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Probabilistic Forecasting with Temporal Convolutional Neural Network

About

We present a probabilistic forecasting framework based on convolutional neural network for multiple related time series forecasting. The framework can be applied to estimate probability density under both parametric and non-parametric settings. More specifically, stacked residual blocks based on dilated causal convolutional nets are constructed to capture the temporal dependencies of the series. Combined with representation learning, our approach is able to learn complex patterns such as seasonality, holiday effects within and across series, and to leverage those patterns for more accurate forecasts, especially when historical data is sparse or unavailable. Extensive empirical studies are performed on several real-world datasets, including datasets from JD.com, China's largest online retailer. The results show that our framework outperforms other state-of-the-art methods in both accuracy and efficiency.

Yitian Chen, Yanfei Kang, Yixiong Chen, Zizhuo Wang• 2019

Related benchmarks

TaskDatasetResultRank
Time Series ForecastingM4 (Others)--
10
Interval forecastingM4 (Others)
MSIS48.012
8
Interval forecastingM4 Yearly
MSIS68.731
8
Interval forecastingM4 Quarterly
MSIS19.905
8
Interval forecastingM4 Overall
MSIS34.03
8
Interval forecastingM4 Monthly
MSIS23.009
8
Interval forecastingTraffic
MSIS11.418
6
Interval forecastingElectricity
MSIS10.042
6
Time Series ForecastingM4 Overall
Average Running Time (s)3.432
6
Time Series ForecastingM4 Yearly
Average Running Time (s)0.694
6
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