Machine Learning Approach for Classification of Cancer Stages
DOI:
https://doi.org/10.32628/CSEIT1953173Keywords:
CSV Data File Codes; Machine Learning Cancer Disease; Info Gain, Malignant, BenignAbstract
The simplest form of health care is diagnosis and prevention. of disease. Machine learning (ML) methods help achieve this goal. This project aims to compare method of computer aided medical diagnoses. The ?rst of these methods is a classify disease diagnosis according to their data. This involves the training of an Arti?cial Neural Network to respond to several patient parameters. And also comparing various classification methods the purpose research classifier classi?es the patients in two class ?rst is malignant and second is benign.
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