Robust jump regressions
We develop robust inference methods for studying linear dependence between the jumps of discretely observed processes at high frequency. Unlike classical linear regressions, jump regressions are determined by a small number of jumps occurring over a fixed time interval and the rest of the components...
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sg-smu-ink.soe_research-35692023-11-22T06:26:26Z Robust jump regressions LI, Jia TODOROV, Viktor TAUCHEN, George We develop robust inference methods for studying linear dependence between the jumps of discretely observed processes at high frequency. Unlike classical linear regressions, jump regressions are determined by a small number of jumps occurring over a fixed time interval and the rest of the components of the processes around the jump times. The latter are the continuous martingale parts of the processes as well as observation noise. By sampling more frequently the role of these components, which are hidden in the observed price, shrinks asymptotically. The robustness of our inference procedure is with respect to outliers, which are of particular importance in the current setting of relatively small number of jump observations. This is achieved by using nonsmooth loss functions (like L1) in the estimation. Unlike classical robust methods, the limit of the objective function here remains nonsmooth. The proposed method is also robust to measurement error in the observed processes, which is achieved by locally smoothing the high-frequency increments. In an empirical application to financial data, we illustrate the usefulness of the robust techniques by contrasting the behavior of robust and ordinary least regression (OLS)-type jump regressions in periods including disruptions of the financial markets such as so-called “flash crashes.” 2017-05-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/soe_research/2570 info:doi/10.1080/01621459.2016.1138866 https://ink.library.smu.edu.sg/context/soe_research/article/3569/viewcontent/Robust_Jump_Regressions.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Economics eng Institutional Knowledge at Singapore Management University High-frequency data; Jumps; Microstructure noise; Robust regression; Semimartingale Econometrics Economic Theory |
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High-frequency data; Jumps; Microstructure noise; Robust regression; Semimartingale Econometrics Economic Theory LI, Jia TODOROV, Viktor TAUCHEN, George Robust jump regressions |
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We develop robust inference methods for studying linear dependence between the jumps of discretely observed processes at high frequency. Unlike classical linear regressions, jump regressions are determined by a small number of jumps occurring over a fixed time interval and the rest of the components of the processes around the jump times. The latter are the continuous martingale parts of the processes as well as observation noise. By sampling more frequently the role of these components, which are hidden in the observed price, shrinks asymptotically. The robustness of our inference procedure is with respect to outliers, which are of particular importance in the current setting of relatively small number of jump observations. This is achieved by using nonsmooth loss functions (like L1) in the estimation. Unlike classical robust methods, the limit of the objective function here remains nonsmooth. The proposed method is also robust to measurement error in the observed processes, which is achieved by locally smoothing the high-frequency increments. In an empirical application to financial data, we illustrate the usefulness of the robust techniques by contrasting the behavior of robust and ordinary least regression (OLS)-type jump regressions in periods including disruptions of the financial markets such as so-called “flash crashes.” |
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LI, Jia TODOROV, Viktor TAUCHEN, George |
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LI, Jia TODOROV, Viktor TAUCHEN, George |
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LI, Jia |
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Robust jump regressions |
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Robust jump regressions |
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Robust jump regressions |
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Robust jump regressions |
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Robust jump regressions |
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robust jump regressions |
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Institutional Knowledge at Singapore Management University |
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2017 |
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https://ink.library.smu.edu.sg/soe_research/2570 https://ink.library.smu.edu.sg/context/soe_research/article/3569/viewcontent/Robust_Jump_Regressions.pdf |
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