Open Access
Open access
Forecasting, volume 7, issue 1, pages 8

White Noise and Its Misapplications: Impacts on Time Series Model Adequacy and Forecasting

Publication typeJournal Article
Publication date2025-02-05
Journal: Forecasting
scimago Q1
SJR0.532
CiteScore5.8
Impact factor2.3
ISSN25719394
Abstract

This paper contributes significantly to time series analysis by discussing the empirical properties of white noise and their implications for model selection. This paper illustrates the ways in which the standard assumptions about white noise typically fail in practice, with a special emphasis on striking differences in sample ACF and PACF. Such findings prove particularly important when assessing model adequacy and discerning between residuals of different models, especially ARMA processes. This study addresses issues involving testing procedures, for instance, the Ljung–Box test, to select the correct time series model determined in the review. With the improvement in understanding the features of white noise, this work enhances the accuracy of modeling diagnostics toward real forecasting practice, which gives it applied value in time series analysis and signal processing.

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