2014
DOI: 10.1016/j.jeconom.2013.10.009
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Inference on stochastic time-varying coefficient models

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Cited by 131 publications
(172 citation statements)
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“…(In our empirical work the condition was always satisfied). In addition, our kernel estimator has good 4 The kernel method was developed in Kapetanios and Yates (2014), (which reworked the analysis of evolving inflation persistence in Cogley and Sargent (2005) using kernel methods), in Giraitis, Kapetanios, and Yates (2014b) (which derives the theoretical results on consistency and asymptotic normality of the kernel estimator for an AR(1) model where the coefficients follow a bounded random walk), and latterly in Giraitis, Kapetanios, and Yates (2014a) (which extends consistency results to a VAR(1) with persistent stochastic volatility).…”
Section: Connections To Existing Workmentioning
confidence: 99%
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“…(In our empirical work the condition was always satisfied). In addition, our kernel estimator has good 4 The kernel method was developed in Kapetanios and Yates (2014), (which reworked the analysis of evolving inflation persistence in Cogley and Sargent (2005) using kernel methods), in Giraitis, Kapetanios, and Yates (2014b) (which derives the theoretical results on consistency and asymptotic normality of the kernel estimator for an AR(1) model where the coefficients follow a bounded random walk), and latterly in Giraitis, Kapetanios, and Yates (2014a) (which extends consistency results to a VAR(1) with persistent stochastic volatility).…”
Section: Connections To Existing Workmentioning
confidence: 99%
“…Finally, using a rolling window which is a flat kernel has two disadvantages in our view. Firstly, it is not producing very smooth estimated parameter processes and therefore makes interpretations more difficult, and also Monte Carlo analysis in Giraitis, Kapetanios, and Yates (2014b) suggests that the normal kernel, we use, results in estimators with lower mean squared error compared to the flat kernel.…”
Section: Connections To Existing Workmentioning
confidence: 99%
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“…A large number of estimation and hypothesis testing methods have been developed from these seminal ideas, see for example, Chandler and Polonik (2017), Paparoditis and Preuss (2015), Guinness and Fuentes (2015), Chen et al (2018), Fiecas and Ombao (2016), Song et al (2016), Wu and Zhou (2011), Puchstein and Preuss (2016), Rosen et al (2012), Vogt and Dette (2015), Kreiss and Paparoditis (2015), , Zhou (2014), Nason (2013), Preuss et al (2013b) Guinness and Stein (2013), Giraitis et al (2014), Preuss et al (2013a), Zhou (2013), Roueff and Von Sachs (2011), Dette et al (2011), Van Bellegem and Dahlhaus (2006) and Beran (2009), among others.…”
Section: Introductionmentioning
confidence: 99%