SVM &GA-CLUSTERING BASED FEATURE SELECTION APPROACH FOR BREAST CANCER DETECTION
R. Priya1, and S. Rizvi2. International Journal on Soft Computing, Artificial Intelligence and Applications (IJSCAI), 9 (4):
10(November 2020)
DOI: 10.5121/ijscai.2020.9401
Abstract
Mortality leading among women in developed countries is breast cancer. Breast cancer is women's second
most prominent cause of cancer mortality worldwide. In recent decades, women's high prevalence of breast
cancer has risen dramatically. This paper discussed several data analysis methods used to detect breast
cancer early. Breast cancer diagnosis distinguishes benign and malignant breast lumps. Using data
processing tools, we tackled this disease analysis. Data mining is an important step of library discovery
where intelligent methods are used to detect patterns. Several clinical breast cancer studies were
conducted using soft computing and machine learning techniques. Sometimes their algorithms are easier,
easier, or more comprehensive than others. This research is focused on genetic programming and machine
learning algorithms to reliably identify benign and malignant breast cancer. This study aimed to optimise
the testing algorithm. We used genetic programming methods to choose classification machines' best
features and parameter values. Data mining is an important step of library discovery where intelligent
methods are used to detect patterns. We are analysing data accessible from the U.C.I. deep-learning data
set in Wisconsin. In this experiment, we equate four Weka clustering strategies with genetic clustering. A
comparison of results reveals that sequential minimal optimization (S.M.O.) is better than I.B.K. and B.F.
Tree processes, i.e. 97.71%
%0 Journal Article
%1 noauthororeditor
%A Priya1, Rashmi
%A Rizvi2, Syed Wajahat Abbas
%D 2020
%J International Journal on Soft Computing, Artificial Intelligence and Applications (IJSCAI)
%K Breast Feature Machine S.M.O. WEKA and cancer learning selection
%N 4
%P 10
%R 10.5121/ijscai.2020.9401
%T SVM &GA-CLUSTERING BASED FEATURE SELECTION APPROACH FOR BREAST CANCER DETECTION
%U https://aircconline.com/ijscai/V9N4/9420ijscai01.pdf
%V 9
%X Mortality leading among women in developed countries is breast cancer. Breast cancer is women's second
most prominent cause of cancer mortality worldwide. In recent decades, women's high prevalence of breast
cancer has risen dramatically. This paper discussed several data analysis methods used to detect breast
cancer early. Breast cancer diagnosis distinguishes benign and malignant breast lumps. Using data
processing tools, we tackled this disease analysis. Data mining is an important step of library discovery
where intelligent methods are used to detect patterns. Several clinical breast cancer studies were
conducted using soft computing and machine learning techniques. Sometimes their algorithms are easier,
easier, or more comprehensive than others. This research is focused on genetic programming and machine
learning algorithms to reliably identify benign and malignant breast cancer. This study aimed to optimise
the testing algorithm. We used genetic programming methods to choose classification machines' best
features and parameter values. Data mining is an important step of library discovery where intelligent
methods are used to detect patterns. We are analysing data accessible from the U.C.I. deep-learning data
set in Wisconsin. In this experiment, we equate four Weka clustering strategies with genetic clustering. A
comparison of results reveals that sequential minimal optimization (S.M.O.) is better than I.B.K. and B.F.
Tree processes, i.e. 97.71%
@article{noauthororeditor,
abstract = {Mortality leading among women in developed countries is breast cancer. Breast cancer is women's second
most prominent cause of cancer mortality worldwide. In recent decades, women's high prevalence of breast
cancer has risen dramatically. This paper discussed several data analysis methods used to detect breast
cancer early. Breast cancer diagnosis distinguishes benign and malignant breast lumps. Using data
processing tools, we tackled this disease analysis. Data mining is an important step of library discovery
where intelligent methods are used to detect patterns. Several clinical breast cancer studies were
conducted using soft computing and machine learning techniques. Sometimes their algorithms are easier,
easier, or more comprehensive than others. This research is focused on genetic programming and machine
learning algorithms to reliably identify benign and malignant breast cancer. This study aimed to optimise
the testing algorithm. We used genetic programming methods to choose classification machines' best
features and parameter values. Data mining is an important step of library discovery where intelligent
methods are used to detect patterns. We are analysing data accessible from the U.C.I. deep-learning data
set in Wisconsin. In this experiment, we equate four Weka clustering strategies with genetic clustering. A
comparison of results reveals that sequential minimal optimization (S.M.O.) is better than I.B.K. and B.F.
Tree processes, i.e. 97.71%},
added-at = {2023-06-01T10:51:30.000+0200},
author = {Priya1, Rashmi and Rizvi2, Syed Wajahat Abbas},
biburl = {https://www.bibsonomy.org/bibtex/231c270a3e3cce7d308831b14cb3479e5/leninsha},
doi = {10.5121/ijscai.2020.9401},
interhash = {8abd74e0801118022d4df075235bd7d2},
intrahash = {31c270a3e3cce7d308831b14cb3479e5},
issn = {2319 - 1015 [Online]; 2319 - 4081 [Print]},
journal = {International Journal on Soft Computing, Artificial Intelligence and Applications (IJSCAI)},
keywords = {Breast Feature Machine S.M.O. WEKA and cancer learning selection},
language = {English},
month = {11},
number = 4,
pages = 10,
timestamp = {2023-06-01T10:51:30.000+0200},
title = {SVM &GA-CLUSTERING BASED FEATURE SELECTION APPROACH FOR BREAST CANCER DETECTION},
url = {https://aircconline.com/ijscai/V9N4/9420ijscai01.pdf},
volume = 9,
year = 2020
}