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Sentence-Based Attentional Mechanisms in Word Learning: Evidence from a Computational Model

机译:单词学习中基于句子的注意机制:来自计算模型的证据

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摘要

When looking for the referents of novel nouns, adults and young children are sensitive to cross-situational statistics (Yu and Smith, ; Smith and Yu, ). In addition, the linguistic context that a word appears in has been shown to act as a powerful attention mechanism for guiding sentence processing and word learning (Landau and Gleitman, ; Altmann and Kamide, ; Kako and Trueswell, ). Koehne and Crocker (, ) investigate the interaction between cross-situational evidence and guidance from the sentential context in an adult language learning scenario. Their studies reveal that these learning mechanisms interact in a complex manner: they can be used in a complementary way when context helps reduce referential uncertainty; they influence word learning about equally strongly when cross-situational and contextual evidence are in conflict; and contextual cues block aspects of cross-situational learning when both mechanisms are independently applicable. To address this complex pattern of findings, we present a probabilistic computational model of word learning which extends a previous cross-situational model (Fazly et al., ) with an attention mechanism based on sentential cues. Our model uses a framework that seamlessly combines the two sources of evidence in order to study their emerging pattern of interaction during the process of word learning. Simulations of the experiments of (Koehne and Crocker, , ) reveal an overall pattern of results that are in line with their findings. Importantly, we demonstrate that our model does not need to explicitly assign priority to either source of evidence in order to produce these results: learning patterns emerge as a result of a probabilistic interaction between the two clue types. Moreover, using a computational model allows us to examine the developmental trajectory of the differential roles of cross-situational and sentential cues in word learning.
机译:在寻找新名词的指代时,成人和幼儿对跨情境统计很敏感(Yu和Smith,Smith和Yu,)。此外,单词出现的语言环境已被证明是指导句子处理和单词学习的强大注意力机制(Landau和Gleitman,Altmann和Kamide,Kako和Trueswell,)。 Koehne和Crocker(,)研究了在成人语言学习场景中跨情境证据与指导语境之间的交互作用。他们的研究表明,这些学习机制以复杂的方式相互作用:当上下文有助于减少参照不确定性时,它们可以互补地使用;当跨情境和上下文证据冲突时,它们对单词学习的影响同样强烈。当两种机制独立适用时,上下文提示会阻碍跨情境学习的各个方面。为了解决这种复杂的发现模式,我们提出了一种单词学习的概率计算模型,该模型扩展了以前的跨情境模型(Fazly等人),并具有基于句子提示的注意力机制。我们的模型使用了一个框架,该框架无缝地结合了两种证据来源,以研究它们在单词学习过程中不断出现的互动模式。 (Koehne and Crocker,,)的实验模拟显示了与他们的发现相符的整体结果。重要的是,我们证明了我们的模型并不需要为这两个证据来源显式地分配优先级才能产生这些结果:由于两种线索类型之间的概率交互作用而出现了学习模式。此外,使用计算模型使我们能够研究跨位置和句子提示在单词学习中的不同作用的发展轨迹。

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