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Temporal network

A temporal network, also known as a time-varying network, is a network whose links are active only at certain points in time. Each link carries information on when it is active, along with other possible characteristics such as a weight. Time-varying networks are of particular relevance to spreading processes, like the spread of information and disease, since each link is a contact opportunity and the time ordering of contacts is included.

Examples of time-varying networks include communication networks where each link is relatively short or instantaneous, such as phone calls or e-mails.[1][2] Information spreads over both networks, and some computer viruses spread over the second. Networks of physical proximity, encoding who encounters whom and when, can be represented as time-varying networks.[3] Some diseases, such as airborne pathogens, spread through physical proximity. Real-world data on time resolved physical proximity networks has been used to improve epidemic modeling.[4] Neural networks and brain networks can be represented as time-varying networks since the activation of neurons are time-correlated.[5]

Time-varying networks are characterized by intermittent activation at the scale of individual links. This is in contrast to various models of network evolution, which may include an overall time dependence at the scale of the network as a whole.

Applicability edit

Time-varying networks are inherently dynamic, and used for modeling spreading processes on networks. Whether using time-varying networks will be worth the added complexity depends on the relative time scales in question. Time-varying networks are most useful in describing systems where the spreading process on a network and the network itself evolve at similar timescales.[6]

Let the characteristic timescale for the evolution of the network be  , and the characteristic timescale for the evolution of the spreading process be  . A process on a network will fall into one of three categories:

  • Static approximation – where  . The network evolves relatively slowly, so the dynamics of the process can be approximated using a static version of the network.
  • Time-varying network – where  . The network and the process evolve at comparable timescales so the interplay between them becomes important.
  • Annealed approximation – where  . The network evolves relatively rapidly, so the dynamics of the process can be approximated using a time averaged version of the network.

The flow of data over the internet is an example for the first case, where the network changes very little in the fraction of a second it takes for a network packet to traverse it.[7] The spread of sexually transmitted diseases is an example of the second, where the prevalence of the disease spreads in direct correlation to the rate of evolution of the sexual contact network itself.[8] Behavioral contagion is an example of the third case, where behaviors spread through a population over the combined network of many day-to-day social interactions.[9]

Representations edit

There are three common representations for time-varying network data.[10]

  • Contact sequences – if the duration of interactions are negligible, the network can be represented as a set   of contacts   where   and   are the nodes and   the time of the interaction. Alternatively, it can be represented as an edge list   where each edge   is a pair of nodes and has a set of active times  .
  • Interval graphs – if the duration of interactions are non-negligible,   becomes a set of intervals over which the edge   is active.  
  • Snapshots – time-varying networks can also be represented as a series of static networks, one for each time step.

Properties edit

The measures used to characterize static networks are not immediately transferable to time-varying networks. See Path, Connectedness, Distance, Centrality. However, these network concepts have been adapted to apply to time-varying networks.

Time respecting paths edit

Time respecting paths are the sequences of links that can be traversed in a time-varying network under the constraint that the next link to be traversed is activated at some point after the current one. Like in a directed graph, a path from   to   does not mean there is a path from   to  . In contrast to paths in static and evolving networks, however, time respecting paths are also non-transitive. That is to say, just because there is a path from   to   and from   to   does not mean that there is a path from   to  . Furthermore, time respecting paths are themselves time-varying, and are only valid paths during a specific time interval.[11]

Reachability edit

While analogous to connectedness in static networks, reachability is a time-varying property best defined for each node in the network. The set of influence of a node   is the set of all nodes that can be reached from   via time respecting paths, note that it is dependent on the start time  . The source set of a node   is the set of all nodes that can reach   via time respecting paths within a given time interval. The reachability ratio can be defined as the average over all nodes   of the fraction of nodes within the set of influence of  .[12]

Connectedness of an entire network is less conclusively defined, although some have been proposed. A component may be defined as strongly connected if there is a directed time respecting path connecting all nodes in the component in both directions. A component may be defined as weakly connected if there is an undirected time respecting path connecting all nodes in the component in both directions.[13] Also, a component may be defined as transitively connected if transitivity holds for the subset of nodes in that component.

