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Duccio Fanelli

Showing results (41-50 of 71) with videos related to

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Physical Review. E|December 15, 2016
Suppressing escape events in maps of the unit interval with demographic noiseCésar Parra-Rojas, Joseph D Challenger, Duccio Fanelli, et al.
Physical Review Letters|May 15, 2018
Hopping in the Crowd to Unveil Network TopologyMalbor Asllani, Timoteo Carletti, Francesca Di Patti, et al.
Journal of Theoretical Biology|December 21, 2010
Deterministic and stochastic aspects of VEGF-A production and the cooperative behavior of tumoral cell colonyPasquale Laise, Francesca Di Patti, Duccio Fanelli, et al.
Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics|June 1, 2004
Statistical theory of high-gain free-electron laser saturationJulien Barré, Thierry Dauxois, Giovanni De Ninno, et al.
Scientific Reports|August 7, 2015
Turing instabilities on Cartesian product networksMalbor Asllani, Daniel M Busiello, Timoteo Carletti, et al.
Journal of Theoretical Biology|July 12, 2019
Patterns of non-normality in networked systemsRiccardo Muolo, Malbor Asllani, Duccio Fanelli, et al.
Nature Communications|August 1, 2014
The theory of pattern formation on directed networksMalbor Asllani, Joseph D Challenger, Francesco Saverio Pavone, et al.
Journal of Mathematical Biology|December 17, 2013
Stochastic amplification of spatial modes in a system with one diffusing speciesLaura Cantini, Claudia Cianci, Duccio Fanelli, et al.
Journal of the Royal Society, Interface|April 30, 2025
Resolving the kinetics of an ensemble of muscle myosin motors via a temperature-dependent fitting procedureValentina Buonfiglio, Niccolò Zagli, Irene Pertici, et al.
Physical Review. E|December 24, 2021
Training of sparse and dense deep neural networks: Fewer parameters, same performanceLorenzo Chicchi, Lorenzo Giambagli, Lorenzo Buffoni, et al.
Pageof 8

Showing results (41-50 of 71) with videos related to

Sort By:
Pageof 8
Physical Review. E|December 15, 2016
Suppressing escape events in maps of the unit interval with demographic noiseCésar Parra-Rojas, Joseph D Challenger, Duccio Fanelli, et al.
Physical Review Letters|May 15, 2018
Hopping in the Crowd to Unveil Network TopologyMalbor Asllani, Timoteo Carletti, Francesca Di Patti, et al.
Journal of Theoretical Biology|December 21, 2010
Deterministic and stochastic aspects of VEGF-A production and the cooperative behavior of tumoral cell colonyPasquale Laise, Francesca Di Patti, Duccio Fanelli, et al.
Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics|June 1, 2004
Statistical theory of high-gain free-electron laser saturationJulien Barré, Thierry Dauxois, Giovanni De Ninno, et al.
Scientific Reports|August 7, 2015
Turing instabilities on Cartesian product networksMalbor Asllani, Daniel M Busiello, Timoteo Carletti, et al.
Journal of Theoretical Biology|July 12, 2019
Patterns of non-normality in networked systemsRiccardo Muolo, Malbor Asllani, Duccio Fanelli, et al.
Nature Communications|August 1, 2014
The theory of pattern formation on directed networksMalbor Asllani, Joseph D Challenger, Francesco Saverio Pavone, et al.
Journal of Mathematical Biology|December 17, 2013
Stochastic amplification of spatial modes in a system with one diffusing speciesLaura Cantini, Claudia Cianci, Duccio Fanelli, et al.
Journal of the Royal Society, Interface|April 30, 2025
Resolving the kinetics of an ensemble of muscle myosin motors via a temperature-dependent fitting procedureValentina Buonfiglio, Niccolò Zagli, Irene Pertici, et al.
Physical Review. E|December 24, 2021
Training of sparse and dense deep neural networks: Fewer parameters, same performanceLorenzo Chicchi, Lorenzo Giambagli, Lorenzo Buffoni, et al.
Pageof 8