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Vincenzo Cutello

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Entropy (Basel, Switzerland)|August 26, 2023
A Machine Learning Approach to Simulate Gene Expression and Infer Gene Regulatory NetworksFrancesco Zito, Vincenzo Cutello, Mario Pavone
Journal of the Royal Society, Interface|July 20, 2006
A multi-objective evolutionary approach to the protein structure prediction problemVincenzo Cutello, Giuseppe Narzisi, Giuseppe Nicosia
Nucleic Acids Research|November 13, 2010
Protein multiple sequence alignment by hybrid bio-inspired algorithmsVincenzo Cutello, Giuseppe Nicosia, Mario Pavone, et al.
Frontiers in Big Data|September 4, 2023
Discovering anomalies in big data: a review focused on the application of metaheuristics and machine learning techniquesClaudia Cavallaro, Vincenzo Cutello, Mario Pavone, et al.
Pageof 1

Showing results (1-10 of 4) with videos related to

Sort By:
Pageof 1
Entropy (Basel, Switzerland)|August 26, 2023
A Machine Learning Approach to Simulate Gene Expression and Infer Gene Regulatory NetworksFrancesco Zito, Vincenzo Cutello, Mario Pavone
Journal of the Royal Society, Interface|July 20, 2006
A multi-objective evolutionary approach to the protein structure prediction problemVincenzo Cutello, Giuseppe Narzisi, Giuseppe Nicosia
Nucleic Acids Research|November 13, 2010
Protein multiple sequence alignment by hybrid bio-inspired algorithmsVincenzo Cutello, Giuseppe Nicosia, Mario Pavone, et al.
Frontiers in Big Data|September 4, 2023
Discovering anomalies in big data: a review focused on the application of metaheuristics and machine learning techniquesClaudia Cavallaro, Vincenzo Cutello, Mario Pavone, et al.
Pageof 1