学习使用库计算解析基础语言

Xavier Hinaut, Michael Spranger
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引用次数: 6

摘要

最近,使用库计算的语言处理和学习的新模型已经流行起来。然而,这些模型通常不以感觉运动系统和机器人为基础。在本文中,我们开发了一个称为水库解析器(ResPars)的水库计算模型,用于学习从来自人形机器人的基础数据中解析自然语言。先前的研究表明,ResPars能够对具有相同含义(深层结构)的不同句子(表层结构)进行句法泛化。我们认为这种能力是在基础架构中指导语言概括的关键。通过将ResPars与增量招募语言(Incremental Recruitment Language, IRL)相结合,我们证明了ResPars能够在基础组合语义上进行泛化。此外,我们表明,ResPars能够学习对相同的句子进行泛化,但不是逐字处理,而是作为一个未分割的音素序列。这种能力使体系结构不仅依赖于语音识别器识别的单词,而且可以直接处理子词级别。此外,我们还测试了模型对单词错误识别的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning to Parse Grounded Language using Reservoir Computing
Recently new models for language processing and learning using Reservoir Computing have been popular. However, these models are typically not grounded in sensorimotor systems and robots. In this paper, we develop a model of Reservoir Computing called Reservoir Parser (ResPars) for learning to parse Natural Language from grounded data coming from humanoid robots. Previous work showed that ResPars is able to do syntactic generalization over different sentences (surface structure) with the same meaning (deep structure). We argue that such ability is key to guide linguistic generalization in a grounded architecture. We show that ResPars is able to generalize on grounded compositional semantics by combining it with Incremental Recruitment Language (IRL). Additionally, we show that ResPars is able to learn to generalize on the same sentences, but not processed word by word, but as an unsegmented sequence of phonemes. This ability enables the architecture to not rely only on the words recognized by a speech recognizer, but to process the sub-word level directly. We additionally test the model's robustness to word error recognition.
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