Causal fidelity edit

Causal fidelity quantifies the goodness of the static approximation of a temporal network. Such a static approximation is generated by aggregating the edges of a temporal network over time. The idea of causal fidelity is to compare the number of paths between all node pairs in the temporal network   (that is, all time respecting paths) with the number of paths   between all nodes in the static approximation of the network.[14] The causal fidelity is then defined by

 .

Since in   only time respecting paths are considered,  , and consequently  . A high causal fidelity   means that the considered temporal network is well approximated by its static (aggregated) counterpart. If  , then most node pairs that are reachable in the static representation are not connected by time respecting paths in the temporal network.

Latency edit

Also called temporal distance, latency is the time-varying equivalent to distance. In a time-varying network any time respecting path has a duration, namely the time it takes to follow that path. The fastest such path between two nodes is the latency, note that it is also dependent on the start time. The latency from node   to node   beginning at time   is denoted by  .

Centrality measures edit

Measuring centrality on time-varying networks involves a straightforward replacement of distance with latency.[15] For discussions of the centrality measures on a static network see Centrality.

  • Closeness centrality is large for nodes   that are close to all other nodes (i.e. have small latency   for all  )
 
  • Betweenness centrality is large for nodes that are often a part of the smallest latency paths between other pairs of nodes. It is defined as the ratio of the number of smallest latency paths from   and   that pass through   to the total number of smallest latency paths from   and  
 
The time-varying nature of latency, specifically that it will become infinity for all node pairs as the time approaches the end of the network interval used, makes an alternative measure of closeness useful. Efficiency uses instead the reciprocal of the latency, so the efficiency approaches zero instead of diverging. Higher values for efficiency correspond to more central nodes in the network.
 

Temporal patterns edit

Time-varying network allow for analysis of explicit time dependent properties of the network. It is possible to extract recurring and persistent patterns of contact from time-varying data in many ways. This is an area of ongoing research.

  • Characteristic times of the system can be found by looking for distinct changes in a variable, such as the reachability ratio. For example, if one allows only a finite waiting time at all nodes in calculating latency, one can find interesting patterns in the resulting reachability ratio. For a mobile call network, the reachability ratio has been found to increase dramatically if one allows delays of at least two days, and for the airline network the same effect has been found at around 30 minutes.[16] Moreover, the characteristic time scale of a temporal network is given by the mode of the distribution of shortest path durations. This distribution can be calculated using the reachability between all node pairs in the network.[14]
  • Persistent patterns are ones that reoccur frequently in the system. They can be discovered by averaging over different   across the time interval of the system and looking for patterns that reoccur over a specified threshold.[17]
  • Motifs are specific temporal patterns that occur more often the expected in a system. The time-varying network of Facebook wall postings, for example, has higher frequency of chains, stars, and back and forth interactions that could be expected for a randomized network.[18]
  • Egocentric Temporal motifs can be used to exploit temporal ego-networks. Due to their first-order complexity can be counted in large graphs in a reasonable execution time. For example, Longa et al. [19] show how to use Egocentric Temporal Motifs for measuring distances among face-to-face interaction networks in different social contexts.
  • Detecting missing links

Dynamics edit

Time-varying networks allow for the analysis of an entirely new dimension of dynamic processes on networks. In cases where the time scales of evolution of the network and the process are similar, the temporal structure of time-varying networks has a dramatic impact on the spread of the process over the network.

Burstiness edit

The time between two consecutive events, for an individual node or link, is called the inter-event time. The distribution of inter-event times of a growing number of important, real-world, time-varying networks have been found to be bursty, meaning inter-event times are very heterogeneous – they have a heavy-tailed distribution. This translates to a pattern of activation where activity comes in bursts separated by longer stretches of inactivity.[20]

Burstiness of inter-event times can dramatically slow spreading processes on networks,[21] which has implications for the spread of disease, information, ideas, and computer viruses. However, burstiness can also accelerate spreading processes, and other network properties also have an effect on spreading speed.[22] Real-world time-varying networks may thus promote spreading processes despite having a bursty inter-event time distribution.[23]

Burstiness as an empirical quantity can be calculated for any sequence of inter-event times,  , by comparing the sequence to one generated by a Poisson process. The ratio of the standard deviation,  , to the mean,  , of a Poisson process is 1. This measure compares   to 1.

