Optimizing Functional Network Representation of Multivariate Time Series
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Massimiliano Zanin | Ernestina Menasalvas | Francisco del Pozo | Pedro Sousa | David Papo | Ricardo Bajo | Juan García-Prieto | Stefano Boccaletti | S. Boccaletti | D. Papo | R. Bajo | M. Zanin | F. Pozo | E. Menasalvas | J. Garcia-Prieto | P. Sousa | Pedro A. C. Sousa
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