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Decompose and Conquer: Time Series Forecasting with Multiseasonal Trend Decomposition Using Loess

Amirhossein Sohrabbeig, Omid Ardakanian, Petr Musı́lek

2023Forecasting21 citationsDOIOpen Access PDF

Abstract

Over the past few years, there has been growing attention to the Long-Term Time Series Forecasting task and solving its inherent challenges like the non-stationarity of the underlying distribution. Notably, most successful models in this area use decomposition during preprocessing. Yet, much of the recent research has focused on intricate forecasting techniques, often overlooking the critical role of decomposition, which we believe can significantly enhance the performance. Another overlooked aspect is the presence of multiseasonal components in many time series datasets. This study introduced a novel forecasting model that prioritizes multiseasonal trend decomposition, followed by a simple, yet effective forecasting approach. We submit that the right decomposition is paramount. The experimental results from both real-world and synthetic data underscore the efficacy of the proposed model, Decompose&Conquer, for all benchmarks with a great margin, around a 30–50% improvement in the error.

Topics & Concepts

DecompositionDivide and conquer algorithmsComputer sciencePreprocessorMargin (machine learning)Series (stratigraphy)Task (project management)Term (time)Time seriesMachine learningSimple (philosophy)Data miningArtificial intelligenceAlgorithmEngineeringPaleontologyEcologyBiologyQuantum mechanicsSystems engineeringPhysicsPhilosophyEpistemologyTime Series Analysis and ForecastingStock Market Forecasting MethodsForecasting Techniques and Applications
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