用于时间序列概率预测的递归插值法

Yu Chen, Marin Biloš, Sarthak Mittal, Wei Deng, Kashif Rasul, Anderson Schneider
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引用次数: 0

摘要

递归神经网络或基于变换器的模型等序列模型已成为以概率方式进行多变量时间序列预测的工具,广泛应用于金融、生物、医学等数据集。尽管它们在捕捉依赖性、评估预测不确定性和训练效率方面表现出色,但在对高维复杂分布和交叉特征依赖性建模方面仍存在挑战。为了解决这些问题,最近的研究通过采用基于扩散或流动的模型来深入研究生成模型。值得注意的是,随机微分方程或概率流的整合成功地将这些方法扩展到了概率时间序列估算和预测。然而,由于可扩展性问题,有必要为基于生成模型的大规模预测建立一个便于计算的框架。本研究提出了一种新方法,将递归神经网络的计算效率与扩散模型的高质量概率建模相结合,从而解决了这一难题,并推进了生成模型在时间序列预测中的应用。我们的方法以随机插值为基础,并扩展到更广泛的条件生成框架,具有额外的控制功能,为这一动态领域的未来发展提供了启示。
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Recurrent Interpolants for Probabilistic Time Series Prediction
Sequential models such as recurrent neural networks or transformer-based models became \textit{de facto} tools for multivariate time series forecasting in a probabilistic fashion, with applications to a wide range of datasets, such as finance, biology, medicine, etc. Despite their adeptness in capturing dependencies, assessing prediction uncertainty, and efficiency in training, challenges emerge in modeling high-dimensional complex distributions and cross-feature dependencies. To tackle these issues, recent works delve into generative modeling by employing diffusion or flow-based models. Notably, the integration of stochastic differential equations or probability flow successfully extends these methods to probabilistic time series imputation and forecasting. However, scalability issues necessitate a computational-friendly framework for large-scale generative model-based predictions. This work proposes a novel approach by blending the computational efficiency of recurrent neural networks with the high-quality probabilistic modeling of the diffusion model, which addresses challenges and advances generative models' application in time series forecasting. Our method relies on the foundation of stochastic interpolants and the extension to a broader conditional generation framework with additional control features, offering insights for future developments in this dynamic field.
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