论文标题
离散图形模型 - 优化透视图
Discrete graphical models -- an optimization perspective
论文作者
论文摘要
该专着是关于离散图形模型的离散能量最小化。它认为图形模型,或更确切地说是最大的图形模型推断,纯粹是组合优化问题。建模,应用程序,概率解释和许多其他方面在这里被忽略,或者仅在示例和备注中找到它们的位置。它涵盖了问题的整数线性编程公式及其线性编程,Lagrange和Lagrange分解放松。特别是,它提供了对多项式溶解的无环和下义问题的详细分析,以及相应的精确优化方法。还全面描述和分析了主要的近似方法,例如消息传递和绘图技术。该专着对学习优化或图形模型的本科和研究生以及希望了解图形模型的优化专家都有用。为了使专着适合两类读者,我们将数学优化背景章节与特定的图形模型明确分开。
This monograph is about discrete energy minimization for discrete graphical models. It considers graphical models, or, more precisely, maximum a posteriori inference for graphical models, purely as a combinatorial optimization problem. Modeling, applications, probabilistic interpretations and many other aspects are either ignored here or find their place in examples and remarks only. It covers the integer linear programming formulation of the problem as well as its linear programming, Lagrange and Lagrange decomposition-based relaxations. In particular, it provides a detailed analysis of the polynomially solvable acyclic and submodular problems, along with the corresponding exact optimization methods. Major approximate methods, such as message passing and graph cut techniques are also described and analyzed comprehensively. The monograph can be useful for undergraduate and graduate students studying optimization or graphical models, as well as for experts in optimization who want to have a look into graphical models. To make the monograph suitable for both categories of readers we explicitly separate the mathematical optimization background chapters from those specific to graphical models.