Outliers are abnormal, aberrant or outlying observations in data and can cause distortion of estimations in statistical models. Identification of outliers is an important process for preventing faulty conclusions in statistical analysis. Simultaneous outlier detection, which genetic algorithms (GA) provide, is more successful than the methods based on detecting outliers one by one when an order of detection is important. In this study, we derived new approaches of information criteria which are based on Akaike's information criterion (AIC) and Bozdogan's information complexity (ICOMP) information criterion and we used them as the fitness function of GAs to detect outliers in multiple regression. Performances of AIC' and ICOMP' that we deriv...
Outliers are one of the most difficult issues when dealing with real-world modeling tasks. Even a sm...
Traditional multiple hypothesis testing procedures, such as that of Benjamini and Hochberg, fix an e...
This paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
WOS: 000285347900002Outliers are abnormal, aberrant or outlying observations in data and can cause d...
Multiple linear regression models are widely used applied statistical techniques and they are most u...
Multiple linear regression models are widely used applied statistical techniques and they are most u...
Information criteria for model choice are extended to the detection of outliers in regression models...
The main objective the outlier detection is to find the data that are exceptional from other data in...
The detection of multiple outliers can be interpreted as a model selection problem. Models that can ...
This article presents a simple and efficient method to detect multiple outliers using a modification...
The problem of outliers in statistical data has attracted many researchers for a long time. Conseque...
Abstract In this article we use meta-heuristic meth-ods to detect additive outliers in multivariate ...
Multivariate outlier identification requires the choice of reliable cut-off points for the robust di...
Although it is customary to assume that data are homogeneous, in fact, they often contain outliers o...
This dissertation develops a novel computationally feasible intelligent data mining and knowledge di...
Outliers are one of the most difficult issues when dealing with real-world modeling tasks. Even a sm...
Traditional multiple hypothesis testing procedures, such as that of Benjamini and Hochberg, fix an e...
This paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
WOS: 000285347900002Outliers are abnormal, aberrant or outlying observations in data and can cause d...
Multiple linear regression models are widely used applied statistical techniques and they are most u...
Multiple linear regression models are widely used applied statistical techniques and they are most u...
Information criteria for model choice are extended to the detection of outliers in regression models...
The main objective the outlier detection is to find the data that are exceptional from other data in...
The detection of multiple outliers can be interpreted as a model selection problem. Models that can ...
This article presents a simple and efficient method to detect multiple outliers using a modification...
The problem of outliers in statistical data has attracted many researchers for a long time. Conseque...
Abstract In this article we use meta-heuristic meth-ods to detect additive outliers in multivariate ...
Multivariate outlier identification requires the choice of reliable cut-off points for the robust di...
Although it is customary to assume that data are homogeneous, in fact, they often contain outliers o...
This dissertation develops a novel computationally feasible intelligent data mining and knowledge di...
Outliers are one of the most difficult issues when dealing with real-world modeling tasks. Even a sm...
Traditional multiple hypothesis testing procedures, such as that of Benjamini and Hochberg, fix an e...
This paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...