TRANSFER LEARNING BASED LIGHTWEIGHT ESSEMBLED MODEL FOR IMBALANCED BREST CANCER

Authors

  • Jashwanth Author
  • Asahi Author

DOI:

https://doi.org/10.64751/

Keywords:

Transfer Learning, Imbalanced Class, Classification, Deep Learning

Abstract

Accurate breast cancer detection using automated algorithms remains a problem within the literature. Although a plethora of work has tried to address this issue, an exact solution is yet to be found. This problem is further exacerbated by the fact that most of the existing datasets are imbalanced, i.e. the number of instances of a particular class far exceeds that of the others. In this paper, we propose a framework based on the notion of transfer learning to address this issue and focus our efforts on histopathological and imbalanced image classification. We use the popular VGG-19 as the base model and complement it with several state-of-theart techniques to improve the overall performance of the system. With the ImageNet dataset taken as the source domain, we apply the learned knowledge in the target domain consisting of histopathological images. With experimentation performed on a large-scale dataset consisting of 277,524 images, we show that the framework proposed in this paper gives superior performance than those available in the existing literature. Through numerical simulations conducted on a supercomputer, we also present guidelines for work in transfer learning and imbalanced image classification

Downloads

Published

2022-07-21

How to Cite

Jashwanth, & Asahi. (2022). TRANSFER LEARNING BASED LIGHTWEIGHT ESSEMBLED MODEL FOR IMBALANCED BREST CANCER. International Journal of Data Science and IoT Management System, 1(3), 14-23. https://doi.org/10.64751/

Similar Articles

21-30 of 389

You may also start an advanced similarity search for this article.