameters in different data sets. So that the evaluation and test results of the proposed method show a 92.21% improvement compared to other existing algorithms.
引用
收藏
页数:25
相关论文
共 50 条
  • [1] A label learning approach using competitive population optimization algorithm feature selection to improve multi-label classification algorithms
    Cui, Lianhe
    JOURNAL OF KING SAUD UNIVERSITY-COMPUTER AND INFORMATION SCIENCES, 2024, 36 (05)
  • [2] Learning Label-Specific Features and Class-Dependent Labels for Multi-Label Classification
    Huang, Jun
    Li, Guorong
    Huang, Qingming
    Wu, Xindong
    IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2016, 28 (12) : 3309 - 3323
  • [3] Multi-Label Classification of Learning Objects Using Clustering Algorithms Based on Feature Selection
    Amane M.
    Aissaoui K.
    Berrada M.
    International Journal of Emerging Technologies in Learning, 2022, 17 (20) : 248 - 260
  • [4] Optimization approach for feature selection in multi-label classification
    Lim, Hyunki
    Lee, Jaesung
    Kim, Dae-Won
    PATTERN RECOGNITION LETTERS, 2017, 89 : 25 - 30
  • [5] Feature selection for multi-label learning with streaming label
    Liu, Jinghua
    Li, Yuwen
    Weng, Wei
    Zhang, Jia
    Chen, Baihua
    Wu, Shunxiang
    NEUROCOMPUTING, 2020, 387 : 268 - 278
  • [6] Feature Selection for Multi-Label Learning
    Spolaor, Newton
    Monard, Maria Carolina
    Lee, Huei Diana
    PROCEEDINGS OF THE TWENTY-FOURTH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE (IJCAI), 2015, : 4401 - 4402
  • [7] Efficient Multi-Label Feature Selection Using Entropy-Based Label Selection
    Lee, Jaesung
    Kim, Dae-Won
    ENTROPY, 2016, 18 (11)
  • [8] Feature Selection for Hierarchical Multi-label Classification
    da Silva, Luan V. M.
    Cerri, Ricardo
    ADVANCES IN INTELLIGENT DATA ANALYSIS XIX, IDA 2021, 2021, 12695 : 196 - 208
  • [9] Feature Selection for Multi-label Classification Problems
    Doquire, Gauthier
    Verleysen, Michel
    ADVANCES IN COMPUTATIONAL INTELLIGENCE, IWANN 2011, PT I, 2011, 6691 : 9 - 16
  • [10] Multi-label Learning with Label-Specific Feature Selection
    Yan, Yan
    Li, Shining
    Yang, Zhe
    Zhang, Xiao
    Li, Jing
    Wang, Anyi
    Zhang, Jingyu
    NEURAL INFORMATION PROCESSING, ICONIP 2017, PT I, 2017, 10634 : 305 - 315