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Self-Assessing Agents for Explaining Language Change: A Case Study in German

机译:用于解释语言变革的自我评估代理人:德语案例研究

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Language change is increasingly recognized as one of the most crucial sources of evidence for understanding human cognition. Unfortunately, despite sophisticated methods for documenting which changes have taken place, the question of why languages evolve over time remains open for speculation. This paper presents a novel research method that addresses this issue by combining agent-based experiments with deep language processing, and demonstrates the approach through a case study on German definite articles. More specifically, two populations of autonomous agents are equipped with a model of Old High German (500-1100 AD) and Modern High German definite articles respectively, and a set of self-assessment criteria for evaluating their own linguistic performances. The experiments show that inefficiencies detected in the grammar by the Old High German agents correspond to grammatical forms that have actually undergone the most important changes in the German language. The results thus suggest that the question of language change can be reformulated as an optimization problem in which language users try to achieve their communicative goals while allocating their cognitive resources as efficiently as possible.
机译:语言变化越来越被认为是理解人类认知的最重要的证据之一。遗憾的是,尽管对文件进行了复杂的方法,但是发生了改变的改变,为什么语言随着时间的推移而发展的问题仍然是开放的猜测。本文介绍了一种新的研究方法,通过将基于代理的实验与深语言处理结合,并通过德国明确文章的案例研究表明了这种方法。更具体地说,两个自主代理商种群分别配备了旧高德国人(500-1100个广告)和现代高德国明确文章的模型,以及一系列自我评估标准,用于评估自己的语言表演。实验表明,旧的高德国代理商在语法中检测到的低效应对应于实际经历德语中最重要的变化的语法形式。因此,结果表明,语言变更问题可以重新重新重新重整为哪些语言用户试图在尽可能有效地分配认知资源的同时实现其交际目标。

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