The Nearest Neighbour Imputation (NNI) method has a long history in missing data imputation. Likewise, multivariate dimensional reduction techniques allow for preserving the maximum information from the data. Recently, the combined use of these methodologies has been proposed to solve data imputation problems and exploit as much as information from the complete part of the data. In this paper we perform an extensive simulation study to test the performance of this new imputation approach (called \u201cForward Imputation\u201d - ForImp). We compare the two ForImp methods developed for missing quantitative data (the first one called ForImpPCA involving the NNI method and the Principal Component Analysis (PCA) as a multivariate data analysis t...
Missing data is an important issue in almost all fields of quantitative research. A nonparametric pr...
Imputation of missing data is important in many areas, such as reducing non-response bias in survey...
Imputation of missing data is important in many areas, such as reducing non-response bias in surveys...
An extensive investigation via simulation is carried out with the aim of comparing three nonparametr...
An extensive investigation via simulation is carried out with the aim of comparing three nonparametr...
In recent years, much research has been devoted to solve the problem of missing data imputation. Alt...
Missing data recurrently affect datasets in almost every field of quantitative research. The subject...
The problem of incomplete data and its implications for drawing valid conclusions from statistical a...
Two methods based on the Forward Imputation approach are implemented for the imputation of quantitat...
A recurring problem in multivariate data analysis (MVDA), potentially sparing no field of applicatio...
Missing data is an important issue in almost all fields of quantitative research. A nonparametric pr...
Missing data is an important issue in almost all fields of quantitative research. A nonparametric pr...
Missing data is an important issue in almost all fields of quantitative research. A nonparametric pr...
The increasing availability of data often characterized by missing values has paved the way for the ...
Missing data is an important issue in almost all fields of quantitative research. A nonparametric pr...
Missing data is an important issue in almost all fields of quantitative research. A nonparametric pr...
Imputation of missing data is important in many areas, such as reducing non-response bias in survey...
Imputation of missing data is important in many areas, such as reducing non-response bias in surveys...
An extensive investigation via simulation is carried out with the aim of comparing three nonparametr...
An extensive investigation via simulation is carried out with the aim of comparing three nonparametr...
In recent years, much research has been devoted to solve the problem of missing data imputation. Alt...
Missing data recurrently affect datasets in almost every field of quantitative research. The subject...
The problem of incomplete data and its implications for drawing valid conclusions from statistical a...
Two methods based on the Forward Imputation approach are implemented for the imputation of quantitat...
A recurring problem in multivariate data analysis (MVDA), potentially sparing no field of applicatio...
Missing data is an important issue in almost all fields of quantitative research. A nonparametric pr...
Missing data is an important issue in almost all fields of quantitative research. A nonparametric pr...
Missing data is an important issue in almost all fields of quantitative research. A nonparametric pr...
The increasing availability of data often characterized by missing values has paved the way for the ...
Missing data is an important issue in almost all fields of quantitative research. A nonparametric pr...
Missing data is an important issue in almost all fields of quantitative research. A nonparametric pr...
Imputation of missing data is important in many areas, such as reducing non-response bias in survey...
Imputation of missing data is important in many areas, such as reducing non-response bias in surveys...