Publication Type : Conference Paper
Publisher : IEEE
Source : Scopus
Url : https://doi.org/10.1109/ICECA63461.2024.10801052
Keywords : Support vector machines; Breast Cancer; Breast cancer classification using machine learning; Breast cancer classifications; Breast cancer diagnosis; Features sets; Machine-learning; Statistical features; Support vector machine for breast cancer accuracy; Support vectors machine; Lung cancer
Campus : Bengaluru
School : School of Computing
Department : Computer Science and Engineering
Year : 2024
Abstract : Data science is a key part of medical research, especially in oncology. The diagnosis of medical diseases through data science and machine learning has transformed the classification of various illnesses such as cancers, which has not been paralleled due to high accuracy and efficiency. The model aims to give a thorough understanding of how breast cancer is categorized, while also providing a comprehensive exploration of data statistics. The present study aims at examining Support Vector Machines (SVM) for breast cancer diagnosis focusing on its comprehensive data science attributes. The research also discusses how some specific statistical features like Median, Mean, Mode, Variance, Standard Deviation, kurtosis, Skewness, and Quartiles could enhance the feature set from our dataset. These statistical measures provide an in-depth understanding of what our data looks like by capturing significant patterns, distributions and underlying structures that are required for accurate classification. By doing this SVM classifier is able to analyze dataset better leading to improved prediction outcomes in terms of precision and efficiency. Hence it can be observed from the findings that using this enhanced feature set improves the performance of a classifier in diagnosing breast cancer indicating more detailed statistical analysis should be done in pre-processing medical data. This research demonstrates how combining strong statistical attributes with cutting edge techniques in machine learning can revolutionize diagnostic tools towards increased accuracy.
Cite this Research Publication : Nikita Sharma, Diya Dubey, S. Santhanalakshmi, Enhancing Breast Cancer Diagnosis with Statistical Features using Support Vector Machines, Scopus, IEEE, 2024, https://doi.org/10.1109/ICECA63461.2024.10801052