功能关系场:多变量时间序列预测的模型诊断框架

IF 5.1 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Ting Li , Bing Yu , Jianguo Li , Zhanxing Zhu
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引用次数: 0

摘要

在多变量时间序列预测中,最常用的多时间序列关系建模策略是构建图,其中每个时间序列表示为一个节点,相关节点由边连接。然而,多个时间序列之间的关系通常比较复杂,例如上游节点的流出量之和可能等于下游节点的流入量。这种关系广泛存在于现实世界的许多多变量时间序列预测场景中,但却远未得到深入研究。在这种情况下,图形可能不足以模拟节点之间的复杂依赖关系。为此,我们探索了一种新的框架,在我们提出的归纳偏置--函数关系场--的基础上,以更精确的方式对节点间的关系进行建模。从本质上讲,这些学习到的函数会形成一个 "场",即一组特定的约束条件,用于规范骨干预测网络的训练损耗,并强制推理过程满足这些约束条件。由于我们的框架是以数据驱动的方式引入关系偏差的,因此它既灵活又与模型无关,可以应用于任何现有的多变量时间序列预测网络以提高性能。我们在一个玩具数据集上进行了实验,以证明我们的方法能很好地恢复节点之间的真实约束关系。此外,我们还考虑了现实世界中的各种数据集和不同的主干预测网络。结果表明,借助所提出的框架,预测误差可以显著减少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Functional Relation Field: A Model-Agnostic Framework for Multivariate Time Series Forecasting

In multivariate time series forecasting, the most popular strategy for modeling the relationship between multiple time series is the construction of graph, where each time series is represented as a node and related nodes are connected by edges. However, the relationship between multiple time series is typically complicated, e.g. the sum of outflows from upstream nodes may be equal to the inflows of downstream nodes. Such relations widely exist in many real-world scenarios for multivariate time series forecasting, yet are far from well studied. In these cases, graph might be insufficient for modeling the complex dependency between nodes. To this end, we explore a new framework to model the inter-node relationship in a more precise way based our proposed inductive bias, Functional Relation Field, where a group of functions parameterized by neural networks are learned to characterize the dependency between multiple time series. Essentially, these learned functions then form a “field”, i.e. a particular set of constraints, to regularize the training loss of the backbone prediction network and enforce the inference process to satisfy these constraints. Since our framework introduces the relationship bias in a data-driven manner, it is flexible and model-agnostic such that it can be applied to any existing multivariate time series prediction networks for boosting performance. The experiment is conducted on one toy dataset to show our approach can well recover the true constraint relationship between nodes. And various real-world datasets are also considered with different backbone prediction networks. Results show that the prediction error can be reduced remarkably with the aid of the proposed framework.

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来源期刊
Artificial Intelligence
Artificial Intelligence 工程技术-计算机:人工智能
CiteScore
11.20
自引率
1.40%
发文量
118
审稿时长
8 months
期刊介绍: The Journal of Artificial Intelligence (AIJ) welcomes papers covering a broad spectrum of AI topics, including cognition, automated reasoning, computer vision, machine learning, and more. Papers should demonstrate advancements in AI and propose innovative approaches to AI problems. Additionally, the journal accepts papers describing AI applications, focusing on how new methods enhance performance rather than reiterating conventional approaches. In addition to regular papers, AIJ also accepts Research Notes, Research Field Reviews, Position Papers, Book Reviews, and summary papers on AI challenges and competitions.
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