Multi-Knowledge Fusion Network for Time Series Representation Learning
Forecasting the behaviour of complex dynamical systems such as interconnected sensor networks characterized by high-dimensional multivariate time series(MTS) is of paramount importance for making informed decisions and planning for the future in a broad spectrum of applications. Graph forecasting ne...
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Zusammenfassung: | Forecasting the behaviour of complex dynamical systems such as interconnected
sensor networks characterized by high-dimensional multivariate time series(MTS)
is of paramount importance for making informed decisions and planning for the
future in a broad spectrum of applications. Graph forecasting networks(GFNs)
are well-suited for forecasting MTS data that exhibit spatio-temporal
dependencies. However, most prior works of GFN-based methods on MTS forecasting
rely on domain-expertise to model the nonlinear dynamics of the system, but
neglect the potential to leverage the inherent relational-structural
dependencies among time series variables underlying MTS data. On the other
hand, contemporary works attempt to infer the relational structure of the
complex dependencies between the variables and simultaneously learn the
nonlinear dynamics of the interconnected system but neglect the possibility of
incorporating domain-specific prior knowledge to improve forecast accuracy. To
this end, we propose a hybrid architecture that combines explicit prior
knowledge with implicit knowledge of the relational structure within the MTS
data. It jointly learns intra-series temporal dependencies and inter-series
spatial dependencies by encoding time-conditioned structural spatio-temporal
inductive biases to provide more accurate and reliable forecasts. It also
models the time-varying uncertainty of the multi-horizon forecasts to support
decision-making by providing estimates of prediction uncertainty. The proposed
architecture has shown promising results on multiple benchmark datasets and
outperforms state-of-the-art forecasting methods by a significant margin. We
report and discuss the ablation studies to validate our forecasting
architecture. |
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DOI: | 10.48550/arxiv.2408.12423 |