A new model for lung cancer prediction based on differential evolution algorithm and effective feature selection
Publish place: Journal of Mahani Mathematical Research، Vol: 14، Issue: 1
Publish Year: 1404
Type: Journal paper
Language: English
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Document National Code:
JR_KJMMRC-14-1_019
Index date: 4 February 2025
A new model for lung cancer prediction based on differential evolution algorithm and effective feature selection abstract
Lung cancer is one of the most dangerous and fatal diseases worldwide. By using advanced machine learning techniques and optimization algorithms, early prediction and diagnosis of this disease can be achieved. Early identification of lung cancer is an important approach that can increase the survival rate of patients. In this paper, a novel method for lung cancer prediction is proposed, which combines two important techniques: Support Vector Machine (SVM) and Differential Evolution (DE) algorithm. Firstly, using the differential evolution algorithm, important and suitable features for lung cancer prediction are extracted. Then, using the SVM classifier, a classification model is built for prediction. The proposed approach is implemented on two lung cancer databases and achieves a good level of accuracy, which is compared with four other methods: C4.5 decision tree, neural network, Naive Bayes classifier, and logistic regression. The proposed model, with high accuracy and generalization power, is a suitable model for lung cancer detection and can serve as a strong decision support system alongside medical professionals.
A new model for lung cancer prediction based on differential evolution algorithm and effective feature selection Keywords:
A new model for lung cancer prediction based on differential evolution algorithm and effective feature selection authors
Amid Khatibi Bardsiri
Computer Engineering Department, Bardsir Branch, Islamic Azad University, Bardsir, Iran
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