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词汇知识有助于基于统计的语音分割。

Lexical knowledge boosts statistically-driven speech segmentation.

作者信息

Palmer Shekeila D, Hutson James, White Laurence, Mattys Sven L

机构信息

Department of Psychology.

School of Psychology.

出版信息

J Exp Psychol Learn Mem Cogn. 2019 Jan;45(1):139-146. doi: 10.1037/xlm0000567. Epub 2018 Jun 28.

Abstract

The hypothesis that known words can serve as anchors for discovering new words in connected speech has computational and empirical support. However, evidence for how the bootstrapping effect of known words interacts with other mechanisms of lexical acquisition, such as statistical learning, is incomplete. In 3 experiments, we investigated the consequences of introducing a known word in an artificial language with no segmentation cues other than cross-syllable transitional probabilities. We started with an artificial language containing 4 trisyllabic novel words and observed standard above-chance performance in a subsequent recognition memory task. We then replaced 1 of the 4 novel words with a real word and noted improved segmentation of the other 3 novel words. This improvement was maintained when the real word was a different length to the novel words ruling out an explanation based on metrical expectation. The improvement was also maintained when the word was added to the 4 original novel words rather than replacing 1 of them. Together, these results show that known words in an otherwise meaningless stream serve as anchors for discovering new words. In interpreting the results, we contrast a mechanism where the lexical boost is merely the consequence of attending to the edges of known words, with a mechanism where known words enhance sensitivity to transitional probabilities more generally. (PsycINFO Database Record (c) 2018 APA, all rights reserved).

摘要

已知单词可作为在连贯语音中发现新单词的锚点这一假设,有计算和实证方面的支持。然而,关于已知单词的引导效应如何与词汇习得的其他机制(如统计学习)相互作用的证据并不完整。在3个实验中,我们研究了在一种除跨音节过渡概率外没有切分线索的人工语言中引入一个已知单词的后果。我们从一种包含4个三音节新单词的人工语言开始,并在随后的识别记忆任务中观察到了高于机会水平的标准表现。然后,我们用一个真实单词替换了4个新单词中的1个,并注意到其他3个新单词的切分得到了改善。当真实单词与新单词长度不同时,这种改善仍然存在,排除了基于韵律预期的解释。当这个单词被添加到4个原始新单词中而不是替换其中一个时,这种改善也仍然存在。总之,这些结果表明,在原本无意义的语流中的已知单词可作为发现新单词的锚点。在解释这些结果时,我们对比了一种机制,即词汇增强仅仅是关注已知单词边缘的结果,与一种机制,即已知单词更普遍地增强对过渡概率的敏感性。(《心理学文摘数据库记录》(c)2018美国心理学会,保留所有权利)

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