Diabetes Mellitus Prediction Using Multi-objective Genetic Programming and Majority Voting
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- @InProceedings{Erdem:2019:ICCSE,
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author = "Mehmet Bilgehan Erdem and Zekiye Erdem and
Shahryar Rahnamayan",
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booktitle = "2019 14th International Conference on Computer Science
Education (ICCSE)",
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title = "Diabetes Mellitus Prediction Using Multi-objective
Genetic Programming and Majority Voting",
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year = "2019",
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pages = "953--958",
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month = aug,
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/ICCSE.2019.8845515",
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ISSN = "2473-9464",
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abstract = "Diabetes is one of the most serious diseases which is
becoming increasingly common in recent years. Diabetes
can be treated and its consequences are prevented or
delayed if predicted timely. This paper investigates an
evolutionary computation approach for diabetes
prediction. By using the multi-objective Genetic
Programming Symbolic Regression, the prediction
accuracy level of 79.1percent is achieved. Two
objectives are namely prediction accuracy and
complexity level of the created model (i.e., formula).
Moreover, a majority-voting scheme is proposed and
compared with other conventional classification
algorithms. A widely studied dataset for diabetes
prediction, the Pima Indian Diabetes dataset shared in
University of California Irvine dataset repository, has
been selected for conducting our experimental studies.
The work presented here has profound implications for
future applications of diabetes prediction and may one
help to solve the problem of diabetes by their timely
prediction.",
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notes = "Also known as \cite{8845515}",
- }
Genetic Programming entries for
Mehmet Bilgehan Erdem
Zekiye Erdem
Shahryar Rahnamayan
Citations