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HSDLM: A Hybrid Sampling With Deep Learning Method for Imbalanced Data Classification

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  • Khan Md. Hasib

    (Ahsanullah University of Science and Engineering, Bangladesh)

  • Nurul Akter Towhid

    (Jahangirnagar University, Bangladesh)

  • Md Rafiqul Islam

    (University of Technology Sydney (UTS), Australia)

Abstract

Imbalanced data presents many difficulties, as the majority of learners will be prejudice against the majority class, and in severe cases, may fully disregard the minority class. Over the last few decades, class inequality has been extensively researched using traditional machine learning techniques. However, there is relatively little analytical research in the field of deep learning with class inequality. In this article, the authors classify the imbalanced data with the combination of both sampling method and deep learning method. They propose a novel sampling-based deep learning method (HSDLM) to address the class imbalance problem. They preprocess the data with label encoding and remove the noisy data with the under-sampling technique edited nearest neighbor (ENN) algorithm. They also balance the data using the over-sampling technique SMOTE and apply parallelly three types of long short-term memory networks, which is a deep learning classifier. The experimental findings indicate that HSDLM is a promising and fruitful solution to working with strongly imbalanced datasets.

Suggested Citation

  • Khan Md. Hasib & Nurul Akter Towhid & Md Rafiqul Islam, 2021. "HSDLM: A Hybrid Sampling With Deep Learning Method for Imbalanced Data Classification," International Journal of Cloud Applications and Computing (IJCAC), IGI Global, vol. 11(4), pages 1-13, October.
  • Handle: RePEc:igg:jcac00:v:11:y:2021:i:4:p:1-13
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    Cited by:

    1. Zhou Li & Gengming Xie & Varsha Arya & Kwok Tai Chui, 2024. "Semantic Trajectory Planning for Industrial Robotics," International Journal on Semantic Web and Information Systems (IJSWIS), IGI Global, vol. 20(1), pages 1-10, January.

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