2019
DOI: 10.1038/s41467-018-08160-3
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The structured backbone of temporal social ties

Abstract: In many data sets, information on the structure and temporality of a system coexists with noise and non-essential elements. In networked systems for instance, some edges might be non-essential or exist only by chance. Filtering them out and extracting a set of relevant connections is a non-trivial task. Moreover, mehods put forward until now do not deal with time-resolved network data, which have become increasingly available. Here we develop a method for filtering temporal network data, by defining an adequat… Show more

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Cited by 54 publications
(76 citation statements)
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References 41 publications
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“…[49] Earth-based experiments can utilise a much larger range of potential molecules [105] and also overcome the Boltzmann factor by using multiple lasers to first populate a high-lying initial state, then to drive the desired transition. For example, rovibronic transitions in KRb have recently [14] been used to constrain µ variation to a fractional change of less than 10 −14 /yr.…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…[49] Earth-based experiments can utilise a much larger range of potential molecules [105] and also overcome the Boltzmann factor by using multiple lasers to first populate a high-lying initial state, then to drive the desired transition. For example, rovibronic transitions in KRb have recently [14] been used to constrain µ variation to a fractional change of less than 10 −14 /yr.…”
Section: Discussionmentioning
confidence: 99%
“…Section 2 discusses previous constraints of variation in µ cosmologically using both high abundance molecules and high sensitivity transitions. Measurements of µ variation on Earth are also being pursued, [13,14] but these constraints are much less tight than astronomical observations (on order 10 −14 /yr for Earth-based experiments vs 10 −17 /yr for astronomical observations) due to the much shorter time intervals involved.…”
Section: Introductionmentioning
confidence: 99%
“…In this section, we summarize the EADM to detect significant links [19] and introduce the ETFM, our extension of the temporal fitness model [5], and the TDF, our extension of the well-established disparity filter [6].…”
Section: Significant Linksmentioning
confidence: 99%
“…In table 1, we summarize the acronyms used to indicate the new methodologies, the nomenclature of the article, and the parameters employed in the generation of the artificial networks. In section 2, we summarize the EADM and introduce the new approaches, namely, the ETFM (an extension of the temporal fitness model [5]) and the TDF (an extension of the disparity filter [6]). In section 3, we discuss our analytical and numerical findings for both artificial and real systems.…”
mentioning
confidence: 99%
“…Such "static" catalogues of patterns of firing partially fail at highlighting that the temporally coordinated firing of nodes gives rise to a dynamics of functional links 10-12 , i.e., to a temporal network [13][14][15] .The temporal network framework has recently emerged in order to take into account that for many systems, a static network representation is only a first approximation that hides very important properties. This has been made possible by the availability of temporally resolved data in communication and social networks in particular [16][17][18][19] : studies of these data have uncovered features such as broad distributions of contact or inter-contact times (burstiness) between individuals 16, 17 , multiple temporal and structural scales [19][20][21] , and a rich array of intrinsically dynamical structures that could not be unveiled within a static network framework [22][23][24][25] . Taking into account temporality has moreover been shown to have a strong impact in processes taking place on networks, in particular the propagation of diseases or of information 18,26,27 .…”
mentioning
confidence: 99%