book chapterMar 19, 2026Closed access

Fredf: Learning to Forecast in the Frequency Domain

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Abstract

Time series modeling presents unique challenges due to autocorrelation in both historical data and future sequences. While current research predominantly addresses autocorrelation within historical data, the correlations among future labels are often overlooked. Specifically, modern forecasting models primarily adhere to the Direct Forecast (DF) paradigm, generating multi-step forecasts independently and disregarding label autocorrelation over time. In this work, we demonstrate that the learning objective of DF is biased in the presence of label autocorrelation. To address this issue, we introduce the Frequency-enhanced Direct Forecast (FreDF), which mitigates label autocorrelation by learning to forecast in…

Citation impact

5
total citations
FWCI
107.03
Percentile
99%
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0
Citations per year

Authors

4

Topics & keywords

Keywords
  • Autocorrelation
  • Variety (cybernetics)
  • Partial autocorrelation function
  • Series (stratigraphy)
  • Frequency domain
  • Time series
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