The breast cancer dataset in CANVAS was obtained from the University of Wisconsin Hospitals, Madison from Dr. William H. Wolberg. The features in the dataset, described below, have been categorized from 1 to 10.
Use the Nave Bayes methodology to develop a classification model for the Diagnosis.
Important: make sure your categories are represented by the factor data type in R and delete the rows with missing values. Use 30% test 70% training data
Features Domain
Sample code number id number
F1. Clump Thickness 1 10
F2. Uniformity of Cell Size 1 10
F3. Uniformity of Cell Shape 1 10
F4. Marginal Adhesion 1 10
F5. Single Epithelial Cell Size 1 10
F6. Bare Nuclei 1 10
F7. Bland Chromatin 1 10
F8. Normal Nucleoli 1 10
F9. Mitoses 1 10
Diagnosis Class: (2 for benign, 4 for malignant)

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