Toro Juan M, Sinnett Scott, Soto-Faraco Salvador
Grup de Recerca Neurociencia Cognitiva, Departament de Psicologia Bàsica, Parc Cientific, Universitat de Barcelona, Pg. Vall d'Hebron, 171, 08035 Barcelona, Spain.
Cognition. 2005 Sep;97(2):B25-34. doi: 10.1016/j.cognition.2005.01.006. Epub 2005 Apr 18.
We addressed the hypothesis that word segmentation based on statistical regularities occurs without the need of attention. Participants were presented with a stream of artificial speech in which the only cue to extract the words was the presence of statistical regularities between syllables. Half of the participants were asked to passively listen to the speech stream, while the other half were asked to perform a concurrent task. In Experiment 1, the concurrent task was performed on a separate auditory stream (noises), in Experiment 2 it was performed on a visual stream (pictures), and in Experiment 3 it was performed on pitch changes in the speech stream itself. Invariably, passive listening to the speech stream led to successful word extraction (as measured by a recognition test presented after the exposure phase), whereas diverted attention led to a dramatic impairment in word segmentation performance. These findings demonstrate that when attentional resources are depleted, word segmentation based on statistical regularities is seriously compromised.
我们探讨了这样一个假设,即基于统计规律的单词分割无需注意力即可发生。向参与者呈现一连串人工语音,其中提取单词的唯一线索是音节之间存在统计规律。一半的参与者被要求被动聆听语音流,而另一半则被要求执行一项并行任务。在实验1中,并行任务在单独的听觉流(噪音)上执行,在实验2中在视觉流(图片)上执行,在实验3中在语音流本身的音高变化上执行。无一例外,被动聆听语音流会导致成功提取单词(通过暴露阶段后进行的识别测试来衡量),而注意力分散会导致单词分割性能大幅下降。这些发现表明,当注意力资源耗尽时,基于统计规律的单词分割会受到严重影响。