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A least squares method for variance estimation in heteroscedastic nonparametric regression
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نویسنده
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zhou y. ,cheng y. ,tong t.
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منبع
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journal of applied mathematics - 2014 - دوره : 2014 - شماره : 0
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چکیده
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Interest in variance estimation in nonparametric regression has grown greatly in the past several decades. among the existing methods,the least squares estimator in tong and wang (2005) is shown to have nice statistical properties and is also easy to implement. nevertheless,their method only applies to regression models with homoscedastic errors. in this paper,we propose two least squares estimators for the error variance in heteroscedastic nonparametric regression: the intercept estimator and the slope estimator. both estimators are shown to be consistent and their asymptotic properties are investigated. finally,we demonstrate through simulation studies that the proposed estimators perform better than the existing competitor in various settings. © 2014 yuejin zhou et al.
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آدرس
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school of science,anhui university of science and technology,huainan 232001,china,school of statistics and management,shanghai university of finance and economics, China, school of statistics and management,shanghai university of finance and economics, China, department of mathematics,hong kong baptist university, Hong Kong
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Authors
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