Comparing Genetic Programming with Other Data Mining Techniques on Prediction Models
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- @InProceedings{Azimlu:2019:ICCSE,
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author = "Fateme Azimlu and Shahryar Rahnamayan and
Masoud Makrehchi and Naveen Kalra",
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booktitle = "2019 14th International Conference on Computer Science
Education (ICCSE)",
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title = "Comparing Genetic Programming with Other Data Mining
Techniques on Prediction Models",
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year = "2019",
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pages = "785--791",
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month = aug,
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/ICCSE.2019.8845381",
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ISSN = "2473-9464",
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abstract = "Prediction is one of the most important tasks in the
machine learning field. Data scientists employ various
learning methods to find the most appropriate and
accurate model for each family of applications or
dataset. This study compares the symbolic regression
using genetic programming (GP), with conventional
machine learning techniques. In cases it is required to
model an unknown, poorly understood, and/or complicated
system. In these cases, we use genetic programming to
generate a symbolic model without using any pre-known
model. In this paper, the GP is studied as a tool for
prediction in different types of datasets and conducted
experiments to verify the superiority of GP over
conventional models in certain conditions and datasets.
The accuracy of GP-based regression results are
compared with other machine learning techniques, and
are found to be more accurate in certain conditions.",
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notes = "Also known as \cite{8845381}",
- }
Genetic Programming entries for
Fateme Azimlu
Shahryar Rahnamayan
Masoud Makrehchi
Naveen Kalra
Citations