 

Burstiness varies from −1 to 1. B = 1 indicates a maximally bursty sequence, B = 0 indicates a Poisson distribution, and B = −1 indicates a periodic sequence.[24]

See also edit

References edit

  1. ^ Karsai, M.; Perra, N.; Vespignani, A. (2015). "Time-varying networks and the weakness of strong ties" (PDF). Sci. Rep. 4: 4001. arXiv:1303.5966. Bibcode:2014NatSR...4E4001K. doi:10.1038/srep04001. PMC 3918922. PMID 24510159.
  2. ^ J.-P. Eckmann, E. Moses, and D. Sergi. Entropy of dialogues creates coherent structures in e-mail traffic" Proc. Natl. Acad. Sci. USA 2004; 101:14333–14337. https://www.weizmann.ac.il/complex/EMoses/pdf/EntropyDialogues.pdf
  3. ^ Eagle, N.; Pentland, A. (2006). "Reality mining: sensing complex social systems". Pers Ubiquit Comput. 10 (4): 255–268. doi:10.1007/s00779-005-0046-3. S2CID 1766202.
  4. ^ Stehle, J.; Voirin, N.; Barrat, A.; Cattuto, C.; Colizza, V.; Isella, L.; Regis, C.; Pinton, J.-F.; Khanafer, N.; Vanhems, P. (2011). "Simulation of an SEIR infectious disease model on the dynamic contact network of conference attendees". BMC Medicine. 9: 87. arXiv:1108.4841. doi:10.1186/1741-7015-9-87. PMC 3162551. PMID 21771290.
  5. ^ Holme, P.; Saramäki, J. (2012). "Temporal Networks". Phys. Rep. 519 (3): 102. arXiv:1108.1780. Bibcode:2012PhR...519...97H. doi:10.1016/j.physrep.2012.03.001. S2CID 1920175.
  6. ^ Holme, P.; Saramäki, J. (2012). "Temporal Networks". Phys. Rep. 519 (3): 99–100. arXiv:1108.1780. Bibcode:2012PhR...519...97H. doi:10.1016/j.physrep.2012.03.001. S2CID 1920175.
  7. ^ Pastor-Satorras, R., and Alessandro Vespignani. Evolution and Structure of the Internet: A Statistical Physics Approach. Cambridge, UK: Cambridge UP, 2004. <http://fizweb.elte.hu/download/Fizikus-MSc/Infokommunikacios-halozatok-modelljei/Evo-and-Struct-of-Internet.pdf>
  8. ^ Masuda, N; Holme, P (2013). "Predicting and controlling infectious disease epidemics using temporal networks". F1000Prime Rep. 5: 6. doi:10.12703/P5-6. PMC 3590785. PMID 23513178.
  9. ^ Thompson, Clive. "Are Your Friends Making You Fat?" The New York Times. The New York Times, 12 Sept. 2009. Web. <https://www.nytimes.com/2009/09/13/magazine/13contagion-t.html?pagewanted=all&_r=0>
  10. ^ P. Holme, J. Saramäki. Temporal Networks. Phys. Rep. 519, 103–104; 10.1016/j.physrep.2012.03.001 (2012)
  11. ^ P. Holme, J. Saramäki. Temporal Networks. Phys. Rep. 519, 104–105; 10.1016/j.physrep.2012.03.001 (2012)
  12. ^ Holme, P. (2005). "Network reachability of real-world contact sequences". Phys Rev E. 71 (4): 046119. arXiv:cond-mat/0410313. Bibcode:2005PhRvE..71d6119H. doi:10.1103/physreve.71.046119. PMID 15903738. S2CID 13249467.
  13. ^ V. Nicosia, J. Tang, M. Musolesi, G. Russo, C. Mascolo, and V. Latora. Components in time-varying graphs. e-print arXiv:1106.2134.
