Parametric Bootstrap for Linear Regression with Long-memory Errors: an Improvement to the Traditional Delta Method Approach - Mosisa Aga - 書籍 - LAP Lambert Academic Publishing - 9783838340616 - 2010年6月24日
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Parametric Bootstrap for Linear Regression with Long-memory Errors: an Improvement to the Traditional Delta Method Approach

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発送予定日 年8月3日 - 年8月13日
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Invented in 1979 by Bradley Efron, the relatively new topic of bootstrap approximation technique is becoming one of the most efficient and fast expanding methods of statistical analysis, used not only by statisticians, but also by other researchers in economics, finance, medical sciences, life sciences, social sciences, and business. However, the current application of bootstrap is largely focused on independent and identically distributed (iid) data and to a lesser extent on weakly dependent data structures. Very little attempt is done to analyze the performance of bootstrap to strongly dependent (long-memory) processes. This work aims at laying the mathematical foundation for the application of parametric bootstrap to regression processes whose disturbance terms are strongly dependent. It is shown that, under some sets of conditions on the regression coefficients, the spectral density function, and the parameter values, the parametric bootstrap based on the plug-in log-likelihood (PLL) function of linear regression processes with Gaussian, stationary, and long-memory errors, provides higher-order improvements over the traditional delta method.

メディア 書籍     Paperback Book   (ソフトカバーで背表紙を接着した本)
リリース済み 2010年6月24日
ISBN13 9783838340616
出版社 LAP Lambert Academic Publishing
ページ数 64
寸法 225 × 4 × 150 mm   ·   113 g
言語 ドイツ語