Applications of the random recursive partitioning (RRP) method are described. This method generates a proximity matrix which can be used in non-parametric matching problems such as hot-deck missing data imputation and average treatment effect estimation. RRP is a Monte Carlo procedure that randomly generates non-empty recursive partitions of the data and calculates the proximity between observations as the empirical frequency in the same cell of these random partitions over all the replications. Also, the method in the presence of missing data is invariant under monotonic transformations of the data but no other formal properties of the method are known yet. Therefore, Monte Carlo experiments were conducted in order to explore the performan...
A nonparametric impotation method for statistical matching is introduced, and its properties are stu...
A new nonparametric technique to impute missing data is proposed in order to obtain a completed data...
The increasing availability of data often characterized by missing values has paved the way for the ...
Applications of the random recursive partitioning (RRP) method are described. This method generates ...
Applications of the random recursive partitioning (RRP) method are described. This method generates ...
In this paper we introduce the Random Recursive Partitioning (RRP) matching method. RRP generates a ...
In this paper we introduce the Random Recursive Partitioning (RRP) matching method. RRP generates a ...
Data matching is a typical statistical problem in non experimental and/or observational studies or, ...
In this work we propose to evaluate the effect of missing data on a k-means method used for variable...
IXth Conference of the International Federation of Classification Societies, Juillet 2004, ChicagoWe...
Random forest (RF) missing data algorithms are an attractive approach for imputing missing data. The...
Missing value imputation is an actual yet challenging issue confronted by machine learning and data ...
In order to overcome the problem of item nonresponse, random imputations are often used because they...
Standard approaches to implement multiple imputation do not automatically incorporate nonlinear rela...
This paper presents a procedure that imputes missing values by using random forests on semi-supervis...
A nonparametric impotation method for statistical matching is introduced, and its properties are stu...
A new nonparametric technique to impute missing data is proposed in order to obtain a completed data...
The increasing availability of data often characterized by missing values has paved the way for the ...
Applications of the random recursive partitioning (RRP) method are described. This method generates ...
Applications of the random recursive partitioning (RRP) method are described. This method generates ...
In this paper we introduce the Random Recursive Partitioning (RRP) matching method. RRP generates a ...
In this paper we introduce the Random Recursive Partitioning (RRP) matching method. RRP generates a ...
Data matching is a typical statistical problem in non experimental and/or observational studies or, ...
In this work we propose to evaluate the effect of missing data on a k-means method used for variable...
IXth Conference of the International Federation of Classification Societies, Juillet 2004, ChicagoWe...
Random forest (RF) missing data algorithms are an attractive approach for imputing missing data. The...
Missing value imputation is an actual yet challenging issue confronted by machine learning and data ...
In order to overcome the problem of item nonresponse, random imputations are often used because they...
Standard approaches to implement multiple imputation do not automatically incorporate nonlinear rela...
This paper presents a procedure that imputes missing values by using random forests on semi-supervis...
A nonparametric impotation method for statistical matching is introduced, and its properties are stu...
A new nonparametric technique to impute missing data is proposed in order to obtain a completed data...
The increasing availability of data often characterized by missing values has paved the way for the ...