In recent years, the breast
cancer classification has piqued attention in the area of health-care
informatics which is the second leading cause of mortality in women due
to cancer. The spread of Breast Cancer growth and its high casualty has
prodded a ton of research for contemplating its causes and medicines.
The enormous number of genes and their entwining relations requires
progressed AI models, instead of simple statistical and correlation
analysis. Having the objective to propel the present status of knowledge
concerning the early determination of breast cancer, we utilized Random
Forest (RF), Logistic Regression(LR), Support Vector Machine(SVM), and
Gaussian Process(GP) classifiers, joined with testing unique and novel
biomarkers. This paper presents a correlation of these Machine Learning
(ML) algorithms by estimating their order test exactness, and their
sensitivity and specificity esteem. For the execution of the ML
calculations, the dataset was divided into 80% for the training phase,
and 20% for the testing phase. Results show that Gaussian Process
performed well with 90% test exactness on the order task.