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Glioma Classification of MR Brain Tumor Employing Machine Learning

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Figure

Figure 3 Proposed methodology for classification of the HGG and LGG tumor.
Fig 5. Graphical presentation of SVM technique
Table 2 Performance metric for binary classification using SVM and kNN classifier Classifier Sensitivity Specificity Accuracy

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