Comparative Performance of Deep Learning and Machine Learning Algorithms on Imbalanced Handwritten Data

Abstract

Imbalanced data is one of the challenges in a classification task in machine learning. Data disparity produces a biased output of a model regardless how recent the technology is. However, deep learning algorithms, such as deep belief networks showed promising results in many domains, especially in image processing. Therefore, in this paper, we will review the effect of imbalanced data disparity in classes using deep belief networks as the benchmark model and compare it with conventional machine learning algorithms, such as backpropagation neural networks, decision trees, naïve Bayes and support vector machine with MNIST handwritten dataset. The experiment shows that although the algorithm is stable and suitable for multiple domains, the imbalanced data distribution still manages to affect the outcome of the conventional machine learning algorithms.

Authors and Affiliations

A’inur A’fifah Amri, Amelia Ritahani Ismail, Abdullah Ahmad Zarir

Keywords

Related Articles

Computerised Speech Processing in Hearing Aids using FPGA Architecture

The development of computerized speech processing system is to mimic the natural functionality of human hearing, because of advent of technology that used Very Large Scale Integration (VLSI) devices such as Field Progra...

A Hybrid Steganography System based on LSB Matching and Replacement

This paper proposes a hybrid steganographic ap-proach using the least significant bit (LSB) technique for grayscale images. The proposed approach uses both LSB match-ing (LSB-M) and LSB replacement to hide the secret dat...

Roadmap to Project Management Office (PMO) and Automation using a Multi-Stage Fuzzy Rules System

The Project Management Office (PMO) has proven to be a successful approach to enhance the control on projects and improve their success rate. One of the main functions of the PMO is monitoring projects and ensuring that...

Impact of Cloud Computing on ERP implementations in Higher Education

Penetration of Higher Education in all regions is increasing all over the globe at a very fast pace. With the increase in the number of institutions offering higher education, ERP implementations has become one of the ke...

Deep Learning Technology for Predicting Solar Flares from (Geostationary Operational Environmental Satellite) Data

Solar activity, particularly solar flares can have significant detrimental effects on both space-borne and grounds based systems and industries leading to subsequent impacts on our lives. As a consequence, there is much...

Download PDF file
  • EP ID EP276859
  • DOI 10.14569/IJACSA.2018.090236
  • Views 100
  • Downloads 0

How To Cite

A’inur A’fifah Amri, Amelia Ritahani Ismail, Abdullah Ahmad Zarir (2018). Comparative Performance of Deep Learning and Machine Learning Algorithms on Imbalanced Handwritten Data. International Journal of Advanced Computer Science & Applications, 9(2), 258-264. https://www.europub.co.uk/articles/-A-276859