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Title Predictability Limit of Partially Observed Systems
Authors Andrés Abeliuk, Zhishen Huang, Emilio Ferrara, Kristina Lerman
Publication date November 2020
Abstract Applications from finance to epidemiology and
cyber-security
require accurate forecasts of dynamic phenomena, which are often only
partially observed. We demonstrate that a system's predictability degrades
as a function of temporal sampling, regardless of the adopted forecasting
model. We quantify the loss of predictability due to sampling, and show that
it cannot be recovered by using external signals. We validate the generality
of our theoretical findings in real-world partially observed systems
representing infectious disease outbreaks, online discussions, and software
development projects. On a variety of prediction tasks--forecasting new
infections, the popularity of topics in online discussions, or interest in
cryptocurrency projects--predictability irrecoverably decays as a function
of sampling, unveiling predictability limits in partially observed
systems.
Pages article 20427
Volume 10
Journal name Scientific Reports
Publisher Springer Nature Switzerland AG (Cham, Switzerland)
Reference URL View reference page