In the process of building a linear regression model, the essential part is to identify influential observations. Various influence measures involving Cook's distance and DFFITS are designed to detect the linear regression's influential observations using the Least Squares (LS). The existence of influential observations in the data is complicated by the presence of severe collinearity and affects the efficiency of the detection measures. This paper proposes new diagnostic methods based on the Liu type estimator (LTE) defined by Liu [1]. The Cook's distance and DFFITS for the LTE are introduced. Moreover, approximate formulas for Cook's distance and DFFITS are also proposed for LTE. Two real data sets with a high level of multicollinearity a...
Mixed effects models for longitudinal data with fixed as well as random parameters are often used to...
Mixed effects models for longitudinal data with fixed as well as random parameters are often used to...
The detection of outliers and influential observations has received a great deal of attention in the...
Influential observations do posed a major threat on the performance of regression model. Different i...
In regression, detecting anomalous observations is a significant step for model-building process. Va...
In regression, detecting anomalous observations is a significant step for model-building process. Va...
It sometimes occurs that one or more components of the data exert a disproportionate influence on th...
The Influential Distance (ID) is proposed to identify multiple influential observations (IOs) in lin...
In this study, the in°uence on parameter estimation of observational vec-tors in a multivariate line...
We propose two novel diagnostic measures for the detection of influential observations for regressio...
This paper considers the role of influence diagnostics in the partially linear regression models, y ...
Mixed effects models for longitudinal data with fixed as well as random parameters are often used to...
Mixed effects models for longitudinal data with fixed as well as random parameters are often used to...
Mixed effects models for longitudinal data with fixed as well as random parameters are often used to...
Mixed effects models for longitudinal data with fixed as well as random parameters are often used to...
Mixed effects models for longitudinal data with fixed as well as random parameters are often used to...
Mixed effects models for longitudinal data with fixed as well as random parameters are often used to...
The detection of outliers and influential observations has received a great deal of attention in the...
Influential observations do posed a major threat on the performance of regression model. Different i...
In regression, detecting anomalous observations is a significant step for model-building process. Va...
In regression, detecting anomalous observations is a significant step for model-building process. Va...
It sometimes occurs that one or more components of the data exert a disproportionate influence on th...
The Influential Distance (ID) is proposed to identify multiple influential observations (IOs) in lin...
In this study, the in°uence on parameter estimation of observational vec-tors in a multivariate line...
We propose two novel diagnostic measures for the detection of influential observations for regressio...
This paper considers the role of influence diagnostics in the partially linear regression models, y ...
Mixed effects models for longitudinal data with fixed as well as random parameters are often used to...
Mixed effects models for longitudinal data with fixed as well as random parameters are often used to...
Mixed effects models for longitudinal data with fixed as well as random parameters are often used to...
Mixed effects models for longitudinal data with fixed as well as random parameters are often used to...
Mixed effects models for longitudinal data with fixed as well as random parameters are often used to...
Mixed effects models for longitudinal data with fixed as well as random parameters are often used to...
The detection of outliers and influential observations has received a great deal of attention in the...