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Computational Biology
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CIBCB 2007
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Inference of Gene Regulatory Networks using S-System: A Unified Approach
14 years 21 days ago
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Haixin Wang, Lijun Qian, Edward R. Dougherty
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Added
02 Jun 2010
Updated
02 Jun 2010
Type
Conference
Year
2007
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CIBCB
Authors
Haixin Wang, Lijun Qian, Edward R. Dougherty
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Computational Biology Study Group
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