Systematic Generalization in Neural Networks-based Multivariate Time Series Forecasting Models

Hritik Bansal, Gantavya Bhatt, Pankaj Malhotra, Prathosh Ap
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引用次数: 3

Abstract

Systematic generalization aims to evaluate reasoning about novel combinations from known components, an intrinsic property of human cognition. In this work, we study systematic generalization of Neural Networks (NNs) in forecasting future time series of dependent variables in a dynamical system, conditioned on past time series of dependent variables, and past and future control variables. We focus on systematic generalization wherein the NN-based forecasting model should perform well on previously unseen combinations or regimes of control variables after being trained on a limited set of the possible regimes. For NNs to depict such out-of-distribution generalization, they should be able to disentangle the various dependencies between control variables and dependent variables. We hypothesize that a modular NN architecture guided by the readily-available knowledge of independence of control variables as a potentially useful inductive bias to this end. Through extensive empirical evaluation on a toy dataset and a simulated electric motor dataset, we show that our proposed modular NN architecture serves as a simple yet highly effective inductive bias that enabling better forecasting of the dependent variables up to large horizons in contrast to standard NNs, and indeed capture the true dependency relations between the dependent and the control variables.
基于神经网络的多元时间序列预测模型的系统泛化
系统泛化的目的是评估对已知成分的新组合的推理,这是人类认知的固有属性。在这项工作中,我们研究了神经网络(NNs)在预测动力系统中因变量的未来时间序列中的系统泛化,该系统以过去的因变量时间序列以及过去和未来的控制变量为条件。我们专注于系统泛化,其中基于神经网络的预测模型在有限的可能状态集上进行训练后,应该在以前未见过的控制变量组合或状态上表现良好。对于描述这种分布外泛化的神经网络,它们应该能够解开控制变量和因变量之间的各种依赖关系。我们假设,由易于获得的控制变量独立性知识指导的模块化神经网络架构可能是一种有用的归纳偏置。通过对玩具数据集和模拟电动机数据集的广泛经验评估,我们表明,我们提出的模块化神经网络架构可以作为一种简单而高效的归纳偏置,与标准神经网络相比,可以更好地预测因变量到更大的范围,并且确实捕获了因变量和控制变量之间的真正依赖关系。
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