  14. ^ a b Lentz, Hartmut H. K.; Selhorst, Thomas; Sokolov, Igor M. (2013-03-11). "Unfolding Accessibility Provides a Macroscopic Approach to Temporal Networks". Physical Review Letters. 110 (11). American Physical Society (APS): 118701. arXiv:1210.2283. Bibcode:2013PhRvL.110k8701L. doi:10.1103/physrevlett.110.118701. ISSN 0031-9007. PMID 25166583. S2CID 10932514.
  15. ^ Grindrod, P.; Parsons, M. C.; Higham, D. J.; Estrada, E. (2011). "Communicability across evolving networks" (PDF). Phys. Rev. E. 81 (4): 046120. Bibcode:2011PhRvE..83d6120G. doi:10.1103/PhysRevE.83.046120. PMID 21599253.
  16. ^ Pan, R. K.; Saramaki, J. (2011). "Path lengths, correlations, and centrality in temporal networks". Phys. Rev. E. 84 (1): 016105. arXiv:1101.5913. Bibcode:2011PhRvE..84a6105P. doi:10.1103/PhysRevE.84.016105. PMID 21867255. S2CID 9306683.
  17. ^ M. Lahiri and T. Y. Berger-Wolf. Mining periodic behavior in dynamic social networks. Eighth IEEE International Conference on Data Mining, 2008. http://compbio.cs.uic.edu/papers/LahiriBergerWolf_PeriodicBehavior08.pdf
  18. ^ Q. Zhao, Y. Tian, Q. He, N. Oliver, R. Jin, and W.-C. Lee.Communication motifs: A tool to characterize social communications. In Proceedings of the 19th ACM international conference on Information and knowledge management, page 1645, 2010.
  19. ^ A. Longa, G. Cencetti, B. Lepri and A. Passerini. An efficient procedure for mining egocentric temporal motifs. In Data Mining and Knowledge Discovery 36.1 (2022): 355-378
  20. ^ Holme, P.; Saramäki, J. (2012). "Temporal Networks". Phys. Rep. 519 (3): 118–120. arXiv:1108.1780. Bibcode:2012PhR...519...97H. doi:10.1016/j.physrep.2012.03.001. S2CID 1920175.
  21. ^ A. Vazquez, B. Racz, A. Lukacs, and A.-L. Barabasi. Impact of non-poissonian activity patterns on spreading processes" Phys. Rev. Lett. 98:158702, 2007. http://journals.aps.org/prl/abstract/10.1103/PhysRevLett.98.158702
  22. ^ Horváth, Dávid X; Kertész, János (2014-07-28). "Spreading dynamics on networks: the role of burstiness, topology and non-stationarity". New Journal of Physics. 16 (7): 073037. arXiv:1404.2468. Bibcode:2014NJPh...16g3037H. doi:10.1088/1367-2630/16/7/073037. ISSN 1367-2630.
  23. ^ Gernat, Tim; Rao, Vikyath D.; Middendorf, Martin; Dankowicz, Harry; Goldenfeld, Nigel; Robinson, Gene E. (2018-02-13). "Automated monitoring of behavior reveals bursty interaction patterns and rapid spreading dynamics in honeybee social networks". Proceedings of the National Academy of Sciences. 115 (7): 1433–1438. Bibcode:2018PNAS..115.1433G. doi:10.1073/pnas.1713568115. ISSN 0027-8424. PMC 5816157. PMID 29378954.
  24. ^ Goh, K.-I.; Barabasi, A.-L. (2008). "Burstiness and memory in complex systems" (PDF). EPL. 81 (4): 48002. arXiv:physics/0610233. Bibcode:2008EL.....8148002G. doi:10.1209/0295-5075/81/48002. S2CID 8352442.

