为认识论和不确定性建模的概率统一关系:语义学和定理证明的自动推理

IF 0.9 4区 计算机科学 Q3 COMPUTER SCIENCE, THEORY & METHODS Theoretical Computer Science Pub Date : 2024-09-18 DOI:10.1016/j.tcs.2024.114876
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引用次数: 0

摘要

概率编程结合了通用计算机编程、统计推理和形式语义,可帮助系统在面临不确定性时做出决策。概率编程无处不在,对机器智能也有重大影响。虽然许多概率算法已在不同领域得到实际应用,但基于形式语义的自动验证仍是一个相对较新的研究领域。在过去的二十年里,它引起了广泛的关注。然而,许多挑战依然存在。本文介绍的工作--概率统一关系(ProbURel)--朝着我们应对这些挑战的愿景迈出了一步。我们的工作基于 Hehner 的谓词概率编程,但要更广泛地采用他的工作还存在一些障碍。我们在此的贡献包括:(1) 通过引入艾弗森括号符号将其语法和语义形式化,从而将关系与算术分开;(2) 使用统一编程理论(UTP)将关系形式化,并使用实数拓扑空间求和将括号外的概率形式化;(3) 使用克莱因定点定理为概率循环提供构造语义;(4) 丰富其语义,从分布到子分布和超分布,以处理构造语义;(5) 唯一定点定理,以简化概率循环的推理;以及 (6) 在 Isabelle/UTP 中机械化我们的理论,这是UTP 在 Isabelle/HOL 中的实现,用于使用定理证明进行自动推理。我们用六个例子演示了我们的工作,包括机器人定位、机器学习分类和概率循环终止等问题。
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Probabilistic unifying relations for modelling epistemic and aleatoric uncertainty: Semantics and automated reasoning with theorem proving
Probabilistic programming combines general computer programming, statistical inference, and formal semantics to help systems make decisions when facing uncertainty. Probabilistic programs are ubiquitous, including having a significant impact on machine intelligence. While many probabilistic algorithms have been used in practice in different domains, their automated verification based on formal semantics is still a relatively new research area. In the last two decades, it has attracted much interest. Many challenges, however, remain. The work presented in this paper, probabilistic unifying relations (ProbURel), takes a step towards our vision to tackle these challenges.
Our work is based on Hehner's predicative probabilistic programming, but there are several obstacles to the broader adoption of his work. Our contributions here include (1) the formalisation of its syntax and semantics by introducing an Iverson bracket notation to separate relations from arithmetic; (2) the formalisation of relations using Unifying Theories of Programming (UTP) and probabilities outside the brackets using summation over the topological space of the real numbers; (3) the constructive semantics for probabilistic loops using Kleene's fixed-point theorem; (4) the enrichment of its semantics from distributions to subdistributions and superdistributions to deal with the constructive semantics; (5) the unique fixed-point theorem to simplify the reasoning about probabilistic loops; and (6) the mechanisation of our theory in Isabelle/UTP, an implementation of UTP in Isabelle/HOL, for automated reasoning using theorem proving.
We demonstrate our work with six examples, including problems in robot localisation, classification in machine learning, and the termination of probabilistic loops.
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来源期刊
Theoretical Computer Science
Theoretical Computer Science 工程技术-计算机:理论方法
CiteScore
2.60
自引率
18.20%
发文量
471
审稿时长
12.6 months
期刊介绍: Theoretical Computer Science is mathematical and abstract in spirit, but it derives its motivation from practical and everyday computation. Its aim is to understand the nature of computation and, as a consequence of this understanding, provide more efficient methodologies. All papers introducing or studying mathematical, logic and formal concepts and methods are welcome, provided that their motivation is clearly drawn from the field of computing.
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