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Quantifying uncertainty in a predictive model for popularity dynamics

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posted on 2022-10-05, 14:42 authored by Joseph D. O'Brien, Alberto Aleta, Yamir Moreno, James GleesonJames Gleeson
The Hawkes process has garnered attention in recent years for its suitability to describe the behavior of online information cascades. Here we present a fully tractable approach to analytically describe the distribution of the number of events in a Hawkes process, which, in contrast to purely empirical studies or simulation-based models, enables the effect of process parameters on cascade dynamics to be analyzed.We show that the presented theory also allows predictions regarding the future distribution of events after a given number of events have been observed during a time window. Our results are derived through a differential-equation approach to attain the governing equations of a general branching process. We confirm our theoretical findings through extensive simulations of such processes. This work provides the basis for more complete analyses of the self-exciting processes that govern the spreading of information through many communication platforms, including the potential to predict cascade dynamics within confidence limits.

Funding

Dynamics of the metabolic state in the context of a systematic approach to the study of the processes of growth and development of higher plants and fungi

Russian Foundation for Basic Research

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Development of theoretical and experimental criteria for predicting the wear resistance of austenitic steels and nanostructured coatings based on a hard alloy under conditions of erosion-corrosion wear

Russian Foundation for Basic Research

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History

Publication

Physical Review E.;101, 062311

Publisher

American Physical Society

Note

peer-reviewed

Other Funding information

SFI

Language

English

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  • MACSI - Mathematics Application Consortium for Science & Industry

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  • Mathematics & Statistics

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