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Déjà vu: A data-centric forecasting approach through time series cross-similarity

  • Yanfei Kang
  • , Evangelos Spiliotis
  • , Fotios Petropoulos
  • , Nikolaos Athiniotis
  • , Feng Li*
  • , Vassilios Assimakopoulos
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Accurate forecasts are vital for supporting the decisions of modern companies. Forecasters typically select the most appropriate statistical model for each time series. However, statistical models usually presume some data generation process while making strong assumptions about the errors. In this paper, we present a novel data-centric approach — ‘forecasting with cross-similarity’, which tackles model uncertainty in a model-free manner. Existing similarity-based methods focus on identifying similar patterns within the series, i.e., ‘self-similarity’. In contrast, we propose searching for similar patterns from a reference set, i.e., ‘cross-similarity’. Instead of extrapolating, the future paths of the similar series are aggregated to obtain the forecasts of the target series. Building on the cross-learning concept, our approach allows the application of similarity-based forecasting on series with limited lengths. We evaluate the approach using a rich collection of real data and show that it yields competitive accuracy in both points forecasts and prediction intervals.

Original languageEnglish
Pages (from-to)719-731
Number of pages13
JournalJournal of Business Research
Volume132
DOIs
StatePublished - Aug 2021

Keywords

  • Dynamic time warping
  • Empirical evaluation
  • Forecasting
  • M competitions
  • Time series similarity

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