论文标题
关于抽象的出现的学习观点:音素的奇怪案例
A learning perspective on the emergence of abstractions: the curious case of phonemes
论文作者
论文摘要
在本文中,我们使用一系列建模技术来研究抽象电话是否可以从暴露于语音的声音中出现。实际上,该研究代表了一种尝试操作基于用法的语言学的理论手段,即从语言使用中摘录的出现。我们的追求重点是最简单的假设抽象。我们测试了有关语言未经训练的语言用户中语言知识的发展的两个相反原则:基于内存的学习(MBL)和错误纠正学习(ECL)。一个概括的过程是抽象语言学家的运作,我们探测了MBL和ECL是否可以引起类似于语言抽象的语言知识。每个模型都有大量由一位演讲者产生的预处理语音。我们评估了这些简单模型所学的一致性或稳定性以及它们产生抽象类别的能力。两种类型的模型在这些测试方面的表现不同。我们表明,ECL模型可以学习抽象,并且可以从输入中可靠地确定手机清单和分组为传统类型。
In the present paper we use a range of modeling techniques to investigate whether an abstract phone could emerge from exposure to speech sounds. In effect, the study represents an attempt for operationalize a theoretical device of Usage-based Linguistics of emergence of an abstraction from language use. Our quest focuses on the simplest of such hypothesized abstractions. We test two opposing principles regarding the development of language knowledge in linguistically untrained language users: Memory-Based Learning (MBL) and Error-Correction Learning (ECL). A process of generalization underlies the abstractions linguists operate with, and we probed whether MBL and ECL could give rise to a type of language knowledge that resembles linguistic abstractions. Each model was presented with a significant amount of pre-processed speech produced by one speaker. We assessed the consistency or stability of what these simple models have learned and their ability to give rise to abstract categories. Both types of models fare differently with regard to these tests. We show that ECL models can learn abstractions and that at least part of the phone inventory and grouping into traditional types can be reliably identified from the input.