Organization Prediction of Breast Cancer Based on Machine Learning Techniques

Authors

  • Digeshwar Prasad Sahu Research Scholar Departement of Computer Science and Engineering Shri Rawatpura Sarkar University, Raipur (C.G.)
  • Dr. Ranu Pandey Assistant Professor Departement of Computer Science and Engineering Shri Rawatpura Sarkar University, Raipur (C.G.)

Keywords:

SNN, XGBoost, standardization, sterilization, K- Mean

Abstract

Breast cancer is the most common and deadly type of  cancer in the world. Based on machine learning algorithms such as XGBoost, random forest, logistic regression, and K-nearest neighbor, this paper establishes different models to classify and predict breast cancer, so as to provide a reference for the early diagnosis of breast cancer. Recall indicates the probability of detecting malignant cancer cells in medical diagnosis, which is of great significance for the classification of breast cancer, so this article takes recall as the primary evaluation index and considers the precision, accuracy, and F1-score evaluation indicators to evaluate and compare the prediction effect of each model. In order to eliminate the influence of different dimensional concepts on the effect of the model, the data are standardized. In order to find the optimal subset and improve the accuracy of the model, 15 features were screened out as input to the model through the Pearson correlation test.

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Published

2024-05-27

How to Cite

Digeshwar Prasad Sahu, & Dr. Ranu Pandey. (2024). Organization Prediction of Breast Cancer Based on Machine Learning Techniques. Innovative Research Thoughts, 10(2), 149–159. Retrieved from https://irt.shodhsagar.com/index.php/j/article/view/1545