Confidence bands in non‐parametric errors‐in‐variables regression

Errors‐in‐variables regression is important in many areas of science and social science, e.g. in economics where it is often a feature of hedonic models, in environmental science where air quality indices are measured with error, in biology where the vegetative mass of plants is frequently obscured...

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Published inJournal of the Royal Statistical Society. Series B, Statistical methodology Vol. 77; no. 1; pp. 149 - 169
Main Authors Delaigle, Aurore, Hall, Peter, Jamshidi, Farshid
Format Journal Article
LanguageEnglish
Published Oxford Royal Statistical Society 01.01.2015
Blackwell Publishing Ltd
John Wiley & Sons Ltd
Oxford University Press
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Summary:Errors‐in‐variables regression is important in many areas of science and social science, e.g. in economics where it is often a feature of hedonic models, in environmental science where air quality indices are measured with error, in biology where the vegetative mass of plants is frequently obscured by mismeasurement and in nutrition where reported fat intake is typically subject to substantial error. To date, in non‐parametric contexts, the great majority of work has focused on methods for estimating the mean as a function, with relatively little attention being paid to techniques for empirical assessment of the accuracy of the estimator. We develop methodologies for constructing confidence bands. Our contributions include techniques for tuning parameter choice aimed at minimizing the coverage error of confidence bands.
Bibliography:http://dx.doi.org/10.1111/rssb.12067
 
ark:/67375/WNG-NJ7HF1QZ-0
ArticleID:RSSB12067
istex:A358993B7EA0CC85D145775249620A0F8A8C761D
Australian Research Council
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ObjectType-Feature-1
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ISSN:1369-7412
1467-9868
DOI:10.1111/rssb.12067