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Could Machine Learning Shed Light on Natural Language Complexity?

机译:机器学习能否揭示自然语言的复杂性?

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In this paper, we propose to use a subfield of machine learning -grammatical inference- to measure linguistic complexity from a developmental point of view. We focus on relative complexity by considering a child learner in the process of first language acquisition. The relevance of grammatical inference models for measuring linguistic complexity from a developmental point of view is based on the fact that algorithms proposed in this area can be considered computational models for studying first language acquisition. Even though it will be possible to use different techniques from the field of machine learning as computational models for dealing with linguistic complexity -since in any model we have algorithms that can learn from data-, we claim that grammatical inference models offer some advantages over other tools.
机译:在本文中,我们建议使用机器学习的一个子领域-语法推断-从发展的角度来衡量语言的复杂性。我们通过考虑母语学习过程中的儿童学习者来关注相对复杂性。从发展的角度来看,用于测量语言复杂性的语法推理模型的相关性是基于这样一个事实,即可以将这一领域提出的算法视为研究第一语言习得的计算模型。即使有可能使用来自机器学习领域的不同技术作为用于处理语言复杂性的计算模型-由于在任何模型中我们都有可以从数据中学习的算法-我们仍声称语法推理模型比其他模型具有一些优势工具。

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