测量计算模型和婴儿的单词学习表现

C. Bergmann, L. Boves, L. T. Bosch
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引用次数: 2

摘要

在本文中,我们研究了对原始行为数据或计算模型响应进行分类的效果。此外,对来自潜在不同群体的平均刺激效果进行了评估。为此,我们使用acorn模型重复了单词学习和泛化能力的研究。我们的结果表明,离散类别可能会掩盖连续响应中的有趣现象。例如,模型中的学习很早就在统一的高识别精度下饱和,这一发现只适用于分类表征。此外,对单个单词的准确度的巨大差异被所有刺激的平均值所掩盖。因为不同的单词对不同的说话者表现不同,我们无法确定这些差异的语音基础。对婴儿行为的影响和新的预测进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Measuring word learning performance in computational models and infants
In the present paper we investigate the effect of categorising raw behavioural data or computational model responses. In addition, the effect of averaging over stimuli from potentially different populations is assessed. To this end, we replicate studies on word learning and generalisation abilities using the ACORNS models. Our results show that discrete categories may obscure interesting phenomena in the continuous responses. For example, the finding that learning in the model saturates very early at a uniform high recognition accuracy only holds for categorical representations. Additionally, a large difference in the accuracy for individual words is obscured by averaging over all stimuli. Because different words behaved differently for different speakers, we could not identify a phonetic basis for the differences. Implications and new predictions for infant behaviour are discussed.
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