학술논문

Exploring Machine Learning Classifiers for Breast Cancer Classification
Document Type
Article
Source
KSII Transactions on Internet and Information Systems (TIIS). Apr 30, 2024 18(4):860
Subject
Artificial intelligence
Data processing
Computations
Bioinformatics
Machine Learning
Breast cancer
Image Processing
Language
English
ISSN
1976-7277
Abstract
Breast cancer is a major health concern affecting women and men globally. Early detection and accurate classification of breast cancer are vital for effective treatment and survival of patients. This study addresses the challenge of accurately classifying breast tumors using machine learning classifiers such as MLP, AdaBoostM1, logit Boost, Bayes Net, and the J48 decision tree. The research uses a dataset available publicly on GitHub to assess the classifiers' performance and differentiate between the occurrence and non-occurrence of breast cancer. The study compares the 10-fold and 5-fold cross-validation effectiveness, showing that 10-fold cross-validation provides superior results. Also, it examines the impact of varying split percentages, with a 66% split yielding the best performance. This shows the importance of selecting appropriate validation techniques for machine learning-based breast tumor classification. The results also indicate that the J48 decision tree method is the most accurate classifier, providing valuable insights for developing predictive models for cancer diagnosis and advancing computational medical research.