首页|A novel machine learning approach for breast cancer diagnosis
A novel machine learning approach for breast cancer diagnosis
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NSTL
Elsevier
Breast cancer disease is a major public health problem among women worldwide. This article proposes an expert system for the diagnosis of breast cancer disease based on an evolutionary algorithm known as Differential Evolution (DE) of a Radial-Based Function Kernel Extreme Learning Machines (RBF-KELM). In the structure of the RBF-KELM, there are two adjustable parameters of the RBF-kernel which are the penalty parameter C and the RBF-kernel's parameter (sigma). These parameters play a major role in the efficiency of RBF-KELM. In this study, the optimal values of these parameters have been obtained using a differential evolution (DE) algorithm. To validate the effectiveness of the suggested approach, DE-RBF-KELM was examined on the two datasets: The Mammo-graphic Image Analysis Society (MIAS) and the wisconsin breast cancer database (WBCD) and the results were satisfactory compared to conventional approaches.
Breast cancerMachine learningClassificationDeferential evolutionOptimizationCOMPONENT ANALYSISDIFFERENTIAL EVOLUTIONFAST COMPUTATIONFAULT-DETECTIONCLASSIFICATIONMOMENTS