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ABSTRACT
Cancer in whole have become a new normal in the ‘disease’ world and especially in this growing
generation. Many are contributing to the risk phenomenon such as dietary conditions. Lifestyle too
plays a major role here because many regret to do, eat or make something of a good will. Almost
no one is surveying these factors and these have led to a rapid growth on this tally for he past 20
years, or more. In the varied population of the Americas and to a wider aspect, this has become an
inevitable circumstance. In this case, female aging 40 and above are more prone to two inexorable
circumstances being Urinary Tract Infections(UTIs) in one hand and Breast Cancer in the other.
This has become a frequently researched and scary topic among not only the physicians and
researchers but with the youth population too. Till day there is not even a slightest cure to the
deadliest disease among them all.
As from the earlier times, Inhibiting is is better than cure. this still fits to these day among us all.
There are many kinds of tests and therapies to treat almost every time of cancers but till this day, a
cure is the biggest question. This has been the case since its inception. Awareness is being
created in the form of printing warning signs on the front of cigarette packets, chewing gums etc.,
but they must be mandatorily imposed upon the people to create a widespread impact.
Here in this paper Detection of breast cancer is easily elaborated to ease up the process before
going professionally to get a small view on the prediction of the disease. The need to detect this
disease earlier has been of course a growing concern among the people of every nation.
This Breast Cancer Prediction system is mainly aimed at predicting the accuracy on how furious
the cancer have spread or how not at all. This code describes if the patient have cancer or not at all
using the given input, predicting the accuracy.
Keywords— Random Forest Classifier, KNearest Neighbor (KNN) XGBoost,
Regression, Classification, Mining, Training, Testing