temporal, network, temporal, network, also, known, time, varying, network, network, whose, links, active, only, certain, points, time, each, link, carries, information, when, active, along, with, other, possible, characteristics, such, weight, time, varying, n. A temporal network also known as a time varying network is a network whose links are active only at certain points in time Each link carries information on when it is active along with other possible characteristics such as a weight Time varying networks are of particular relevance to spreading processes like the spread of information and disease since each link is a contact opportunity and the time ordering of contacts is included Examples of time varying networks include communication networks where each link is relatively short or instantaneous such as phone calls or e mails 1 2 Information spreads over both networks and some computer viruses spread over the second Networks of physical proximity encoding who encounters whom and when can be represented as time varying networks 3 Some diseases such as airborne pathogens spread through physical proximity Real world data on time resolved physical proximity networks has been used to improve epidemic modeling 4 Neural networks and brain networks can be represented as time varying networks since the activation of neurons are time correlated 5 Time varying networks are characterized by intermittent activation at the scale of individual links This is in contrast to various models of network evolution which may include an overall time dependence at the scale of the network as a whole Contents 1 Applicability 2 Representations 3 Properties 3 1 Time respecting paths 3 2 Reachability 3 3 Causal fidelity 3 4 Latency 3 5 Centrality measures 3 6 Temporal patterns 4 Dynamics 4 1 Burstiness 5 See also 6 ReferencesApplicability editTime varying networks are inherently dynamic and used for modeling spreading processes on networks Whether using time varying networks will be worth the added complexity depends on the relative time scales in question Time varying networks are most useful in describing systems where the spreading process on a network and the network itself evolve at similar timescales 6 Let the characteristic timescale for the evolution of the network be tN displaystyle t N nbsp and the characteristic timescale for the evolution of the spreading process be tP displaystyle t P nbsp A process on a network will fall into one of three categories Static approximation where tN tP displaystyle t N gg t P nbsp The network evolves relatively slowly so the dynamics of the process can be approximated using a static version of the network Time varying network where tN tP displaystyle t N sim t P nbsp The network and the process evolve at comparable timescales so the interplay between them becomes important Annealed approximation where tN tP displaystyle t N ll t P nbsp The network evolves relatively rapidly so the dynamics of the process can be approximated using a time averaged version of the network The flow of data over the internet is an example for the first case where the network changes very little in the fraction of a second it takes for a network packet to traverse it 7 The spread of sexually transmitted diseases is an example of the second where the prevalence of the disease spreads in direct correlation to the rate of evolution of the sexual contact network itself 8 Behavioral contagion is an example of the third case where behaviors spread through a population over the combined network of many day to day social interactions 9 Representations editThere are three common representations for time varying network data 10 Contact sequences if the duration of interactions are negligible the network can be represented as a set C displaystyle C nbsp of contacts i j t displaystyle i j t nbsp where i displaystyle i nbsp and j displaystyle j nbsp are the nodes and t displaystyle t nbsp the time of the interaction Alternatively it can be represented as an edge list E displaystyle E nbsp where each edge e displaystyle e nbsp is a pair of nodes and has a set of active times Te t1 tn displaystyle T e t 1 ldots t n nbsp Interval graphs if the duration of interactions are non negligible Te displaystyle T e nbsp becomes a set of intervals over which the edge e displaystyle e nbsp is active Te t1 t1 tn tn displaystyle T e t 1 t 1 ldots t n t n nbsp Snapshots time varying networks can also be represented as a series of static networks one for each time step Properties editThe measures used to characterize static networks are not immediately transferable to time varying networks See Path Connectedness Distance Centrality However these network concepts have been adapted to apply to time varying networks Time respecting paths edit Time respecting paths are the sequences of links that can be traversed in a time varying network under the constraint that the next link to be traversed is activated at some point after the current one Like in a directed graph a path from i displaystyle i nbsp to j displaystyle j nbsp does not mean there is a path from j displaystyle j nbsp to i displaystyle i nbsp In contrast to paths in static and evolving networks however time respecting paths are also non transitive That is to say just because there is a path from i displaystyle i nbsp to j displaystyle j nbsp and from j displaystyle j nbsp to k displaystyle k nbsp does