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用于多变量时间序列预测的多视图时空元学习

Multiview Spatial-Temporal Meta-Learning for Multivariate Time Series Forecasting.

作者信息

Zhang Liang, Zhu Jianping, Jin Bo, Wei Xiaopeng

机构信息

School of Computer Science and Technology, Dalian University of Technology, Dalian 116024, China.

School of Innovation and Entrepreneurship, Dalian University of Technology, Dalian 116024, China.

出版信息

Sensors (Basel). 2024 Jul 10;24(14):4473. doi: 10.3390/s24144473.

DOI:10.3390/s24144473
PMID:39065871
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11280835/
Abstract

Multivariate time series modeling has been essential in sensor-based data mining tasks. However, capturing complex dynamics caused by intra-variable (temporal) and inter-variable (spatial) relationships while simultaneously taking into account evolving data distributions is a non-trivial task, which faces accumulated computational overhead and multiple temporal patterns or distribution modes. Most existing methods focus on the former direction without adaptive task-specific learning ability. To this end, we developed a holistic spatial-temporal meta-learning probabilistic inference framework, entitled ST-MeLaPI, for the efficient and versatile learning of complex dynamics. Specifically, first, a multivariate relationship recognition module is utilized to learn task-specific inter-variable dependencies. Then, a multiview meta-learning and probabilistic inference strategy was designed to learn shared parameters while enabling the fast and flexible learning of task-specific parameters for different batches. At the core are spatial dependency-oriented and temporal pattern-oriented meta-learning approximate probabilistic inference modules, which can quickly adapt to changing environments via stochastic neurons at each timestamp. Finally, a gated aggregation scheme is leveraged to realize appropriate information selection for the generative style prediction. We benchmarked our approach against state-of-the-art methods with real-world data. The experimental results demonstrate the superiority of our approach over the baselines.

摘要

多元时间序列建模在基于传感器的数据挖掘任务中至关重要。然而,在考虑不断演变的数据分布的同时,捕捉由变量内(时间)和变量间(空间)关系引起的复杂动态是一项具有挑战性的任务,它面临着累积的计算开销以及多种时间模式或分布模式。大多数现有方法专注于前一个方向,缺乏自适应的特定任务学习能力。为此,我们开发了一个整体的时空元学习概率推理框架,名为ST-MeLaPI,用于高效且通用地学习复杂动态。具体而言,首先,利用多元关系识别模块来学习特定任务的变量间依赖关系。然后,设计了一种多视图元学习和概率推理策略,以学习共享参数,同时能够针对不同批次快速灵活地学习特定任务的参数。核心是面向空间依赖和面向时间模式的元学习近似概率推理模块,它们可以通过每个时间戳的随机神经元快速适应不断变化的环境。最后,利用门控聚合方案为生成式风格预测实现适当的信息选择。我们使用真实世界的数据将我们的方法与最先进的方法进行了基准测试。实验结果证明了我们的方法相对于基线方法的优越性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/1c45486c711c/sensors-24-04473-g007.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/e8c31192fa6c/sensors-24-04473-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/f46eac288bf1/sensors-24-04473-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/98432ceafacf/sensors-24-04473-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/74fcf6c3f91f/sensors-24-04473-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/66231b4f73e3/sensors-24-04473-g005.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/476b7b326f53/sensors-24-04473-g006.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/1c45486c711c/sensors-24-04473-g007.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/e8c31192fa6c/sensors-24-04473-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/f46eac288bf1/sensors-24-04473-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/98432ceafacf/sensors-24-04473-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/74fcf6c3f91f/sensors-24-04473-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/66231b4f73e3/sensors-24-04473-g005.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/476b7b326f53/sensors-24-04473-g006.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec3a/11280835/1c45486c711c/sensors-24-04473-g007.jpg

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