Context-specific independence in graphical log-linear models
Abstract
Log-linear models are the popular workhorses of analyzing contingency tables. A log-linear parameterization of an interaction model can be more expressive than a direct parameterization based on probabilities, leading to a powerful way of defining restrictions derived from marginal, conditional and context-specific independence. However, parameter estimation is often simpler under a direct parameterization, provided that the model enjoys certain decomposability properties. Here we introduce a cyclical projection algorithm for obtaining maximum likelihood estimates of log-linear parameters under an arbitrary context-specific graphical log-linear model, which needs not satisfy criteria of decomposability. We illustrate that lifting the restriction of decomposability makes the models more expressive, such that additional context-specific independencies embedded in real data can be identified. It is also shown how a context-specific graphical model can correspond to a non-hierarchical log-linear parameterization with a concise interpretation. This observation can pave way to further development of non-hierarchical log-linear models, which have been largely neglected due to their believed lack of interpretability.
Cite
@article{arxiv.1409.2713,
title = {Context-specific independence in graphical log-linear models},
author = {Henrik Nyman and Johan Pensar and Timo Koski and Jukka Corander},
journal= {arXiv preprint arXiv:1409.2713},
year = {2015}
}
Comments
18 pages, 5 figures. arXiv admin note: text overlap with arXiv:1309.6415