Representation Theorems Obtained by Mining across Web Sources for Hints

M. Caminati, J. Bowles
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引用次数: 1

Abstract

A representation theorem relates different mathematical structures by providing an isomorphism between them: that is, a one-to-one correspondence preserving their original properties. Establishing that the two structures substantially behave in the same way, representation theorems typically provide insight and generate powerful techniques to study the involved structures, by cross-fertilising between the methodologies existing for each of the respective branches of mathematics. When the related structures have no obvious a priori connection, however, such results can be, by their own nature, elusive. Here, we show how data-mining across distinct web sources (including the Online Encyclopedia of Integer Sequences, OEIS), was crucial in the discovery of two original representation theorems relating event structures (mathematical structures commonly used to represent concurrent discrete systems) to families of sets (endowed with elementary disjointness and subset relations) and to full graphs, respectively. The latter originally emerged in the apparently unrelated field of bioinformatics. As expected, our representation theorems are powerful, allowing to capitalise on existing theorems about full graphs to immediately conclude new facts about event structures. Our contribution is twofold: on one hand, we illustrate our novel method to mine the web, resulting in thousands of candidate connections between distinct mathematical realms; on the other hand, we explore one of these connections to obtain our new representation theorems. We hope this paper can encourage people with relevant expertise to scrutinize these candidate connections. We anticipate that, building on the ideas presented here, further connections can be unearthed, by refining the mining techniques and by extending the mined repositories.
通过跨Web源挖掘提示获得的表示定理
表示定理通过提供不同的数学结构之间的同构关系来联系它们:也就是说,保持它们的原始属性的一对一对应关系。确定这两种结构实质上以相同的方式表现,表示定理通常提供洞察力并产生强大的技术来研究所涉及的结构,通过在每个数学分支的现有方法之间交叉施肥。然而,当相关结构没有明显的先验联系时,这些结果就其本身的性质而言是难以捉摸的。在这里,我们展示了跨不同网络资源(包括在线整数序列百科全书,OEIS)的数据挖掘如何在发现两个关于事件结构(通常用于表示并发离散系统的数学结构)与集合族(赋予基本不相交和子集关系)和完整图的原始表示定理中发挥关键作用。后者最初出现在明显不相关的生物信息学领域。正如预期的那样,我们的表示定理是强大的,允许利用关于全图的现有定理来立即得出关于事件结构的新事实。我们的贡献是双重的:一方面,我们展示了我们挖掘网络的新方法,在不同的数学领域之间产生了数千个候选连接;另一方面,我们探索其中的一个联系来得到我们新的表示定理。我们希望本文能够鼓励具有相关专业知识的人仔细审查这些候选关系。我们预计,在本文提出的思想的基础上,通过改进挖掘技术和扩展挖掘的存储库,可以发现进一步的联系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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