not mean that there is a path from i displaystyle i nbsp to k displaystyle k nbsp Furthermore time respecting paths are themselves time varying and are only valid paths during a specific time interval 11 Reachability edit While analogous to connectedness in static networks reachability is a time varying property best defined for each node in the network The set of influence of a node i displaystyle i nbsp is the set of all nodes that can be reached from i displaystyle i nbsp via time respecting paths note that it is dependent on the start time t displaystyle t nbsp The source set of a node i displaystyle i nbsp is the set of all nodes that can reach i displaystyle i nbsp via time respecting paths within a given time interval The reachability ratio can be defined as the average over all nodes i displaystyle i nbsp of the fraction of nodes within the set of influence of i displaystyle i nbsp 12 Connectedness of an entire network is less conclusively defined although some have been proposed A component may be defined as strongly connected if there is a directed time respecting path connecting all nodes in the component in both directions A component may be defined as weakly connected if there is an undirected time respecting path connecting all nodes in the component in both directions 13 Also a component may be defined as transitively connected if transitivity holds for the subset of nodes in that component Causal fidelity edit Causal fidelity quantifies the goodness of the static approximation of a temporal network Such a static approximation is generated by aggregating the edges of a temporal network over time The idea of causal fidelity is to compare the number of paths between all node pairs in the temporal network Ptemp displaystyle P temp nbsp that is all time respecting paths with the number of paths Pstat displaystyle P stat nbsp between all nodes in the static approximation of the network 14 The causal fidelity is then defined by c PtempPstat displaystyle c frac P temp P stat nbsp dd Since in Ptemp displaystyle P temp nbsp only time respecting paths are considered Ptemp Pstat displaystyle P temp leq P stat nbsp and consequently 0 c 1 displaystyle 0 leq c leq 1 nbsp A high causal fidelity c 1 displaystyle c approx 1 nbsp means that the considered temporal network is well approximated by its static aggregated counterpart If c 1 displaystyle c ll 1 nbsp then most node pairs that are reachable in the static representation are not connected by time respecting paths in the temporal network Latency edit Also called temporal distance latency is the time varying equivalent to distance In a time varying network any time respecting path has a duration namely the time it takes to follow that path The fastest such path between two nodes is the latency note that it is also dependent on the start time The latency from node i displaystyle i nbsp to node j displaystyle j nbsp beginning at time t displaystyle t nbsp is denoted by li t j displaystyle lambda i t j nbsp Centrality measures edit Measuring centrality on time varying networks involves a straightforward replacement of distance with latency 15 For discussions of the centrality measures on a static network see Centrality Closeness centrality is large for nodes i displaystyle i nbsp that are close to all other nodes i e have small latency li j displaystyle lambda i j nbsp for all j displaystyle j nbsp CC i t N 1 j ili t j displaystyle C C i t frac N 1 sum j not i lambda i t j nbsp dd Betweenness centrality is large for nodes that are often a part of the smallest latency paths between other pairs of nodes It is defined as the ratio of the number of smallest latency paths from j displaystyle j nbsp and k displaystyle k nbsp that pass through i displaystyle i nbsp to the total number of smallest latency paths from j displaystyle j nbsp and k displaystyle k nbsp CB i t i j kni j k i j kn j k displaystyle C B i t frac sum i not j not k nu i j k sum i not j not k nu j k nbsp dd The time varying nature of latency specifically that it will become infinity for all node pairs as the time approaches the end of the network interval used makes an alternative measure of closeness useful Efficiency uses instead the reciprocal of the latency so the efficiency approaches zero instead of diverging Higher values for efficiency correspond to more central nodes in the network CE i t 1N 1 j i1li t j displaystyle C E i t frac 1 N 1 sum j not i frac 1 lambda i t j nbsp dd Temporal patterns edit Time varying network allow for analysis of explicit time dependent properties of the network It is possible to extract recurring and persistent patterns of contact from time varying data in many ways This is an area of ongoing research Characteristic times of the system can be found by looking for distinct changes in a variable such as the reachability ratio For example if one allows only a finite waiting time at all nodes in calculating latency one can find interesting patterns in the resulting reachability ratio For a mobile call network the reachability ratio has been found to increase dramatically if one allows delays of at least two days and for the airline network the same effect has been found at around 30 minutes 16 Moreover the characteristic time scale of a temporal network is given by the mode of the distribution of shortest path durations This distribution can be calculated using the reachability between