Log‐mean Linear Parameterization for Discrete Graphical Models of Marginal Independence and the Analysis of Dichotomizations
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Publication:5251498
DOI10.1111/sjos.12126zbMath1376.62088OpenAlexW1496813153MaRDI QIDQ5251498
Publication date: 20 May 2015
Published in: Scandinavian Journal of Statistics (Search for Journal in Brave)
Full work available at URL: https://doi.org/10.1111/sjos.12126
contingency tablesingle-nucleotide polymorphismgraphical Markov modelmarginal independenceparsimonious model
Applications of statistics to biology and medical sciences; meta analysis (62P10) Applications of graph theory (05C90) General nonlinear regression (62J02) Biochemistry, molecular biology (92C40)
Uses Software
Cites Work
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