MACHINE LEARNING METHODS FOR BREAST CANCER CLASSIFICATION BY USING DATA SCIENCE TECHNIQUES

MACHINE LEARNING METHODS FOR BREAST CANCER CLASSIFICATION BY USING DATA SCIENCE TECHNIQUES

Authors

  • Azizjon Meliboev Faculty of Digital Technologies and Mathematics, Kokand University,

DOI:

https://doi.org/10.54613/ku.v11i11.969

Keywords:

Machine learning, Breast cancer, Data science, data analysis, technique, machine, model

Abstract

This study explores the sensitivity analysis of various machine learning methods applied to the problem of breast cancer classification. By examining the robustness and performance of different algorithms, we aim to identify the most reliable techniques for accurate diagnosis. We assess the impact of key parameters and data variations on model outcomes to provide a comprehensive understanding of each method's strengths and limitations. Our findings offer valuable insights into the selection and optimization of machine learning models for breast cancer detection, ultimately contributing to improved diagnostic accuracy and patient care.

Foydalanilgan adabiyotlar:

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Published

2024-06-30

Iqtiboslik olish

Meliboev, A. (2024). MACHINE LEARNING METHODS FOR BREAST CANCER CLASSIFICATION BY USING DATA SCIENCE TECHNIQUES . QO‘QON UNIVERSITETI XABARNOMASI, 11(11), 101–104. https://doi.org/10.54613/ku.v11i11.969

Issue

Section

Raqamli texnologiyalar / Digital technologies
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