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1998 | OriginalPaper | Buchkapitel

Nonparameteric Regression Splines for Generalized Linear Measurement Error Models

verfasst von : Raymond J. Carroll, Jeffrey D. Maca, Suojin Wang

Erschienen in: Econometrics in Theory and Practice

Verlag: Physica-Verlag HD

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In many regression applications both the independent and dependent variables are measured with error. When this happens, conventional parametric and nonparametric regression techniques are no longer valid. This is further complicated when one instead wants to fit a generalized linear model to the collected data. We consider two different estimation techniques. The first method is the SIMEX (SIMulation Extrapolation) algorithm which attempts to estimate the bias, and remove it. The second method is a structural approach, where one hypothesizes a distribution for the independent variable which depends on estimable parameters. For both methods, two different knot selection methods are developed.

Metadaten
Titel
Nonparameteric Regression Splines for Generalized Linear Measurement Error Models
verfasst von
Raymond J. Carroll
Jeffrey D. Maca
Suojin Wang
Copyright-Jahr
1998
Verlag
Physica-Verlag HD
DOI
https://doi.org/10.1007/978-3-642-47027-1_3

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