Download PDFOpen PDF in browserHybrid Machine Learning Model of Extreme Learning Machine Radial basis function for Breast Cancer Detection and Diagnosis; a Multilayer Fuzzy Expert SystemEasyChair Preprint 18247 pages•Date: November 3, 2019AbstractMammography is often used as the most common laboratory method for the detection of breast cancer, yet associated with the high cost and many side effects. Machine learning prediction as an alternative method has shown promising results. This paper presents a method based on a multilayer fuzzy expert system for the detection of breast cancer using an extreme learning machine (ELM) classification model integrated with radial basis function (RBF) kernel called ELM-RBF, considering the Wisconsin dataset. The performance of the proposed model is further compared with a linear-SVM model. The proposed model outperforms the linear-SVM model with RMSE, R2, MAPE equal to 0.1719, 0.9374 and 0.0539, respectively. Furthermore, both models are studied in terms of criteria of accuracy, precision, sensitivity, specificity, validation, true positive rate (TPR), and false-negative rate (FNR). The ELM-RBF model for these criteria presents better performance compared to the SVM model. Keyphrases: Breast Cancer Detection, Confusion Matrix, Data Mining, Data Mining Technique, ELM model, Extreme Learning Machine, Extreme Learning Machine (ELM), Fuzzy Linguistic Variable, Malignant breast cancer, Radial Basis Function, Radial Basis Function (RBF), Support Vector Machine, Support Vector Machine (SVM), Wisconsin Dataset, breast cancer, breast cancer dataset, cancer mass, cross validation technique, developed country, elm rbf model, epithelial cell size, evaluation criterion, expert system, first module, fold cross, fuzzy rule, fuzzy system, hybrid machine learning, linguistic variable, machine learning, multilayer fuzzy expert system, negative rate, neural network, rmse r2 mape model
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