时间序列预测中的领域泛化

IF 4 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Songgaojun Deng, Olivier Sprangers, Ming Li, Sebastian Schelter, Maarten de Rijke
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引用次数: 0

摘要

领域泛化旨在通过从观察到的源领域中学习,设计出能够有效泛化到未知目标领域的模型。由于数据分布和时间依赖性各不相同,领域泛化对时间序列数据提出了巨大挑战。现有的领域泛化方法不是针对时间序列数据设计的,因此在面对不同的时间模式和复杂的数据特征时,往往会导致性能不理想或不稳定。我们提出了一种新方法来解决时间序列预测中的领域泛化问题。我们将重点放在时间序列域具有某些共同属性且不表现出突然分布变化的情况上。我们的方法是在现有的时间序列预测模型中加入一个关键的正则化项:域差异正则化。这样,我们就能在表现出不同模式的不同领域中实现一致的性能。我们通过研究单个领域内的性能来校准正则化项,并提出了具有领域难度意识的领域差异正则化。我们在多个数据集上展示了我们方法的有效性,包括来自零售、交通和金融等不同领域的合成和真实世界时间序列数据集。我们将我们的方法与传统方法、深度学习模型和领域泛化方法进行了比较,以全面了解其性能。在这些实验中,我们的方法展示了卓越的性能,在所有数据集上都超越了基础模型和竞争性领域泛化模型。此外,我们的方法具有很强的通用性,可应用于各种时间序列模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Domain Generalization in Time Series Forecasting

Domain generalization aims to design models that can effectively generalize to unseen target domains by learning from observed source domains. Domain generalization poses a significant challenge for time series data, due to varying data distributions and temporal dependencies. Existing approaches to domain generalization are not designed for time series data, which often results in suboptimal or unstable performance when confronted with diverse temporal patterns and complex data characteristics. We propose a novel approach to tackle the problem of domain generalization in time series forecasting. We focus on a scenario where time series domains share certain common attributes and exhibit no abrupt distribution shifts. Our method revolves around the incorporation of a key regularization term into an existing time series forecasting model: domain discrepancy regularization. In this way, we aim to enforce consistent performance across different domains that exhibit distinct patterns. We calibrate the regularization term by investigating the performance within individual domains and propose the domain discrepancy regularization with domain difficulty awareness. We demonstrate the effectiveness of our method on multiple datasets, including synthetic and real-world time series datasets from diverse domains such as retail, transportation, and finance. Our method is compared against traditional methods, deep learning models, and domain generalization approaches to provide comprehensive insights into its performance. In these experiments, our method showcases superior performance, surpassing both the base model and competing domain generalization models across all datasets. Furthermore, our method is highly general and can be applied to various time series models.

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来源期刊
ACM Transactions on Knowledge Discovery from Data
ACM Transactions on Knowledge Discovery from Data COMPUTER SCIENCE, INFORMATION SYSTEMS-COMPUTER SCIENCE, SOFTWARE ENGINEERING
CiteScore
6.70
自引率
5.60%
发文量
172
审稿时长
3 months
期刊介绍: TKDD welcomes papers on a full range of research in the knowledge discovery and analysis of diverse forms of data. Such subjects include, but are not limited to: scalable and effective algorithms for data mining and big data analysis, mining brain networks, mining data streams, mining multi-media data, mining high-dimensional data, mining text, Web, and semi-structured data, mining spatial and temporal data, data mining for community generation, social network analysis, and graph structured data, security and privacy issues in data mining, visual, interactive and online data mining, pre-processing and post-processing for data mining, robust and scalable statistical methods, data mining languages, foundations of data mining, KDD framework and process, and novel applications and infrastructures exploiting data mining technology including massively parallel processing and cloud computing platforms. TKDD encourages papers that explore the above subjects in the context of large distributed networks of computers, parallel or multiprocessing computers, or new data devices. TKDD also encourages papers that describe emerging data mining applications that cannot be satisfied by the current data mining technology.
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