Banded vector heterogeneous autoregression models

KOREAN JOURNAL OF APPLIED STATISTICS(2023)

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摘要
This paper introduces the Banded-VHAR model suitable for high-dimensional long-memory time series with band structure. The Banded-VHAR model has nonignorable correlations only with adjacent dimensions due to data features, for example, geographical information. Row-wise estimation method is adapted for fast computation. Also, two estimation methods, namely BIC and ratio methods, are proposed to estimate the width of band. We demonstrate asymptotic consistency of our proposed estimation methods through simulation study. Real data applications to pm2.5 and apartment trading volume substantiate that our Banded-VHAR model outperforms traditional sparse VHAR model in forecasting and easy to interpret model coe fficients.
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关键词
banded coefficient matrices,vector heterogeneous autoregressive model,BIC,high dimensional,time series,long memory property
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