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Guaranteed Stability of Autoregressive Models with Granger Causality Learned from Wald Tests

机译:从Wald检验获悉具有Granger因果关系的自回归模型的保证稳定性

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This paper aims to explain relationships between time series by using the Granger causality (GC) concept through autoregressive (AR) models and to assure the model stability. Examining such GC relationship is performed on the model parameters using the Wald test and the model stability is guaranteed by the infinity-norm constraint on the dynamic matrix of the AR process. The proposed formulation is a least-squares estimation with Granger causality and stability constraints which is a convex program with a quadratic objective subject to linear equality and inequality norm constraints. We show by simulations that various typical factors could lead to unstable estimated models when using an unconstrained method. Estimated models from our approach are guaranteed to be stable but the model fitting error could be conservatively increased due to the selected stability condition.
机译:本文旨在通过自回归(AR)模型使用Granger因果关系(GC)概念来解释时间序列之间的关系,并确保模型的稳定性。使用Wald检验对模型参数执行此类GC关系检查,并且通过对AR过程的动态矩阵进行无穷范约束来保证模型稳定性。所提出的公式是具有Granger因果关系和稳定性约束的最小二乘估计,它是一个凸规划,其二次目标受线性等式和不等式范式约束。通过仿真显示,使用无约束方法时,各种典型因素可能会导致估计模型不稳定。通过我们的方法估计的模型可以保证稳定,但是由于选择的稳定性条件,模型拟合误差可能会保守地增加。

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