卡尔曼滤波器
计算机科学
状态空间表示
概率逻辑
时间序列
人工智能
变压器
人工神经网络
季节性
概率预测
状态空间
机器学习
系列(地层学)
数据挖掘
算法
数学
统计
工程类
电压
电气工程
古生物学
生物
作者
Yang Lin,Irena Koprinska,Mashud Rana
标识
DOI:10.1109/icdm51629.2021.00048
摘要
In this paper, we present SSDNet, a novel deep learning approach for time series forecasting. SSDNet combines the Transformer architecture with state space models to provide probabilistic and interpretable forecasts, including trend and seasonality components and previous time steps important for the prediction. The Transformer architecture is used to learn the temporal patterns and estimate the parameters of the state space model directly and efficiently, without the need for Kalman filters. We comprehensively evaluate the performance of SSDNet on five data sets, showing that SSDNet is an effective method in terms of accuracy and speed, outperforming state-of-the-art deep learning and statistical methods, and able to provide meaningful trend and seasonality components.
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