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一种通过跨情境学习实现分词与语义获取的联合模型。

A joint model of word segmentation and meaning acquisition through cross-situational learning.

作者信息

Räsänen Okko, Rasilo Heikki

机构信息

Department of Signal Processing and Acoustics, Aalto University.

出版信息

Psychol Rev. 2015 Oct;122(4):792-829. doi: 10.1037/a0039702.

Abstract

Human infants learn meanings for spoken words in complex interactions with other people, but the exact learning mechanisms are unknown. Among researchers, a widely studied learning mechanism is called cross-situational learning (XSL). In XSL, word meanings are learned when learners accumulate statistical information between spoken words and co-occurring objects or events, allowing the learner to overcome referential uncertainty after having sufficient experience with individually ambiguous scenarios. Existing models in this area have mainly assumed that the learner is capable of segmenting words from speech before grounding them to their referential meaning, while segmentation itself has been treated relatively independently of the meaning acquisition. In this article, we argue that XSL is not just a mechanism for word-to-meaning mapping, but that it provides strong cues for proto-lexical word segmentation. If a learner directly solves the correspondence problem between continuous speech input and the contextual referents being talked about, segmentation of the input into word-like units emerges as a by-product of the learning. We present a theoretical model for joint acquisition of proto-lexical segments and their meanings without assuming a priori knowledge of the language. We also investigate the behavior of the model using a computational implementation, making use of transition probability-based statistical learning. Results from simulations show that the model is not only capable of replicating behavioral data on word learning in artificial languages, but also shows effective learning of word segments and their meanings from continuous speech. Moreover, when augmented with a simple familiarity preference during learning, the model shows a good fit to human behavioral data in XSL tasks. These results support the idea of simultaneous segmentation and meaning acquisition and show that comprehensive models of early word segmentation should take referential word meanings into account. (PsycINFO Database Record

摘要

人类婴儿在与他人的复杂互动中学习口语单词的含义,但确切的学习机制尚不清楚。在研究人员中,一种被广泛研究的学习机制称为跨情境学习(XSL)。在XSL中,当学习者积累口语单词与同时出现的物体或事件之间的统计信息时,单词含义就会被学习,这使学习者在对个别模糊场景有足够的体验后能够克服指称不确定性。该领域现有的模型主要假设学习者能够在将单词与指称意义建立联系之前从语音中分割出单词,而分割本身相对独立于意义获取进行处理。在本文中,我们认为XSL不仅仅是一种单词到意义映射的机制,而且它为原始词汇的单词分割提供了强有力的线索。如果学习者直接解决连续语音输入与所谈论的上下文指称之间对应的问题,那么将输入分割成类似单词的单元就会作为学习过程中的副产品出现。我们提出了一个理论模型,用于联合获取原始词汇片段及其意义,而不假设对语言有先验知识。我们还使用基于转移概率的统计学习的计算实现来研究该模型的行为。模拟结果表明,该模型不仅能够复制人工语言中单词学习的行为数据,而且还能从连续语音中有效地学习单词片段及其意义。此外,当在学习过程中加入简单的熟悉度偏好时,该模型在XSL任务中与人类行为数据表现出良好的拟合度。这些结果支持了同时进行分割和意义获取的观点,并表明早期单词分割的综合模型应考虑指称单词的意义。(PsycINFO数据库记录)

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