Avoid Filling Swiss Cheese with Whipped Cream [electronic resource] : Imputation Techniques and Evaluation Procedures for Cross-Country Time Series / Michael Weber.

By: Weber, MichaelContributor(s): Denk, Michaela | Weber, MichaelMaterial type: TextTextSeries: IMF Working Papers; Working Paper ; No. 11/151Publication details: Washington, D.C. : International Monetary Fund, 2011Description: 1 online resource (27 p.)ISBN: 1455270504 :ISSN: 1018-5941Subject(s): Algorithms | Cluster Analysis | Econometric Modeling: Other | Estimation | Imputation Quality | Missing Data | Austria | Belgium | Netherlands | South AfricaAdditional physical formats: Print Version:: Avoid Filling Swiss Cheese with Whipped Cream : Imputation Techniques and Evaluation Procedures for Cross-Country Time SeriesOnline resources: IMF e-Library | IMF Book Store Abstract: International organizations collect data from national authorities to create multivariate cross-sectional time series for their analyses. As data from countries with not yet well-established statistical systems may be incomplete, the bridging of data gaps is a crucial challenge. This paper investigates data structures and missing data patterns in the cross-sectional time series framework, reviews missing value imputation techniques used for micro data in official statistics, and discusses their applicability to cross-sectional time series. It presents statistical methods and quality indicators that enable the (comparative) evaluation of imputation processes and completed datasets.
Tags from this library: No tags from this library for this title. Log in to add tags.
    Average rating: 0.0 (0 votes)
No physical items for this record

International organizations collect data from national authorities to create multivariate cross-sectional time series for their analyses. As data from countries with not yet well-established statistical systems may be incomplete, the bridging of data gaps is a crucial challenge. This paper investigates data structures and missing data patterns in the cross-sectional time series framework, reviews missing value imputation techniques used for micro data in official statistics, and discusses their applicability to cross-sectional time series. It presents statistical methods and quality indicators that enable the (comparative) evaluation of imputation processes and completed datasets.

Description based on print version record.

There are no comments on this title.

to post a comment.

Powered by Koha