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A Non-linear Function-on-Function Model for Regression with Time Series Data

机译:具有时间序列数据的回归的非线性功能泛函数模型

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In the last few decades, building regression models for non-scalar variables, including time series, text, image, and video, has attracted increasing interests of researchers from the data analytic community. In this paper, we focus on a multivariate time series regression problem. Specifically, we aim to learn mathematical mappings from multiple chronologically measured numerical variables within a certain time interval ${{mathcal{S}}}$ to multiple numerical variables of interest over time interval ${{mathcal{T}}}$. Prior arts, including the multivariate regression model, the Seq2Seq model, and the functional linear models, suffer from several limitations. The first two types of models can only handle regularly observed time series. Besides, the conventional multivariate regression models tend to be biased and inefficient, as they are incapable of encoding the temporal dependencies among observations from the same time series. The sequential learning models explicitly use the same set of parameters along time, which has negative impacts on accuracy. The function-on-function linear model in functional data analysis (a branch of statistics) is insufficient to capture complex correlations among the considered time series and suffer from underfitting easily. In this paper, we propose a general functional mapping that embraces the function-on-function linear model as a special case. We then propose a non-linear function-on-function model using the fully connected neural network to learn the mapping from data, which addresses the aforementioned concerns in the existing approaches. For the proposed model, we describe in detail the corresponding numerical implementation procedures. The effectiveness of the proposed model is demonstrated through the application to two real-world problems.
机译:在过去几十年中,为非标量变量建立回归模型,包括时间序列,文本,图像和视频,吸引了来自数据分析社区的研究人员的越来越兴趣。在本文中,我们专注于多元时间序列回归问题。具体而言,我们的目标是在一定时间间隔$ {{ mathcal {s}}} $ {{ mathcal {s}}}上学习数学映射。超过时间间隔的多个数值变量$ {{{ mathcal {t}} $ 。现有技术,包括多变量回归模型,SEQ2SEQ模型和功能线性模型,遭受若干限制。前两种类型的模型只能处理定期观察时间序列。此外,传统的多变量回归模型往往是偏置和低效的,因为它们不能在同一时间序列中编码观察中的时间依赖性。顺序学习模型明确地使用相同的参数集合时间,这对准确性产生负面影响。功能数据分析中的功能上的功能线性模型(统计分支)不足以捕获所考虑的时间序列之间的复杂相关性并容易受到磨损。在本文中,我们提出了一般的功能映射,它将功能函数线性模型作为一个特殊情况。然后,我们使用完全连接的神经网络提出了非线性功能上的函数模型,以学习从数据的映射,该数据地解决了现有方法中的上述问题。对于所提出的模型,我们详细描述了相应的数值实现程序。通过应用于两个现实问题,证明了所提出的模型的有效性。

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