Considerations on Approaches and Metrics in Automated Theorem Generation/Finding in Geometry

Pedro Quaresma, Pierluigi Graziani, Stefano M. Nicoletti
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Abstract

The pursue of what are properties that can be identified to permit an automated reasoning program to generate and find new and interesting theorems is an interesting research goal (pun intended). The automatic discovery of new theorems is a goal in itself, and it has been addressed in specific areas, with different methods. The separation of the"weeds", uninteresting, trivial facts, from the"wheat", new and interesting facts, is much harder, but is also being addressed by different authors using different approaches. In this paper we will focus on geometry. We present and discuss different approaches for the automatic discovery of geometric theorems (and properties), and different metrics to find the interesting theorems among all those that were generated. After this description we will introduce the first result of this article: an undecidability result proving that having an algorithmic procedure that decides for every possible Turing Machine that produces theorems, whether it is able to produce also interesting theorems, is an undecidable problem. Consequently, we will argue that judging whether a theorem prover is able to produce interesting theorems remains a non deterministic task, at best a task to be addressed by program based in an algorithm guided by heuristics criteria. Therefore, as a human, to satisfy this task two things are necessary: an expert survey that sheds light on what a theorem prover/finder of interesting geometric theorems is, and - to enable this analysis - other surveys that clarify metrics and approaches related to the interestingness of geometric theorems. In the conclusion of this article we will introduce the structure of two of these surveys - the second result of this article - and we will discuss some future work.
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关于几何中自动定理生成/查找的方法和度量标准的思考
要实现自动推理程序生成和发现新的、有趣的定理,需要确定哪些属性,这是一个有趣的研究目标(双关语)。自动发现新定理本身就是一个目标,在一些特定领域,人们已经用不同的方法解决了这个问题。将 "杂草"(无趣、琐碎的事实)与 "麦子"(新颖、有趣的事实)分离出来要难得多,但不同的作者也在使用不同的方法来解决这个问题。本文将重点讨论几何问题。我们将介绍和讨论自动发现几何定理(和性质)的不同方法,以及从所有生成的定理中找出有趣定理的不同度量方法。在这些描述之后,我们将介绍本文的第一个结果:一个不可判定性结果,证明对于每一个可能产生定理的图灵机来说,决定它是否也能产生有趣的定理的算法程序是一个不可判定的问题。因此,我们将论证,判断定理检验器是否能够产生有趣的定理,仍然是一个非确定性任务,充其量是一个需要在启发式标准指导下,通过基于算法的程序来解决的任务。因此,作为人类,要完成这项任务需要两样东西:一是专家调查,以揭示什么是定理证明器/有趣几何定理的发现者;二是其他调查,以阐明与几何定理的趣味性相关的度量标准和方法,从而实现这一分析。在本文的结尾,我们将介绍其中两项调查的结构--这也是本文的第二项成果--并讨论一些未来的工作。
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来源期刊
CiteScore
1.10
自引率
0.00%
发文量
295
审稿时长
21 weeks
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