Comparision of Different Classifiers for Prediction of Breast Cancer

Main Article Content

Tintu P B
S Manju Priya

Abstract

The cell formed in the  breast are known as breast cancer. It occurs mainly in women and it may occur rarely in men also. It is considered as the most common ailment that can lead to large number of death in females every year. In spite of the factuality that cancer is treatable and can be relieve if treated at its early stages; many patients are screened for cancer only at a very late stage. Data mining technique such as classifications provides an efficient technique to classify data, where these methods are commonly used for diagnostic decision making. The Machine learning techniques propound various methods such as statistical and probabilistic methods which allow system to learn from past experiences to distinguish and identify patterns from a standard dataset. The research work presents a review of machine learning techniques which can be used in breast cancer disease detection by applying algorithms on breast cancer Wisconsin data set.  Algorithms such as Navies Bayes, Random Forest, Support Vector Machine, Adaboost and Decision Trees were used. The result outcome shows that Random Forest performs better than other techniques.

Article Details

How to Cite
P B, T. ., & Priya, S. M. . (2023). Comparision of Different Classifiers for Prediction of Breast Cancer. International Journal on Recent and Innovation Trends in Computing and Communication, 11(10s), 518–523. https://doi.org/10.17762/ijritcc.v11i10s.7688
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