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Using Data Mining Algorithms to Discover Regular Sound Changes among Languages

机译:使用数据挖掘算法发现语言之间的常规声音变化

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This paper presents a method of using association rule data mining algorithms to discover regular sound changes among languages. The method presented has a great potential to facilitate linguistic studies aimed at identifying distantly related cognate languages. As an experimental example, this paper presents the application of the data mining method to the discovery of regular sound changes between the Hungarian and the Sumerian languages, which separated at least five thousand years ago when the Proto-Sumerian reached Mesopotamia. The data mining method discovered an important regular sound change between Hungarian word initial /f/ and Sumerian word initial /b/ phonemes.
机译:本文提出了一种使用关联规则数据挖掘算法来发现语言之间规则的声音变化的方法。提出的方法在促进旨在识别远距离同源语言的语言学研究方面具有巨大潜力。作为实验示例,本文介绍了数据挖掘方法在发现匈牙利语和苏美尔语之间有规律的声音变化中的应用,这种语言在至少五千年前的原始苏美尔人到达美索不达米亚时就分开了。数据挖掘方法发现匈牙利语首字母/ f /和苏美尔首字母/ b /音素之间存在重要的规则声音变化。

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