论文标题
了解信仰传播的行为
Understanding the Behavior of Belief Propagation
论文作者
论文摘要
概率图形模型是建模高维分布的强大概念。除了建模分布外,概率图形模型还为执行统计推断提供了优雅的框架。但是,由于具有高维度的性质,因此通常必须使用近似方法为此目的。信念传播的表现近似推断,是有效的,并回顾了一个长期的成功故事。但是,在大多数情况下,信仰传播缺乏任何表现和融合保证。带有循环的图形模型提出了许多现实的问题,但是,在这种情况下,信念传播既不保证提供准确的估计值,也没有完全收敛。本文研究了模型参数如何影响信念传播的性能。我们对它们对(i)固定点的影响,(ii)收敛性和(iii)近似质量的影响特别感兴趣。
Probabilistic graphical models are a powerful concept for modeling high-dimensional distributions. Besides modeling distributions, probabilistic graphical models also provide an elegant framework for performing statistical inference; because of the high-dimensional nature, however, one must often use approximate methods for this purpose. Belief propagation performs approximate inference, is efficient, and looks back on a long success-story. Yet, in most cases, belief propagation lacks any performance and convergence guarantees. Many realistic problems are presented by graphical models with loops, however, in which case belief propagation is neither guaranteed to provide accurate estimates nor that it converges at all. This thesis investigates how the model parameters influence the performance of belief propagation. We are particularly interested in their influence on (i) the number of fixed points, (ii) the convergence properties, and (iii) the approximation quality.