all node pairs in the network 14 Persistent patterns are ones that reoccur frequently in the system They can be discovered by averaging over different Dt displaystyle Delta t nbsp across the time interval of the system and looking for patterns that reoccur over a specified threshold 17 Motifs are specific temporal patterns that occur more often the expected in a system The time varying network of Facebook wall postings for example has higher frequency of chains stars and back and forth interactions that could be expected for a randomized network 18 Egocentric Temporal motifs can be used to exploit temporal ego networks Due to their first order complexity can be counted in large graphs in a reasonable execution time For example Longa et al 19 show how to use Egocentric Temporal Motifs for measuring distances among face to face interaction networks in different social contexts Detecting missing linksDynamics editTime varying networks allow for the analysis of an entirely new dimension of dynamic processes on networks In cases where the time scales of evolution of the network and the process are similar the temporal structure of time varying networks has a dramatic impact on the spread of the process over the network Burstiness edit The time between two consecutive events for an individual node or link is called the inter event time The distribution of inter event times of a growing number of important real world time varying networks have been found to be bursty meaning inter event times are very heterogeneous they have a heavy tailed distribution This translates to a pattern of activation where activity comes in bursts separated by longer stretches of inactivity 20 Burstiness of inter event times can dramatically slow spreading processes on networks 21 which has implications for the spread of disease information ideas and computer viruses However burstiness can also accelerate spreading processes and other network properties also have an effect on spreading speed 22 Real world time varying networks may thus promote spreading processes despite having a bursty inter event time distribution 23 Burstiness as an empirical quantity can be calculated for any sequence of inter event times t displaystyle tau nbsp by comparing the sequence to one generated by a Poisson process The ratio of the standard deviation s displaystyle sigma nbsp to the mean m displaystyle m nbsp of a Poisson process is 1 This measure compares st mt displaystyle sigma tau m tau nbsp to 1 B st mt 1st mt 1 displaystyle B frac sigma tau m tau 1 sigma tau m tau 1 nbsp Burstiness varies from 1 to 1 B 1 indicates a maximally bursty sequence B 0 indicates a Poisson distribution and B 1 indicates a periodic sequence 24 See also editComplex contagion Complex network Epidemic model Directed percolation Dynamic network analysis Exponential random graph models Link centric preferential attachment Scale free network Percolation theoryReferences edit Karsai M Perra N Vespignani A 2015 Time varying networks and the weakness of strong ties PDF Sci Rep 4 4001 arXiv 1303 5966 Bibcode 2014NatSR 4E4001K doi 10 1038 srep04001 PMC 3918922 PMID 24510159 J P Eckmann E Moses and D Sergi Entropy of dialogues creates coherent structures in e mail traffic Proc Natl Acad Sci USA 2004 101 14333 14337 https www weizmann ac il complex EMoses pdf EntropyDialogues pdf Eagle N Pentland A 2006 Reality mining sensing complex social systems Pers Ubiquit Comput 10 4 255 268 doi 10 1007 s00779 005 0046 3 S2CID 1766202 Stehle J Voirin N Barrat A Cattuto C Colizza V Isella L Regis C Pinton J F Khanafer N Vanhems P 2011 Simulation of an SEIR infectious disease model on the dynamic contact network of conference attendees BMC Medicine 9 87 arXiv 1108 4841 doi 10 1186 1741 7015 9 87 PMC 3162551 PMID 21771290 Holme P Saramaki J 2012 Temporal Networks Phys Rep 519 3 102 arXiv 1108 1780 Bibcode 2012PhR 519 97H doi 10 1016 j physrep 2012 03 001 S2CID 1920175 Holme P Saramaki J 2012 Temporal Networks Phys Rep 519 3 99 100 arXiv 1108 1780 Bibcode 2012PhR 519 97H doi 10 1016 j physrep 2012 03 001 S2CID 1920175 Pastor Satorras R and Alessandro Vespignani Evolution and Structure of the Internet A Statistical Physics Approach Cambridge UK Cambridge UP 2004 lt http fizweb elte hu download Fizikus MSc Infokommunikacios halozatok modelljei Evo and Struct of Internet pdf gt Masuda N Holme P 2013 Predicting and controlling infectious disease epidemics using temporal networks F1000Prime Rep 5 6 doi 10 12703 P5 6 PMC 3590785 PMID 23513178 Thompson Clive Are Your Friends Making You Fat The New York Times The New York Times 12 Sept 2009 Web lt https www nytimes com 2009 09 13 magazine 13contagion t html pagewanted all amp r 0 gt P Holme J Saramaki Temporal Networks Phys Rep 519 103 104 10 1016 j physrep 2012 03 001 2012 P Holme J Saramaki Temporal Networks Phys Rep 519 104 105 10 1016 j physrep 2012 03 001 2012 Holme P 2005 Network reachability of real world contact sequences Phys Rev E 71 4 046119 arXiv cond mat 0410313 Bibcode 2005PhRvE 71d6119H doi 10 1103 physreve 71 046119 PMID 15903738 S2CID 13249467 V Nicosia J Tang M Musolesi G Russo C Mascolo and V Latora Components in time varying graphs e print arXiv 1106 2134 a b Lentz Hartmut H K Selhorst Thomas Sokolov Igor M 2013 03 11 Unfolding Accessibility Provides a Macroscopic Approach to Temporal Networks Physical Review 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