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Spoken Language Acquisition Based on Reinforcement Learning and Word Unit Segmentation

机译:基于强化学习和单词分割的口语语言习得

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The process of spoken-language acquisition has been one of the topics of greatest interest to linguists for decades. By uti-lizing modern machine learning techniques, we simulated this process on computers, which helps to understand it and develop new possibilities of applying this concept on intelligent robots, among other things. This paper proposes a new framework for simulating spoken-language acquisition by combining reinforcement learning and unsupervised learning methods. Our experiments also show that a spoken language can be acquired considerably faster by identifying potential word segments from collected ambient sounds in an unsupervised manner.
机译:语言收购的过程是几十年来语言学家最兴趣的主题之一。 通过Uti-Lize现代机器学习技术,我们在计算机上模拟了这一过程,有助于了解它,并在其他方面培养对智能机器人应用这一概念的新可能性。 本文通过结合强化学习和无监督学习方法来提出一种模拟语言采集的新框架。 我们的实验还表明,通过以无监督的方式识别来自收集的环境声音的潜在词组,可以更快地获得口语。

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