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E-book

Title Analysis of integrated data / edited by Li-Chun Zhang, Raymond L. Chambers
Published Boca Raton, FL: CRC Press, Taylor & Francis Group, [2019]

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Description 1 online resource (xvi, 256 pages) : illustrations
Series Chapman & Hall/CRC statistics in the social and behavioral sciences series
Statistics in the social and behavioral sciences series.
Contents 1. Introduction -- 2. On secondary analysis of datasets that cannot be linked without errors -- 3. Capture-recapture methods in the presence of linkage errors -- 4. An overview on uncertainty and estimation in statistical matching -- 5. Auxiliary variable selection in a statistical matching problem -- 6. Minimal inference from incomplete 2 x 2-tables -- 7. Dual- and multiple-system estimation with fully and partially observed covariates -- 8. Estimating population size in multiple record systems with uncertainy of state identification -- 9. Log-linear models of incomplete contingency tables --10. Sampling design and analysis using geo-referenced data
Summary "The advent of 'Big Data' has brought with it a rapid diversification of data sources, requiring analysis that accounts for the fact that these data have often been generated and recorded for different reasons. Data integration involves combining data residing in different sources to enable statistical inference, or to generate new statistical data for purposes that cannot be served by each source on its own. This can yield significant gains for scientific as well as commercial investigations. However, valid analysis of such data should allow for the additional uncertainty due to entity ambiguity, whenever it is not possible to state with certainty that the integrated source is the target population of interest. Analysis of Integrated Data aims to provide a solid theoretical basis for this statistical analysis in three generic settings of entity ambiguity: statistical analysis of linked datasets that may contain linkage errors; datasets created by a data fusion process, where joint statistical information is simulated using the information in marginal data from non-overlapping sources; and estimation of target population size when target units are either partially or erroneously covered in each source. Covers a range of topics under an overarching perspective of data integration. Focuses on statistical uncertainty and inference issues arising from entity ambiguity. Features state of the art methods for analysis of integrated data. Identifies the important themes that will define future research and teaching in the statistical analysis of integrated data. Analysis of Integrated Data is aimed primarily at researchers and methodologists interested in statistical methods for data from multiple sources, with a focus on data analysts in the social sciences, and in the public and private sectors."-- Provided by publisher
Notes "A Chapman & Hall book."
Bibliography Includes bibliographical references and index
Notes Print version record and onlilne resource (Taylor & Francis, viewed March 26, 2021)
Subject Multivariate analysis.
Multiple imputation (Statistics)
Measurement uncertainty (Statistics)
Mathematical statistics.
Multivariate Analysis
MATHEMATICS -- Applied.
MATHEMATICS -- Probability & Statistics -- General.
REFERENCE -- General.
Mathematical statistics.
Measurement uncertainty (Statistics)
Multiple imputation (Statistics)
Multivariate analysis.
Form Electronic book
Author Zhang, Lichun, editor
Chambers, Raymond L., 1950- editor.
LC no. 2020694050
ISBN 9781315120416
1315120410
9781351646727
1351646729
9781498727990
1498727999
9781351637206
1351637207