Classification of Multi-class Imbalanced Data: Data Difficulty Factors and Selected Methods for Improving Classifiers
暂无分享,去创建一个
[1] Leandro L. Minku,et al. The impact of data difficulty factors on classification of imbalanced and concept drifting data streams , 2021, Knowledge and Information Systems.
[2] Szymon Wilk,et al. An Algorithm for Selective Preprocessing of Multi-class Imbalanced Data , 2017, CORES.
[3] Jerzy Stefanowski,et al. Discovering Minority Sub-clusters and Local Difficulty Factors from Imbalanced Data , 2017, DS.
[4] Bartosz Krawczyk,et al. Analyzing the oversampling of different classes and types of examples in multi-class imbalanced datasets , 2016, Pattern Recognit..
[5] Zhi-Hua Zhou,et al. ON MULTI‐CLASS COST‐SENSITIVE LEARNING , 2006, Comput. Intell..
[6] Yunqian Ma,et al. Imbalanced Learning: Foundations, Algorithms, and Applications , 2013 .
[7] Hamido Fujita,et al. Multi-Imbalance: An open-source software for multi-class imbalance learning , 2019, Knowl. Based Syst..
[8] Bartosz Krawczyk,et al. Learning from imbalanced data: open challenges and future directions , 2016, Progress in Artificial Intelligence.
[9] José Salvador Sánchez,et al. An Empirical Study of the Behavior of Classifiers on Imbalanced and Overlapped Data Sets , 2007, CIARP.
[10] Francisco Herrera,et al. Learning from Imbalanced Data Sets , 2018, Springer International Publishing.
[11] Nathalie Japkowicz,et al. A Machine Learning Perspective on Big Data Analysis , 2016 .
[12] Francisco Herrera,et al. An overview of ensemble methods for binary classifiers in multi-class problems: Experimental study on one-vs-one and one-vs-all schemes , 2011, Pattern Recognit..
[13] Jerzy Stefanowski,et al. Types of minority class examples and their influence on learning classifiers from imbalanced data , 2015, Journal of Intelligent Information Systems.
[14] Jerzy Stefanowski,et al. Using Information on Class Interrelations to Improve Classification of Multiclass Imbalanced Data: A New Resampling Algorithm , 2019, Int. J. Appl. Math. Comput. Sci..
[15] Jerzy Stefanowski,et al. Increasing the Interpretability of Rules Induced from Imbalanced Data by Using Bayesian Confirmation Measures , 2016, NFMCP@PKDD/ECML.
[16] Jerzy Stefanowski,et al. Evaluating Difficulty of Multi-class Imbalanced Data , 2017, ISMIS.
[17] Jerzy Stefanowski,et al. Dealing with Data Difficulty Factors While Learning from Imbalanced Data , 2016, Challenges in Computational Statistics and Data Mining.
[18] Jerzy Stefanowski,et al. Multi-class and feature selection extensions of Roughly Balanced Bagging for imbalanced data , 2018, Journal of Intelligent Information Systems.
[19] Gustavo E. A. P. A. Batista,et al. Class Imbalances versus Class Overlapping: An Analysis of a Learning System Behavior , 2004, MICAI.
[20] Mateusz Lango,et al. Tackling the Problem of Class Imbalance in Multi-class Sentiment Classification: An Experimental Study , 2019, Foundations of Computing and Decision Sciences.
[21] Taeho Jo,et al. Class imbalances versus small disjuncts , 2004, SKDD.
[22] Herna L. Viktor,et al. SCUT: Multi-class imbalanced data classification using SMOTE and cluster-based undersampling , 2015, 2015 7th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management (IC3K).
[23] Mikel Galar,et al. Analysing the classification of imbalanced data-sets with multiple classes: Binarization techniques and ad-hoc approaches , 2013, Knowl. Based Syst..
[24] Jerzy Stefanowski,et al. BRACID: a comprehensive approach to learning rules from imbalanced data , 2011, Journal of Intelligent Information Systems.