Section 01
[Introduction] Comparative Study of Machine Learning Models for Breast Cancer Diagnosis: Optimizing Clinical Decisions Centered on Recall Rate
This article conducts a comparative study of six mainstream machine learning models (logistic regression, decision tree, random forest, gradient boosting, XGBoost, neural network) for breast cancer diagnosis, based on the UCI Wisconsin Breast Cancer Dataset, with a focus on recall rate (to reduce false negative risks). The study found that logistic regression and neural network had the highest recall rate (97.62%), providing a reference for optimizing clinical decisions.