Journal ArticleOpen Access
Performance Analysis of Different Classifiers Used In Detecting Benign And Malignant Cells of Breast Cancer
Author Affiliations
Pabna University of Science and Technology, Hajee Mohammad Danesh Science and Technology University, Leading University
Published InProceedings of International Exchange and Innovation Conference on Engineering & Sciences (IEICES)
Year2020
Citations1
Abstract
Breast cancer is the most common disease now a days. To get an early detection the target is to find an efficient way to use scientific investigation, because early detection is the only way to remove cancer cell. To predict the accuracy of breast cancer detection, researchers have used different classification techniques. In this paper random forest, Support vector machine, XGBoost, ANN and CNN have been used to analyze and compare the performance. A comparative study is done on these five classifiers using different accuracy measurements like performance, accuracy rate. This study shows that CNN gives the high performance among others.
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