TL;DR
This study uses simulated datasets with controllable characteristics to evaluate when global models outperform univariate benchmarks in time series forecasting, highlighting the effectiveness of complex models like RNNs and LGBMs in challenging scenarios.
Contribution
It systematically investigates the impact of data heterogeneity, series complexity, and dataset size on the performance of global forecasting models through extensive simulations.
Findings
RNNs and LGBMs perform well with short, heterogeneous series.
Global models are competitive under complex, challenging scenarios.
Complex non-linear models outperform traditional methods in certain conditions.
Abstract
In the current context of Big Data, the nature of many forecasting problems has changed from predicting isolated time series to predicting many time series from similar sources. This has opened up the opportunity to develop competitive global forecasting models that simultaneously learn from many time series. But, it still remains unclear when global forecasting models can outperform the univariate benchmarks, especially along the dimensions of the homogeneity/heterogeneity of series, the complexity of patterns in the series, the complexity of forecasting models, and the lengths/number of series. Our study attempts to address this problem through investigating the effect from these factors, by simulating a number of datasets that have controllable time series characteristics. Specifically, we simulate time series from simple data generating processes (DGP), such as Auto Regressive (AR)…
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