Partially linear models are extensions of linear models to include a non-parametric function of some covariate. They have been found to be useful in both cross-sectional and longitudinal studies. This paper provides a convenient means to extend Cook's local influence analysis to the penalized Gaussian likelihood estimator that uses a smoothing spline as a solution to its non-parametric component. Insight is also provided into the interplay of the influence or leverage measures between the linear and the non-parametric components in the model. The diagnostics are applied to a mouth wash data set and a longitudinal hormone study with informative results.link_to_subscribed_fulltex
AbstractIn principal components analysis, the influence function and local influence approaches have...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
This paper considers the role of influence diagnostics in the partially linear regression models, y ...
In restricted statistical models, since the first derivatives of the likelihood displacement are oft...
The influence of observations on the outcome of an analysis is of importance in statistical data ana...
Semiparametric mixed models are useful in biometric and econometric applications, especially for lon...
Statistical analyses are usually based on models. However, a model is almost always only an approx- ...
Suggested diagnostics for influence on the estimated regression coefficients in a general-ized linea...
In this paper we extend partial linear models with normal errors to Student-t errors Penalized likel...
It is important to understand the influence of data and model assumptions on the results of a statis...
The local influence method has proven to be a useful and powerful tool for detecting influential obs...
In principal components analysis, the influence function and local influence approaches have been we...
Generalized linear mixed-effect models are widely used for the analysis of correlated non-Gaussian d...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
AbstractIn principal components analysis, the influence function and local influence approaches have...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
This paper considers the role of influence diagnostics in the partially linear regression models, y ...
In restricted statistical models, since the first derivatives of the likelihood displacement are oft...
The influence of observations on the outcome of an analysis is of importance in statistical data ana...
Semiparametric mixed models are useful in biometric and econometric applications, especially for lon...
Statistical analyses are usually based on models. However, a model is almost always only an approx- ...
Suggested diagnostics for influence on the estimated regression coefficients in a general-ized linea...
In this paper we extend partial linear models with normal errors to Student-t errors Penalized likel...
It is important to understand the influence of data and model assumptions on the results of a statis...
The local influence method has proven to be a useful and powerful tool for detecting influential obs...
In principal components analysis, the influence function and local influence approaches have been we...
Generalized linear mixed-effect models are widely used for the analysis of correlated non-Gaussian d...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
AbstractIn principal components analysis, the influence function and local influence approaches have...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...