2015
DOI: 10.1140/epjb/e2015-60660-9
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Exploring temporal networks with greedy walks

Abstract: Temporal networks come with a wide variety of heterogeneities, from burstiness of event sequences to correlations between timings of node and link activations. In this paper, we set to explore the latter by using greedy walks as probes of temporal network structure. Given a temporal network (a sequence of contacts), greedy walks proceed from node to node by always following the first available contact. Because of this, their structure is particularly sensitive to temporal-topological patterns involving repeate… Show more

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Cited by 36 publications
(44 citation statements)
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“…In another work by Saramäki and Holme [251], they simulated a greedy random walks on 8 empirical temporal networks. This process is particularly sensitive to temporal-topological patterns involving repeated contacts between sets of nodes.…”
Section: Effects Of Link Burstinessmentioning
confidence: 99%
“…In another work by Saramäki and Holme [251], they simulated a greedy random walks on 8 empirical temporal networks. This process is particularly sensitive to temporal-topological patterns involving repeated contacts between sets of nodes.…”
Section: Effects Of Link Burstinessmentioning
confidence: 99%
“…For example, our results might find practical applications in optimized online services including videos, news, music and other events in the online systems, which can guide the future design of online popularity prediction methods, which in turn, can benefit various other services, including information filtering and recommendation, as well as more cost-effective marketing strategies. In a broader context, our work could be relevant to other fields of online social processes [33], such as online behavior pattern, online marketing, word of mouth spreading or other dynamical processes, which may provide insights in the analysis of these collective behaviors, from social influence to biomedical responses.…”
Section: Conclusion and Discussionmentioning
confidence: 99%
“…This calls for special attention in the way we define algorithms. For example, the time window selected to compute mobility is a critical factor for bias [44]. If too short, it can enhance the bias of the data against the poorest individuals and vulnerable groups such as, for example, the women travelling with children from the study mentioned above.…”
Section: Data Representativeness and Biasmentioning
confidence: 99%