A Distance Correlation-Based Approach to Characterize the Effectiveness of Recurrent Neural Networks for Time Series Forecasting
arxiv(2023)
摘要
Time series forecasting has received a lot of attention, with recurrent
neural networks (RNNs) being one of the widely used models due to their ability
to handle sequential data. Previous studies on RNN time series forecasting,
however, show inconsistent outcomes and offer few explanations for performance
variations among the datasets. In this paper, we provide an approach to link
time series characteristics with RNN components via the versatile metric of
distance correlation. This metric allows us to examine the information flow
through the RNN activation layers to be able to interpret and explain their
performance. We empirically show that the RNN activation layers learn the lag
structures of time series well. However, they gradually lose this information
over the span of a few consecutive layers, thereby worsening the forecast
quality for series with large lag structures. We also show that the activation
layers cannot adequately model moving average and heteroskedastic time series
processes. Last, we generate heatmaps for visual comparisons of the activation
layers for different choices of the network hyperparameters to identify which
of them affect the forecast performance. Our findings can, therefore, aid
practitioners in assessing the effectiveness of RNNs for given time series data
without actually training and evaluating the networks.
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