ExoTST: Exogenous-Aware Temporal Sequence Transformer for Time Series Prediction
Accurate long-term predictions are the foundations for many machine learning applications and decision-making processes. Traditional time series approaches for prediction often focus on either autoregressive modeling, which relies solely on past observations of the target ``endogenous variables'...
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Zusammenfassung: | Accurate long-term predictions are the foundations for many machine learning
applications and decision-making processes. Traditional time series approaches
for prediction often focus on either autoregressive modeling, which relies
solely on past observations of the target ``endogenous variables'', or forward
modeling, which considers only current covariate drivers ``exogenous
variables''. However, effectively integrating past endogenous and past
exogenous with current exogenous variables remains a significant challenge. In
this paper, we propose ExoTST, a novel transformer-based framework that
effectively incorporates current exogenous variables alongside past context for
improved time series prediction. To integrate exogenous information
efficiently, ExoTST leverages the strengths of attention mechanisms and
introduces a novel cross-temporal modality fusion module. This module enables
the model to jointly learn from both past and current exogenous series,
treating them as distinct modalities. By considering these series separately,
ExoTST provides robustness and flexibility in handling data uncertainties that
arise from the inherent distribution shift between historical and current
exogenous variables. Extensive experiments on real-world carbon flux datasets
and time series benchmarks demonstrate ExoTST's superior performance compared
to state-of-the-art baselines, with improvements of up to 10\% in prediction
accuracy. Moreover, ExoTST exhibits strong robustness against missing values
and noise in exogenous drivers, maintaining consistent performance in
real-world situations where these imperfections are common. |
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DOI: | 10.48550/arxiv.2410.12184 |