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TrCSVM: a novel approach for the classification of melanoma skin cancer using transfer learning

Lokesh Singh (Department of Information Technology, National Institute of Technology, Raipur, India)
Rekh Ram Janghel (Department of Information Technology, National Institute of Technology, Raipur, India)
Satya Prakash Sahu (Department of Information Technology, National Institute of Technology, Raipur, India)

Data Technologies and Applications

ISSN: 2514-9288

Article publication date: 27 October 2020

Issue publication date: 13 January 2021

249

Abstract

Purpose

The study aims to cope with the problems confronted in the skin lesion datasets with less training data toward the classification of melanoma. The vital, challenging issue is the insufficiency of training data that occurred while classifying the lesions as melanoma and non-melanoma.

Design/methodology/approach

In this work, a transfer learning (TL) framework Transfer Constituent Support Vector Machine (TrCSVM) is designed for melanoma classification based on feature-based domain adaptation (FBDA) leveraging the support vector machine (SVM) and Transfer AdaBoost (TrAdaBoost). The working of the framework is twofold: at first, SVM is utilized for domain adaptation for learning much transferrable representation between source and target domain. In the first phase, for homogeneous domain adaptation, it augments features by transforming the data from source and target (different but related) domains in a shared-subspace. In the second phase, for heterogeneous domain adaptation, it leverages knowledge by augmenting features from source to target (different and not related) domains to a shared-subspace. Second, TrAdaBoost is utilized to adjust the weights of wrongly classified data in the newly generated source and target datasets.

Findings

The experimental results empirically prove the superiority of TrCSVM than the state-of-the-art TL methods on less-sized datasets with an accuracy of 98.82%.

Originality/value

Experiments are conducted on six skin lesion datasets and performance is compared based on accuracy, precision, sensitivity, and specificity. The effectiveness of TrCSVM is evaluated on ten other datasets towards testing its generalizing behavior. Its performance is also compared with two existing TL frameworks (TrResampling, TrAdaBoost) for the classification of melanoma.

Keywords

Citation

Singh, L., Janghel, R.R. and Sahu, S.P. (2021), "TrCSVM: a novel approach for the classification of melanoma skin cancer using transfer learning", Data Technologies and Applications, Vol. 55 No. 1, pp. 64-81. https://doi.org/10.1108/DTA-06-2020-0126

Publisher

:

Emerald Publishing Limited

Copyright © 2020, Emerald Publishing Limited

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