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Lifted Aggregation in Directed First-order Probabilistic Models

机译:定向一阶概率模型中提升聚集

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As exact inference for first-order probabilistic graphical models at the prepositional level can be formidably expensive, there is an ongoing effort to design efficient lifted inference algorithms for such models. This paper discusses directed first-order models that require an aggregation operator when a parent random variable is parameterized by logical variables that are not present in a child random variable. We introduce a new data structure, aggregation parfactors, to describe aggregation in directed first-order models. We show how to extend Milch et al.'s C-FOVE algorithm to perform lifted inference in the presence of aggregation parfactors. We also show that there are cases where the polynomial time complexity (in the domain size of logical variables) of the C-FOVE algorithm can be reduced to logarithmic time complexity using aggregation par-factors.
机译:由于介词层的一阶概率图形模型的精确推断可以较好地昂贵,因此持续努力为这些模型设计有效的提升推理算法。本文讨论了当父随机变量由不存在于儿童随机变量中的逻辑变量来参数化父随机变量时需要聚合运算符的指示一阶模型。我们介绍了一个新的数据结构,聚合法案,以描述指向一阶模型中的聚合。我们展示了如何扩展MILCH等人。的C-FOVE算法在聚合PARFACTOR的存在下执行提升推断。我们还表明,存在C-FOVE算法的多项式时间复杂度(在逻辑变量的域大小)的情况下,可以使用聚合映射因子到对数时间复杂度来减少到对数时间复杂度。

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