Long-range forecasting in feature-evolving data streams

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摘要

Accurate long-range forecasting in high-dimensional feature-evolving time series is a pressing issue with multiple applications in optimal resource allocation, monitoring and budget planning. Stochastic nature of feature-evolving time series coupled with their temporal dependency pose a great challenge in their forecasting. This is because the length of input sequence (rows) may vary as data points evolve with their feature values (columns) changing. In high-dimensional feature-evolving heterogeneous time series, it is impractical to train a forecasting model per single time series across millions of metrics, leave alone space required to maintain the forecasting model and evolving time series in memory for timely streaming processing. Thus this paper proposes O̲ne sketch F̲its A̲ll T̲ime series algorithm, which is a stochastic deep neural network framework to address stated problems collectively. Extensive experiments on real-life datasets and rigorous evaluation showcases that OFAT is fast, robust, accurate and superior to the state-of-the-art methods.

论文关键词:Feature-evolving streams,Time series,Deep neural networks,Forecasting

论文评审过程:Received 3 April 2020, Revised 1 July 2020, Accepted 11 August 2020, Available online 18 August 2020, Version of Record 3 September 2020.

论文官网地址:https://doi.org/10.1016/j.knosys.2020.106405