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Optimizing Functional Network Representation of Multivariate Time Series

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Figure 1 | Schematic representation ofthe network reconstruction process, and examples of the obtained functional networks
Table 1 | List of the topological features considered in this study
Table 1 ofthe Methods section. The Figure clearly shows that the best  score  ( , 0.95) only occurs for a very specific selection of the pair of  features (namely, the Z –score of Motif 1 and the small-worldness),  whereas a generic choice of a pair of mea

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