1997
DOI: 10.2307/2533113
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On Sample Reuse Methods for Spatial Data

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Cited by 24 publications
(21 citation statements)
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“…In Section 3.1, we shall analyze discrete values time series data using the pairwise likelihood and J(θ) is suitably estimated by means of a reuse sampling procedure, called window subsampling (Carlstein 1986, Hall & Jing 1996, Garcia-Soidan & Hall 1997, Heagerty & Lele 1998, Lumley & Heagerty 1999. We briefly restore the basic procedure behind window subsampling strategies, in the case of time series data y = (y 1 , .…”
Section: Example (Continued)mentioning
confidence: 99%
“…In Section 3.1, we shall analyze discrete values time series data using the pairwise likelihood and J(θ) is suitably estimated by means of a reuse sampling procedure, called window subsampling (Carlstein 1986, Hall & Jing 1996, Garcia-Soidan & Hall 1997, Heagerty & Lele 1998, Lumley & Heagerty 1999. We briefly restore the basic procedure behind window subsampling strategies, in the case of time series data y = (y 1 , .…”
Section: Example (Continued)mentioning
confidence: 99%
“…The sample variance of the replicates is used to estimate the asymptotic variance of the estimating function, which in turn is used to estimate the asymptotic variance of the target statistic. The same idea was also used by Sherman [25] and GarciaSoidan and Hall [15].…”
Section: Subsampling Estimation Of 1 +mentioning
confidence: 99%
“…In this case the major challenge is the choice of the block length, which constitutes a trade-off in the bias-variance of estimates and is usually determined by the dependence structure of the data and the parameters under estimation (Davison and Hinkley, 1997;Hall et al, 1995). Garcia-Soidan and Hall (1997) proposed an alternative to the block bootstrap, by using a moving sampling window that translates to all possible locations within the data in order to estimate repeatedly the statistic of interest. Other more elaborated schemes within the block bootstrap framework are the use of random block sizes (Politis and Romano, 1994), and wrapping and overlapping blocks of data (Politis and Romano, 1993) in order to improve the bias and variance of the estimates.…”
Section: Resampling Schemesmentioning
confidence: 99%