preprintarXiv (Cornell University)May 28, 2022GREEN OA

Non-stationary Transformers: Exploring the Stationarity in Time Series Forecasting

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Abstract

Transformers have shown great power in time series forecasting due to their global-range modeling ability. However, their performance can degenerate terribly on non-stationary real-world data in which the joint distribution changes over time. Previous studies primarily adopt stationarization to attenuate the non-stationarity of original series for better predictability. But the stationarized series deprived of inherent non-stationarity can be less instructive for real-world bursty events forecasting. This problem, termed over-stationarization in this paper, leads Transformers to generate indistinguishable temporal attentions for different series and impedes the predictive capability of deep models. To tackle…

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Topics & keywords

Keywords
  • Predictability
  • Computer science
  • Transformer
  • Time series
  • Series (stratigraphy)
  • Initialization
  • Econometrics
  • Machine learning
UN Sustainable Development Goals
  • Peace, Justice and strong institutions
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