The entropic region is formed by the collection of the Shannon entropies of all subvectors of finitely many jointly distributed discrete random variables. For four or more variables the structure of the entropic region is mostly unknown. We utilize a variant of the Maximum Entropy Method to delimit the five-variable entropy region. This method adds copies of some of the random variables in generations. A significant reduction in computational complexity, achieved through theoretical considerations and by harnessing the inherent symmetries, allowed us to calculate all five-variable non-Shannon inequalities provided by the first nine generations. Based on the results, we define two infinite collections of such inequalities, and prove them to be entropy inequalities. We investigate downward closed subsets of non-negative lattice points that parameterize these collections, based on which we develop an algorithm to enumerate all extremal inequalities. The discovered set of entropy inequalities is conjectured to characterize the applied method completely.
翻译:熵区域由有限多个联合分布的离散随机变量的所有子向量的香农熵集合构成。对于四个或更多变量,熵区域的结构大多未知。我们利用最大熵方法的一种变体来界定五变量熵区域。该方法通过在迭代过程中添加部分随机变量的副本。通过理论考量并利用固有的对称性,我们实现了计算复杂度的显著降低,从而得以计算前九次迭代提供的所有五变量非香农不等式。基于这些结果,我们定义了两个无限族此类不等式,并证明它们均为熵不等式。我们研究了参数化这些族的非负格点向下封闭子集,在此基础上开发了枚举所有极值不等式的算法。所发现的熵不等式集合被推测能完全刻画所应用方法的特征。