Grammatical inference from data exchange files: An experiment on engineering software

Markus Exler, M. Moser, J. Pichler, Günter Fleck, B. Dorninger
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引用次数: 5

Abstract

Complex engineering problems are typically solved by running a batch of software programs. Data exchange between these software programs is frequently based on semi-structured text files. These files are edited by text editors providing basic input support, however without proper input validation prior program execution. Consequently, even minor lexical or syntactic errors cause software programs to stop without delivering a result. To tackle these problems a more specific editor support, which is aware of language concepts of data exchange files, needs to be provided. In this paper, we investigate if and in what quality a language grammar can be inferred from a set of existing text files, in order to provide a basis for the desired editing support. For this experiment, we chose a Minimal Adequate Teacher (MAT) method together with specific preprocessing of the existing text files. Thereby, we were able to construct complete grammar rules for most of the language constructs found in a corpus of semi-structured text files. The inferred grammar, however, requires refactoring towards a suitable and maintainable basis for the desired editor support.
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基于数据交换文件的语法推断:一个工程软件实验
复杂的工程问题通常是通过运行一批软件程序来解决的。这些软件程序之间的数据交换通常基于半结构化的文本文件。这些文件由提供基本输入支持的文本编辑器编辑,但是在程序执行之前没有适当的输入验证。因此,即使是很小的词法或语法错误也会导致软件程序停止运行而无法交付结果。为了解决这些问题,需要提供更具体的编辑器支持,它知道数据交换文件的语言概念。在本文中,我们研究了一种语言语法是否可以从一组现有的文本文件中推断出来,以及以什么样的质量推断出来,以便为所需的编辑支持提供基础。在本实验中,我们选择了最小适足教师(MAT)方法,并对现有文本文件进行了特定的预处理。因此,我们能够为半结构化文本文件语料库中的大多数语言结构构建完整的语法规则。然而,推断出的语法需要重构,以获得所需编辑器支持的合适且可维护的基础。
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