An influential observation is any point that has a huge effect on the coefficients of a regression line fitting the data. The presence of such observations in the data set reduces the sensitivity and validity of the statistical analysis. In the literature there are many methods used for identifying influential observations. However, many of those methods are highly influenced by masking and swamping effects and require distributional assumptions. Especially in the presence of influential subsets most of these methods are insufficient to detect these observations. This study aims to develop a new diagnostic tool for identifying influential observations using the meta-heuristic binary particle swarm optimization algorithm. This proposed appro...
Methods for detecting influential observations for the Weibull model fit to censored data are discus...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
The identification of influential observations has drawn a great deal of attention in regression dia...
We propose two novel diagnostic measures for the detection of influential observations for regressio...
[[abstract]]We propose two novel diagnostic measures for the detection of influential observations f...
In this study, we adapt sufficient bootstrap into the jackknife-after-bootstrap (JaB) algorithm. The...
Critical to any regression analysis is the identification of observations that exert a strong influe...
The Influential Distance (ID) is proposed to identify multiple influential observations (IOs) in lin...
<div><p>Critical to any regression analysis is the identification of observations that exert a stron...
The jackknife-after-bootstrap (JaB) method has been proposed for detecting influential observations ...
This paper presents a new method to identify influential subsets in linear regression problems. The ...
We propose a bootstrap approach to gauging the size of regression influence measures. The bootstrap ...
This paper considers the role of influence diagnostics in the partially linear regression models, y ...
Diagnostic methods have been an important tool in regression analysis to detect anomalies, such as d...
Influence diagnosis should be routinely conducted when one aims to construct a regression model. Des...
Methods for detecting influential observations for the Weibull model fit to censored data are discus...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
The identification of influential observations has drawn a great deal of attention in regression dia...
We propose two novel diagnostic measures for the detection of influential observations for regressio...
[[abstract]]We propose two novel diagnostic measures for the detection of influential observations f...
In this study, we adapt sufficient bootstrap into the jackknife-after-bootstrap (JaB) algorithm. The...
Critical to any regression analysis is the identification of observations that exert a strong influe...
The Influential Distance (ID) is proposed to identify multiple influential observations (IOs) in lin...
<div><p>Critical to any regression analysis is the identification of observations that exert a stron...
The jackknife-after-bootstrap (JaB) method has been proposed for detecting influential observations ...
This paper presents a new method to identify influential subsets in linear regression problems. The ...
We propose a bootstrap approach to gauging the size of regression influence measures. The bootstrap ...
This paper considers the role of influence diagnostics in the partially linear regression models, y ...
Diagnostic methods have been an important tool in regression analysis to detect anomalies, such as d...
Influence diagnosis should be routinely conducted when one aims to construct a regression model. Des...
Methods for detecting influential observations for the Weibull model fit to censored data are discus...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
The identification of influential observations has drawn a great deal of attention in regression dia...