具有连续分布的生成数据

Martin Grohe, Benjamin Lucien Kaminski, J. Katoen, P. Lindner
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引用次数: 9

摘要

Bárány等人(TODS 2017)认为需要将声明性编程和概率编程结合起来,他们最近引入了Datalog的概率扩展,作为“纯声明性概率编程语言”。我们重新审视这种语言,并提出一种更基本的方法来定义其语义。它基于概率论中的标准概念,即随机核和马尔可夫过程。这允许我们将语义扩展到连续概率分布,从而解决Bárány等人提出的开放问题。我们展示了我们的语义是相当健壮的,在计算程序时允许并行执行和任意跟踪命令。我们将语义置于无限概率数据库的框架中(Grohe和Lindner, ICDT 2020),并且我们表明,即使概率数据程序的输入是任意概率数据库,语义仍然是有意义的。
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Generative Datalog with Continuous Distributions
Arguing for the need to combine declarative and probabilistic programming, Bárány et al. (TODS 2017) recently introduced a probabilistic extension of Datalog as a "purely declarative probabilistic programming language." We revisit this language and propose a more foundational approach towards defining its semantics. It is based on standard notions from probability theory known as stochastic kernels and Markov processes. This allows us to extend the semantics to continuous probability distributions, thereby settling an open problem posed by Bárány et al. We show that our semantics is fairly robust, allowing both parallel execution and arbitrary chase orders when evaluating a program. We cast our semantics in the framework of infinite probabilistic databases (Grohe and Lindner, ICDT 2020), and we show that the semantics remains meaningful even when the input of a probabilistic Datalog program is an arbitrary probabilistic database.
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