Purpose – Missing data are a recurring problem that can cause bias or lead to inefficient analyses. The objective of this paper is a direct comparison between the two statistical software features R and SPSS, in order to take full advantage of the existing automated methods for data editing process and imputation in business surveys (with a proper design of consistency rules) as a partial alternative to the manual editing of data. Approach – The comparison of different methods on editing surveys data, in R with the ‘editrules’ and ‘survey’ packages because inside those, exist commonly used transformations in official statistics, as visualization of missing values pattern using ‘Amelia’ and ‘VIM’ packages, imputation approaches for longitudi...
The Survey of Health, Ageing and Retirement in Europe (SHARE), like all large household surveys, suf...
This book focuses on quantitative survey methodology, data collection and cleaning methods. Providin...
In real-life situations, we often encounter data sets containing missing observations. Statistical m...
Data editing and imputation (E&I) in complex sample business surveys is a task which is usually spli...
Business surveys often use complex sets of edit rules (edits, for short) to check returned questionn...
Statistical Data Editing (SDE) is the process of checking and correcting data for errors. Winkler (1...
EnThe aim of this paper is two-fold: to propose the imputation procedure named ABBN for replacing mi...
National audienceMissing data is strongly connected to statistics that is concerned with the collect...
The paper describes, on the one hand, the procedures implemented to maximise the response rates and ...
The traditional approach to editing in the production of official statistics is to aim at detecting ...
Abscent of records generally termed as missing data which should be treated properly before analysis...
Abscent of records generally termed as missing data which should be treated properly before analysis...
Eurostat and the European National Statistical Institutes (NSIs) need to provide detailed high-quali...
Often, analyzing administrative data we have a large number of units and variables and many missing ...
A common problem faced by statistical offices is that data may be missing from collected data sets. ...
The Survey of Health, Ageing and Retirement in Europe (SHARE), like all large household surveys, suf...
This book focuses on quantitative survey methodology, data collection and cleaning methods. Providin...
In real-life situations, we often encounter data sets containing missing observations. Statistical m...
Data editing and imputation (E&I) in complex sample business surveys is a task which is usually spli...
Business surveys often use complex sets of edit rules (edits, for short) to check returned questionn...
Statistical Data Editing (SDE) is the process of checking and correcting data for errors. Winkler (1...
EnThe aim of this paper is two-fold: to propose the imputation procedure named ABBN for replacing mi...
National audienceMissing data is strongly connected to statistics that is concerned with the collect...
The paper describes, on the one hand, the procedures implemented to maximise the response rates and ...
The traditional approach to editing in the production of official statistics is to aim at detecting ...
Abscent of records generally termed as missing data which should be treated properly before analysis...
Abscent of records generally termed as missing data which should be treated properly before analysis...
Eurostat and the European National Statistical Institutes (NSIs) need to provide detailed high-quali...
Often, analyzing administrative data we have a large number of units and variables and many missing ...
A common problem faced by statistical offices is that data may be missing from collected data sets. ...
The Survey of Health, Ageing and Retirement in Europe (SHARE), like all large household surveys, suf...
This book focuses on quantitative survey methodology, data collection and cleaning methods. Providin...
In real-life situations, we often encounter data sets containing missing observations. Statistical m...