In regression, detecting anomalous observations is a significant step for model-building process. Various influence measures based on different motivational arguments are designed to measure the influence of observations through different aspects of various regression models. The presence of influential observations in the data is complicated by the existence of multicollinearity. The purpose of this paper is to assess the influence of observations in the Liu [9] and modified Liu [15] estimators by using the method of approximate case deletion formulas suggested by Walker and Birch [14]. A numerical example using a real data set used by Longley [10] and a Monte Carlo simulation are given to illustrate the theoretical results
Diagnostic methods have been an important tool in regression analysis to detect anomalies, such as d...
Abstract. A practical approach to influence analysis in statistical modelling is based on case weigh...
The identification of influential observations has drawn a great deal of attention in regression dia...
In regression, detecting anomalous observations is a significant step for model-building process. Va...
In the process of building a linear regression model, the essential part is to identify influential ...
Critical to any regression analysis is the identification of observations that exert a strong influe...
Influential observations do posed a major threat on the performance of regression model. Different i...
<div><p>Critical to any regression analysis is the identification of observations that exert a stron...
We occasionally find that a small subset of the data exerts a disproportionate influence on the fitt...
[[abstract]]We propose two novel diagnostic measures for the detection of influential observations f...
[[abstract]]We propose two novel diagnostic measures for the detection of influential observations f...
Diagnostic methods have been an important tool in regression analysis to detect anomalies, such as d...
The detection of outliers and influential observations has received a great deal of attention in the...
We propose two novel diagnostic measures for the detection of influential observations for regressio...
Semiparametric mixed models are useful in biometric and econometric applications, especially for lon...
Diagnostic methods have been an important tool in regression analysis to detect anomalies, such as d...
Abstract. A practical approach to influence analysis in statistical modelling is based on case weigh...
The identification of influential observations has drawn a great deal of attention in regression dia...
In regression, detecting anomalous observations is a significant step for model-building process. Va...
In the process of building a linear regression model, the essential part is to identify influential ...
Critical to any regression analysis is the identification of observations that exert a strong influe...
Influential observations do posed a major threat on the performance of regression model. Different i...
<div><p>Critical to any regression analysis is the identification of observations that exert a stron...
We occasionally find that a small subset of the data exerts a disproportionate influence on the fitt...
[[abstract]]We propose two novel diagnostic measures for the detection of influential observations f...
[[abstract]]We propose two novel diagnostic measures for the detection of influential observations f...
Diagnostic methods have been an important tool in regression analysis to detect anomalies, such as d...
The detection of outliers and influential observations has received a great deal of attention in the...
We propose two novel diagnostic measures for the detection of influential observations for regressio...
Semiparametric mixed models are useful in biometric and econometric applications, especially for lon...
Diagnostic methods have been an important tool in regression analysis to detect anomalies, such as d...
Abstract. A practical approach to influence analysis in statistical modelling is based on case weigh...
The identification of influential observations has drawn a great deal of attention in regression dia...