期限(时间)
系列(地层学)
动力学(音乐)
时间序列
计算机科学
机器学习
人工智能
计量经济学
数学
心理学
物理
生物
教育学
古生物学
量子力学
作者
Chuan Chen,Rui Li,Lin Shu,Zhiyu He,Jining Wang,Chengming Zhang,Huanfei Ma,Kazuyuki Aihara,Luonan Chen
摘要
Abstract Predicting time series has significant practical applications over different disciplines. Here, we propose an Anticipated Learning Machine (ALM) to achieve precise future-state predictions based on short-term but high-dimensional data. From non-linear dynamical systems theory, we show that ALM can transform recent correlation/spatial information of high-dimensional variables into future dynamical/temporal information of any target variable, thereby overcoming the small-sample problem and achieving multistep-ahead predictions. Since the training samples generated from high-dimensional data also include information of the unknown future values of the target variable, it is called anticipated learning. Extensive experiments on real-world data demonstrate significantly superior performances of ALM over all of the existing 12 methods. In contrast to traditional statistics-based machine learning, ALM is based on non-linear dynamics, thus opening a new way for dynamics-based machine learning.
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