Marginal models. For dependent, clustered, and longitudinal categorical data

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Publication:999150

DOI10.1007/b12532zbMath1181.62001OpenAlexW4250413832MaRDI QIDQ999150

Wicher P. Bergsma, Marcel Croon, Jacques A. Hagenaars

Publication date: 2 February 2009

Published in: Statistics for Social and Behavioral Sciences (Search for Journal in Brave)

Full work available at URL: https://doi.org/10.1007/b12532




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