Abstract
Breast Cancer is the most often identified cancer
among women and a major reason for the increased mortality
rate among women. As the diagnosis of this disease manually
takes long hours and the lesser availability of systems, there is a
need to develop the automatic diagnosis system for early
detection of cancer. The advanced engineering of natural image
classification techniques and Artificial Intelligence methods has
largely been used for the breast-image classification task. Data
mining techniques contribute a lot to the development of such a
system, Classification, and data mining methods are an effective
way to classify data. For the classification of benign and
malignant tumors, we have used classification techniques of
machine learning in which the machine learns from the past data
and can predict the category of new input. This study is a relative
study on the implementation of models using Support Vector
Machine (SVM), and Naïve Bayes on Breast cancer Wisconsin
(Original) Data Set. With respect to the results of accuracy,
precision, sensitivity, specificity, error rate, and f1 score, the
efficiency of each algorithm is measured and compared. Our
experiments have shown that SVM is the best for predictive
analysis with an accuracy of 99.28% and naïve Bayes with an
accuracy of 98.56%. It is inferred from this study that SVM is the
well-suited algorithm for prediction.
Publisher
Blue Eyes Intelligence Engineering and Sciences Engineering and Sciences Publication - BEIESP
Subject
Electrical and Electronic Engineering,Mechanics of Materials,Civil and Structural Engineering,General Computer Science
Cited by
1 articles.
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