Lattice Conditional Independence models are a class of models developed first for the Gaussian case in which a distributive lattice classifies all the conditional independence statements. The main result is that these models can equivalently be described via a transitive directed acyclic graph (TDAG) in which, as is normal for causal models, the conditional independence is in terms of conditioning on ancestors in the graph. We demonstrate that a parallel stream of research in algebra, the theory of Hibi ideals, not only maps directly to the LCI models but gives a vehicle to generalise the theory from the linear Gaussian case. Given a distributive lattice (i) each conditional independence statement is associated with a Hibi relation defined on the lattice, (ii) the directed graph is given by chains in the lattice which correspond to chains of conditional independence, (iii) the elimination ideal of product terms in the chains gives the Hibi ideal and (iv) the TDAG can be recovered from a special bipartite graph constructed via the Alexander dual of the Hibi ideal. It is briefly demonstrated that there are natural applications to statistical log-linear models, time series, and Shannon information flow.
翻译:Lattice Lattical Indition 模型是Gaussian案首先开发的一组模型,其中分配式拉蒂斯将所有有条件的独立声明分类,其主要结果是,这些模型可以通过中转定向单程图(TDAG)进行同等描述,该图中,与因果模型通常一样,有条件独立是以对祖先的调节为条件的。我们证明,代数的平行研究流,即希比理想理论,不仅直接映射到LCI模型,而且提供了一个工具,从线性高斯模型中概括理论。鉴于分配性拉蒂斯(i)每个有条件的独立声明都与Lattice上定义的Hibi关系相关,(ii)指示图由与有条件独立链相对的拉蒂斯链链链给出,(iii) 消除链中产品条款的理想使希比理想化,(iv) TDAG可以从通过通过Hibi理想的亚历山大双轨构建的特别双面图中恢复。它简要地表明,对统计日志模型有自然应用,同时流。