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MAP Inference Via l(2)-Sphere Linear Program Reformulation

机译:通过L(2) - 短线性程序重新定位映射推断

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Maximum a posteriori (MAP) inference is an important task for graphical models. Due to complex dependencies among variables in realistic models, finding an exact solution for MAP inference is often intractable. Thus, many approximation methods have been developed, among which the linear programming (LP) relaxation based methods show promising performance. However, one major drawback of LP relaxation is that it is possible to give fractional solutions. Instead of presenting a tighter relaxation, in this work we propose a continuous but equivalent reformulation of the original MAP inference problem, called LS-LP. We add the 2-sphere constraint onto the original LP relaxation, leading to an intersected space with the local marginal polytope that is equivalent to the space of all valid integer label configurations. Thus, LS-LP is equivalent to the original MAP inference problem. We propose a perturbed alternating direction method of multipliers (ADMM) algorithm to optimize the LS-LP problem, by adding a sufficiently small perturbation onto the objective function and constraints. We prove that the perturbed ADMM algorithm globally converges to the -Karush-Kuhn-Tucker ( -KKT) point of the LS-LP problem. The convergence rate will also be analyzed. Experiments on several benchmark datasets from Probabilistic Inference Challenge (PIC 2011) and OpenGM 2 show competitive performance of our proposed method against state-of-the-art MAP inference methods.
机译:最大后验(MAP)推理是图形模型的重要任务。由于现实模型中的变量之间的复杂依赖性,寻找用于地图推断的精确解决方案通常是棘手的。因此,已经开发了许多近似方法,其中基于线性编程(LP)弛豫的方法显示了有希望的性能。然而,LP弛豫的一个主要缺点是可以提供分数解决方案。在这项工作中,我们提出了对称为LS-LP的原始地图推理问题的连续但等效的重新提出了持续但相当于放松。我们将2-Sphere约束添加到原始LP放松上,导致与局部边际多特焦点相当于所有有效整数配置配置的空间。因此,LS-LP相当于原始地图推理问题。我们提出了一种泛扰的交替方向方法,乘法器(ADMM)算法的交替方向方法来优化LS-LP问题,通过在目标函数和约束上添加足够的扰动。我们证明,扰动的ADMM算法全局会聚到LS-LP问题的-Karush-Kuhn-tucker(-kkt)点。还将分析收敛速度。关于概率推理挑战的几个基准数据集(PIC 2011)和OpenGM 2的实验显示了我们提出的方法对艺术技术的地图推断方法的竞争性能。

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