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Comparative study for model selection in sparse biological networks and a new alternative approach
Date
2020-01-01
Author
Kaygusuz, Mehmet Ali
Purutçuoğlu Gazi, Vilda
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URI
https://hdl.handle.net/11511/84216
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Artificial Intelligence and Applied Mathematics in Engineering Problems
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Department of Statistics, Book / Book chapter
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M. A. Kaygusuz and V. Purutçuoğlu Gazi,
Comparative study for model selection in sparse biological networks and a new alternative approach
. 2020, p. 126.