PREDICTION AND DIAGNOSIS OF BREAST CANCER USING MACHINE LEARNING AND ENSEMBLE CLASSIFIERS
M. Arshad. CENTRAL ASIAN JOURNAL OF MATHEMATICAL THEORY AND COMPUTER SCIENCES, 4 (1):
49-56(Januar 2023)
Zusammenfassung
There are considerably more breast cancer fatalities each year. The most common kind of cancer and the main cause of death in women worldwide is this one. A healthy life depends on every development in the prognosis and diagnosis of cancer sickness. The standard of treatment and patient survival rate must be updated, thus an accurate cancer prognosis is crucial. Research has demonstrated that machine learning approaches are effective for the early detection and prediction of breast cancer and have grown in popularity. Random Forest, Logistic Regression, Xtreme Gradient, and AdaBoost Classifier are trained on the Breast Cancer Wisconsin Diagnostic dataset, and their efficacy is assessed and compared in this study using ensemble classifier and machine learning. The major objective of this study is to identify the most effective ensemble and machine learning classifiers for breast cancer detection and diagnosis in terms of Accuracy and AUC Score.
%0 Journal Article
%1 noauthororeditor
%A Arshad, Muhammad Waqas
%D 2023
%J CENTRAL ASIAN JOURNAL OF MATHEMATICAL THEORY AND COMPUTER SCIENCES
%K Breast Learning, Machine Prediction, cancer,
%N 1
%P 49-56
%T PREDICTION AND DIAGNOSIS OF BREAST CANCER USING MACHINE LEARNING AND ENSEMBLE CLASSIFIERS
%U https://cajmtcs.centralasianstudies.org/index.php/CAJMTCS/article/view/348/377
%V 4
%X There are considerably more breast cancer fatalities each year. The most common kind of cancer and the main cause of death in women worldwide is this one. A healthy life depends on every development in the prognosis and diagnosis of cancer sickness. The standard of treatment and patient survival rate must be updated, thus an accurate cancer prognosis is crucial. Research has demonstrated that machine learning approaches are effective for the early detection and prediction of breast cancer and have grown in popularity. Random Forest, Logistic Regression, Xtreme Gradient, and AdaBoost Classifier are trained on the Breast Cancer Wisconsin Diagnostic dataset, and their efficacy is assessed and compared in this study using ensemble classifier and machine learning. The major objective of this study is to identify the most effective ensemble and machine learning classifiers for breast cancer detection and diagnosis in terms of Accuracy and AUC Score.
@article{noauthororeditor,
abstract = {There are considerably more breast cancer fatalities each year. The most common kind of cancer and the main cause of death in women worldwide is this one. A healthy life depends on every development in the prognosis and diagnosis of cancer sickness. The standard of treatment and patient survival rate must be updated, thus an accurate cancer prognosis is crucial. Research has demonstrated that machine learning approaches are effective for the early detection and prediction of breast cancer and have grown in popularity. Random Forest, Logistic Regression, Xtreme Gradient, and AdaBoost Classifier are trained on the Breast Cancer Wisconsin Diagnostic dataset, and their efficacy is assessed and compared in this study using ensemble classifier and machine learning. The major objective of this study is to identify the most effective ensemble and machine learning classifiers for breast cancer detection and diagnosis in terms of Accuracy and AUC Score.},
added-at = {2023-09-02T12:06:29.000+0200},
author = {Arshad, Muhammad Waqas},
biburl = {https://www.bibsonomy.org/bibtex/26951f26f8f172519188e2b56cb47b89a/centralasian_20},
interhash = {9b4b40565dc6ded423f26e8d3edf9106},
intrahash = {6951f26f8f172519188e2b56cb47b89a},
issn = {2660-5309},
journal = {CENTRAL ASIAN JOURNAL OF MATHEMATICAL THEORY AND COMPUTER SCIENCES},
keywords = {Breast Learning, Machine Prediction, cancer,},
language = {english},
month = jan,
number = 1,
pages = {49-56},
timestamp = {2023-09-04T10:40:27.000+0200},
title = {PREDICTION AND DIAGNOSIS OF BREAST CANCER USING MACHINE LEARNING AND ENSEMBLE CLASSIFIERS},
url = {https://cajmtcs.centralasianstudies.org/index.php/CAJMTCS/article/view/348/377},
volume = 4,
year = 2023
}