%0 Journal Article %T Log-mean linear models for binary data %A Alberto Roverato %A Monia Lupparelli %A Luca La Rocca %J Statistics %D 2011 %I arXiv %R 10.1093/biomet/ass080 %X This paper introduces a novel class of models for binary data, which we call log-mean linear models. The characterizing feature of these models is that they are specified by linear constraints on the log-mean linear parameter, defined as a log-linear expansion of the mean parameter of the multivariate Bernoulli distribution. We show that marginal independence relationships between variables can be specified by setting certain log-mean linear interactions to zero and, more specifically, that graphical models of marginal independence are log-mean linear models. Our approach overcomes some drawbacks of the existing parameterizations of graphical models of marginal independence. %U http://arxiv.org/abs/1109.6239v4