Missing data represent a general problem in many scientific fields above all in environmental research. Several methods have been proposed in literature for handling missing data and the choice of an appropriate method depends, among others, on the missing data pattern and on the missing-data mechanism. One approach to the problem is to impute them to yield a complete data set. The goal of this paper is to propose a new single imputation method and to compare its performance to other single and multiple imputation methods known in literature. Considering a data set of PM10 concentration measured every by eight monitoring stations distributed over the metropolitan area of Palermo, Sicily, during 2003, simulated incomplete data have been gen...
Missing values in air quality data may lead to a substantial amount of bias and inefficiency in mode...
This paper presents various imputation methods for air quality data specifically in Malaysia. The ma...
Air pollution monitoring especially PM10 pollutant is very important since the air pollutant data or...
Missing data represent a general problem in many scientific fields above all in environmental resear...
Background: PIn air quality studies, it is very often to have missing data due to reasons such as ma...
Background: PIn air quality studies, it is very often to have missing data due to reasons such as ma...
The air quality measurement data obtained from the continuous ambient air quality monitoring (CAAQM)...
The data obtained from air quality monitoring stations, which are used to carry out studies using da...
This paper presents various imputation methods for air quality data specifically in Malaysia. The ma...
Missing data is a frequently encountered problem in environment research community. To facilitate th...
Monitoring of environmental contaminants is a critical part of exposure sciences research and public...
The aim of this study is to determine the best imputation method to fill in the various gaps of miss...
In environmental research, missing data are often a challenge for statistical modeling. This paper a...
In environmental research, missing data are often a challenge for statistical modeling. This paper a...
In environmental research, missing data are often a challenge for statistical modeling. This paper a...
Missing values in air quality data may lead to a substantial amount of bias and inefficiency in mode...
This paper presents various imputation methods for air quality data specifically in Malaysia. The ma...
Air pollution monitoring especially PM10 pollutant is very important since the air pollutant data or...
Missing data represent a general problem in many scientific fields above all in environmental resear...
Background: PIn air quality studies, it is very often to have missing data due to reasons such as ma...
Background: PIn air quality studies, it is very often to have missing data due to reasons such as ma...
The air quality measurement data obtained from the continuous ambient air quality monitoring (CAAQM)...
The data obtained from air quality monitoring stations, which are used to carry out studies using da...
This paper presents various imputation methods for air quality data specifically in Malaysia. The ma...
Missing data is a frequently encountered problem in environment research community. To facilitate th...
Monitoring of environmental contaminants is a critical part of exposure sciences research and public...
The aim of this study is to determine the best imputation method to fill in the various gaps of miss...
In environmental research, missing data are often a challenge for statistical modeling. This paper a...
In environmental research, missing data are often a challenge for statistical modeling. This paper a...
In environmental research, missing data are often a challenge for statistical modeling. This paper a...
Missing values in air quality data may lead to a substantial amount of bias and inefficiency in mode...
This paper presents various imputation methods for air quality data specifically in Malaysia. The ma...
Air pollution monitoring especially PM10 pollutant is very important since the air pollutant data or...