Weak convergence to stochastic integrals for econometric applications
Limit theory involving stochastic integrals is now widespread in time series econometrics and relies on a few key results on functional weak convergence. In establishing such convergence, the literature commonly uses martingale and semimartingale structures. While these structures have wide relevanc...
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sg-smu-ink.soe_research-29442017-04-10T06:22:42Z Weak convergence to stochastic integrals for econometric applications LIANG, Hanying Peter C. B. PHILLIPS, WANG, Hanchao WANG, Qiying Limit theory involving stochastic integrals is now widespread in time series econometrics and relies on a few key results on functional weak convergence. In establishing such convergence, the literature commonly uses martingale and semimartingale structures. While these structures have wide relevance, many applications involve a cointegration framework where endogeneity and nonlinearity play major roles and complicate the limit theory. This paper explores weak convergence limit theory to stochastic integral functionals in such settings. We use a novel decomposition of sample covariances of functions of I (1) and I (0) time series that simplifies the asymptotics and our limit results for such covariances hold for linear process, long memory, and mixing variates in the innovations. These results extend earlier findings in the literature, are relevant in many applications, and involve simple conditions that facilitate practical implementation. A nonlinear extension of FM regression is used to illustrate practical application of the methods. 2016-12-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/soe_research/1945 info:doi/10.1017/S0266466615000274 https://ink.library.smu.edu.sg/context/soe_research/article/2944/viewcontent/WeakConvergenceSchochasticIntegrals_2014_pp.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Economics eng Institutional Knowledge at Singapore Management University Decomposition FM regression Linear process Long memory Stochastic integral Semimartingale α−mixing Econometrics |
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Decomposition FM regression Linear process Long memory Stochastic integral Semimartingale α−mixing Econometrics LIANG, Hanying Peter C. B. PHILLIPS, WANG, Hanchao WANG, Qiying Weak convergence to stochastic integrals for econometric applications |
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Limit theory involving stochastic integrals is now widespread in time series econometrics and relies on a few key results on functional weak convergence. In establishing such convergence, the literature commonly uses martingale and semimartingale structures. While these structures have wide relevance, many applications involve a cointegration framework where endogeneity and nonlinearity play major roles and complicate the limit theory. This paper explores weak convergence limit theory to stochastic integral functionals in such settings. We use a novel decomposition of sample covariances of functions of I (1) and I (0) time series that simplifies the asymptotics and our limit results for such covariances hold for linear process, long memory, and mixing variates in the innovations. These results extend earlier findings in the literature, are relevant in many applications, and involve simple conditions that facilitate practical implementation. A nonlinear extension of FM regression is used to illustrate practical application of the methods. |
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LIANG, Hanying Peter C. B. PHILLIPS, WANG, Hanchao WANG, Qiying |
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LIANG, Hanying Peter C. B. PHILLIPS, WANG, Hanchao WANG, Qiying |
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LIANG, Hanying |
title |
Weak convergence to stochastic integrals for econometric applications |
title_short |
Weak convergence to stochastic integrals for econometric applications |
title_full |
Weak convergence to stochastic integrals for econometric applications |
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Weak convergence to stochastic integrals for econometric applications |
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Weak convergence to stochastic integrals for econometric applications |
title_sort |
weak convergence to stochastic integrals for econometric applications |
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Institutional Knowledge at Singapore Management University |
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2016 |
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https://ink.library.smu.edu.sg/soe_research/1945 https://ink.library.smu.edu.sg/context/soe_research/article/2944/viewcontent/WeakConvergenceSchochasticIntegrals_2014_pp.pdf |
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