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Learning discrete decomposable graphical models via constraint optimization

机译:通过约束优化学习离散的可分解图形模型

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摘要

Statistical model learning problems are traditionally solved using either heuristic greedy optimization or stochastic simulation, such as Markov chain Monte Carlo or simulated annealing. Recently, there has been an increasing interest in the use of combinatorial search methods, including those based on computational logic. Some of these methods are particularly attractive since they can also be successful in proving the global optimality of solutions, in contrast to stochastic algorithms that only guarantee optimality at the limit. Here we improve and generalize a recently introduced constraint-based method for learning undirected graphical models. The new method combines perfect elimination orderings with various strategies for solution pruning and offers a dramatic improvement both in terms of time and memory complexity. We also show that the method is capable of efficiently handling a more general class of models, called stratified/labeled graphical models, which have an astronomically larger model space.
机译:传统上,统计模型学习问题是通过启发式贪婪优化或随机模拟(例如马尔可夫链蒙特卡洛或模拟退火)来解决的。最近,人们对组合搜索方法的使用越来越感兴趣,包括基于计算逻辑的组合搜索方法。与仅保证极限最优的随机算法相比,这些方法中的某些特别吸引人,因为它们还可以成功证明解决方案的全局最优性。在这里,我们改进和概括了最近引入的基于约束的方法,用于学习无向图形模型。新方法将完美的消除顺序与解决方案修剪的各种策略结合在一起,并在时间和内存复杂性方面都取得了巨大的进步。我们还表明,该方法能够有效地处理更通用的一类模型,称为分层/标记图形模型,这些模型具有天文上更大的模型空间。

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