Comparison of Conventional and Automated Machine Learning approaches for Breast Cancer Prediction
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- @InProceedings{B:2021:ICIRCA,
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author = "Akaramuthalvi J B and Suja Palaniswamy",
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title = "Comparison of Conventional and Automated Machine
Learning approaches for Breast Cancer Prediction",
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booktitle = "2021 Third International Conference on Inventive
Research in Computing Applications (ICIRCA)",
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year = "2021",
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pages = "1533--1537",
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month = sep,
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keywords = "genetic algorithms, genetic programming, TPOT",
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DOI = "doi:10.1109/ICIRCA51532.2021.9544863",
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abstract = "Breast cancer is a type of cancer in which the breast
cells grow out of control. It is one of the leading
cause for the high pace of death in women. Breast
cancer classification is mainly done with the help of
Machine Learning (ML) algorithms. In this work, we did
a comparative analysis by creating a framework using ML
and Auto ML algorithms (genetic programming) to
accurately classify the cells in the breast as
cancerous or non-cancerous. The work focused on
automating and optimizing the algorithms for better
prediction of cancerous cells. In Auto ML, Tree- based
Pipeline Optimization Tool (TPOT), a genetic
programming approach is used for finding the suitable
classifiers and to automatically select the significant
features and parameter values associated with the
classifiers. Wisconsin Breast cancer diagnostic
dataset, which comprises of digitized images taken from
fine needle aspirate of breast mass has been used in
this work. Evaluation based on recall, precision and
accuracy have showed good results.",
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notes = "Also known as \cite{9544863}
Amrita School of Engineering, Bengaluru, Amrita Vishwa
Vidyapeetham, India",
- }
Genetic Programming entries for
Akaramuthalvi J B
Suja Palaniswamy
Citations