The use of residuals for detecting departures from the assumptions of the linear model with full-rank covariance, whether the design matrix is full rank or not, has long been recognized as an important diagnostic tool. Once it became feasible to compute different kinds of residual in a straight forward way, various methods have focused on their underlying properties and their effectiveness. The recursive residuals are attractive in Econometric applications where there is a natural ordering among the observations through time. New formulations for the recursive residuals for models having uncorrelated errors with equal variances are given in terms of the observation vector or the usual least-squares residuals, which do not require the comput...
This paper considers residuals for time series regression. Despite much literature on visual diagnos...
Linear models where the response is a function and the predictors are vectors are useful in analyzin...
ABSTRACT All observations don’t have equal significance in regression analysis. Diagnostics of obse...
In the last three decades recursive residuals and estimation have received extensive attention as im...
This paper presents and extends the concept of recursive residuals and their estimation to an import...
This paper presents and extends the concept of recursive residuals and their estimation to an import...
This paper presents recursive residuals de_nition, formulae and application to Linear Mixed Models (...
SUMMARY. In this paper we provide exact algebraic expressions for the recalculation of the BLUE, the...
Model diagnostics for normal and non-normal state space models is based on recursive residuals which...
The error contrasts from an experimental design can be constructed from uncorrelated residuals norma...
A number of different kinds of residuals are used in the analysis of generalized linear models. Gene...
Linear models where the response is a function and the predictors are vectors are useful in analyzi...
Despite the widespread popularity of linear models for correlated outcomes (e.g. linear mixed models...
Adjusted responses, adjusted fitted values and adjusted residuals are known to play in Generalized L...
Despite the widespread popularity of linear models for correlated outcomes (e.g., linear mixed model...
This paper considers residuals for time series regression. Despite much literature on visual diagnos...
Linear models where the response is a function and the predictors are vectors are useful in analyzin...
ABSTRACT All observations don’t have equal significance in regression analysis. Diagnostics of obse...
In the last three decades recursive residuals and estimation have received extensive attention as im...
This paper presents and extends the concept of recursive residuals and their estimation to an import...
This paper presents and extends the concept of recursive residuals and their estimation to an import...
This paper presents recursive residuals de_nition, formulae and application to Linear Mixed Models (...
SUMMARY. In this paper we provide exact algebraic expressions for the recalculation of the BLUE, the...
Model diagnostics for normal and non-normal state space models is based on recursive residuals which...
The error contrasts from an experimental design can be constructed from uncorrelated residuals norma...
A number of different kinds of residuals are used in the analysis of generalized linear models. Gene...
Linear models where the response is a function and the predictors are vectors are useful in analyzi...
Despite the widespread popularity of linear models for correlated outcomes (e.g. linear mixed models...
Adjusted responses, adjusted fitted values and adjusted residuals are known to play in Generalized L...
Despite the widespread popularity of linear models for correlated outcomes (e.g., linear mixed model...
This paper considers residuals for time series regression. Despite much literature on visual diagnos...
Linear models where the response is a function and the predictors are vectors are useful in analyzin...
ABSTRACT All observations don’t have equal significance in regression analysis. Diagnostics of obse...