Searching for just a few words should be enough to get started. If you need to make more complex queries, use the tips below to guide you.
Article type: Research Article
Authors: Rekha, G.a | Tyagi, Amit Kumarb; * | Krishna Reddy, V.a
Affiliations: [a] Department of Computer Science and Engineering, Koneru Lakshmaiah Education Foundation, Guntur 522502, India | [b] Lingaya’s Vidyapeeth, Faridabad 121002, India
Correspondence: [*] Corresponding author: Amit Kumar Tyagi, Lingaya’s Vidyapeeth, Faridabad 121002, Haryana, India. Tel.: +91 9487868518;E-mail: amitkrtyagi025@gmail.com.
Abstract: In numerous real-world applications/domains, the class imbalance problem is prevalent/hot topic to focus. In various existing work, for solving class imbalance problem, almost data is labeled as one class called majority class, while fewer data is labeled as the other class, called minority class (more important class to focus). But, none of the work has performed efficiently (in terms of accuracy). This work presents a comparison of the performance of several boosting and bagging techniques from imbalanced datasets. The wide range of application of data mining and machine learning encounters class imbalance problem. An imbalanced datasets consists of samples with skewed distribution and traditional methods show biased towards the negative (majority) samples. Note that popular pre-processing technique for handling class imbalance problems is called over-sampling. It balances the datasets to achieve a high classification rate and also avoids the bias towards majority class samples. Over-sampling technique takes full minority samples in the training data into consideration while performing classification. But, the presence of some noise (in the minority samples and majority samples) may degrade the classification performance. Hence, the work presents a performance comparison using boosting and bagging (i.e., with both techniques) with and without using noise filtering. This work evaluates the performance with the state of-the-art methods based on ensemble learning like AdaBoost, RUSBoost, SMOTEBoost, Bagging, OverBagging, SMOTEBagging on 25 imbalance binary class datasets with various Imbalance Ratios (IR). The experimental results show that our approach works as promising and effective for dealing with imbalanced datasets using metrics like F-Measure and AUC.
Keywords: Class imbalance problem, ensemble learning method, noise filter, boosting, bagging
DOI: 10.3233/HIS-190261
Journal: International Journal of Hybrid Intelligent Systems, vol. 15, no. 2, pp. 67-76, 2019
IOS Press, Inc.
6751 Tepper Drive
Clifton, VA 20124
USA
Tel: +1 703 830 6300
Fax: +1 703 830 2300
sales@iospress.com
For editorial issues, like the status of your submitted paper or proposals, write to editorial@iospress.nl
IOS Press
Nieuwe Hemweg 6B
1013 BG Amsterdam
The Netherlands
Tel: +31 20 688 3355
Fax: +31 20 687 0091
info@iospress.nl
For editorial issues, permissions, book requests, submissions and proceedings, contact the Amsterdam office info@iospress.nl
Inspirees International (China Office)
Ciyunsi Beili 207(CapitaLand), Bld 1, 7-901
100025, Beijing
China
Free service line: 400 661 8717
Fax: +86 10 8446 7947
china@iospress.cn
For editorial issues, like the status of your submitted paper or proposals, write to editorial@iospress.nl
如果您在出版方面需要帮助或有任何建, 件至: editorial@iospress.nl