2020
DOI: 10.3390/e22010089
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Time Series Complexities and Their Relationship to Forecasting Performance

Abstract: Entropy is a key concept in the characterization of uncertainty for any given signal, and its extensions such as Spectral Entropy and Permutation Entropy. They have been used to measure the complexity of time series. However, these measures are subject to the discretization employed to study the states of the system, and identifying the relationship between complexity measures and the expected performance of the four selected forecasting methods that participate in the M4 Competition. This relationship allows … Show more

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Cited by 16 publications
(15 citation statements)
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“…The complexity of the time series is a topic explored in [36]. In fact, smart building monitored data is a recommended complexity time series example, giving importance to sensor data measuring several devices that should provide more complete information, including heating and air conditioning data [37].…”
Section: Time Series Forecastingmentioning
confidence: 99%
“…The complexity of the time series is a topic explored in [36]. In fact, smart building monitored data is a recommended complexity time series example, giving importance to sensor data measuring several devices that should provide more complete information, including heating and air conditioning data [37].…”
Section: Time Series Forecastingmentioning
confidence: 99%
“…To this aim, we studied synchronization phenomena between two unidirectional chaotic systems, where GS takes place as a function of coupling factor C. We studied the optimal dimension m of the systems assuming, as we did for noncoupled systems, that entropy is well described by a nonextensive function of number of elements S ∼ N m . at assumption is especially well posed when the system is weakly sensitive to initial conditions, where it was proven [38,39] that the usual Shannon entropy measures are not appropriate and a new measure of entropy has to be introduced that depends on sensitivity to initial conditions and the multifractal spectrum.…”
Section: Unidirectionally Coupled Systemsmentioning
confidence: 99%
“…Entropy has been widely used in the field of prediction. Mirna et al [ 3 ] and Guan et al [ 4 ] used the theory of entropy in predicting time series. Carles et al [ 5 ] combined entropy with machine learning to predict macroeconomics.…”
Section: Introductionmentioning
confidence: 99%