<p>When regression analysis is used as a global spatialisation method for climatic variables, one must pay special attention to the presence of values evading the spatial variation rules stated by the model (outliers). The outliers may alter significantly our regression models, therefore leading us to drawing the wrong conclusions. Our study focuses on the outliers problem through a simple example of mean annual precipitations spatialisation in eastern Romania using the altitude as predictor. The identification of the outliers is based on the magnitude of the residuals, on cross-validation and on the comparison of the regression residuals with the deleted residuals (jackknife error). After the identification stage, we construct regression m...
The mitigation of outliers serves to increase the strength of a relationship between variables. This...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
In this paper we compare and analyze which of the most popular outlier detection methods work best i...
The robustness of the results coming from an econometric application depends to a great extent on th...
Influential observations (IOs), which are outliers in the x direction, y direction or both, remain a...
Abstract: Outlier detection concerns discovering some unusual data whose behavior is exceptional com...
Any transformation of a discrete variable into a continuous one is subject to uncertainty. Consequen...
Influential observations (IOs), which are outliers in the x direction, y direction or both, remain a...
In recent times climate change has been considered to be the major problem. Meteorology is the study...
Abstract This article has theoretically discussed some points regarding outliers caused by errors in...
ABSTRACT In this study, the presence of outliers in wheat production data based on residuals obtaine...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
<p>For each subject and cueing condition (i.e. congruent, incongruent, control), slopes were calcula...
In data mining, data cleaning is the most important process for data analysis. Raw data that we coll...
In this article we suggest a unified approach to the exploratory analysis of spatial data. Our techn...
The mitigation of outliers serves to increase the strength of a relationship between variables. This...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
In this paper we compare and analyze which of the most popular outlier detection methods work best i...
The robustness of the results coming from an econometric application depends to a great extent on th...
Influential observations (IOs), which are outliers in the x direction, y direction or both, remain a...
Abstract: Outlier detection concerns discovering some unusual data whose behavior is exceptional com...
Any transformation of a discrete variable into a continuous one is subject to uncertainty. Consequen...
Influential observations (IOs), which are outliers in the x direction, y direction or both, remain a...
In recent times climate change has been considered to be the major problem. Meteorology is the study...
Abstract This article has theoretically discussed some points regarding outliers caused by errors in...
ABSTRACT In this study, the presence of outliers in wheat production data based on residuals obtaine...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
<p>For each subject and cueing condition (i.e. congruent, incongruent, control), slopes were calcula...
In data mining, data cleaning is the most important process for data analysis. Raw data that we coll...
In this article we suggest a unified approach to the exploratory analysis of spatial data. Our techn...
The mitigation of outliers serves to increase the strength of a relationship between variables. This...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
In this paper we compare and analyze which of the most popular outlier detection methods work best i...