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A computational model of adults' performance in naming objects using cross-situational learning

机译:使用跨情境学习的成年人命名对象表现的计算模型

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People learn the meaning of words in ambiguous contexts with many possible words for any referent and many referents for any word. Cross-situational learning is an approach to solve this word-to-world mapping problem based on the idea that a learner can determine the meaning of a word by finding something in common across all observed uses of that word. Here we investigate the performance of a simplified variant of the general-purpose Neural Modeling Fields (NMF) categorization mechanism to infer the correct word-referent mapping in a cross-situational learning scenario that simulates experiments with adult subjects. We study two learning situations: the batch-mode learning in which the processing of data requires the memorization of all training examples, and the online learning in which the data processing occurs concomitantly with the exhibition of the examples. A training example consists of a picture of a number of objects accompanied by the utterance of the same number of words. We show that the equations derived to describe the batch-mode learning situation can also be applied to the more realistic online learning situation The resulting online algorithm yields predictions which are both qualitatively and quantitatively in agreement with the experimental results.
机译:人们在模棱两可的上下文中学习单词的含义,对于任何指称都有许多可能的单词,对于任何一个单词都有许多指称。跨情境学习是一种解决单词到世界的映射问题的方法,其基础是学习者可以通过发现单词在所有观察到的用法中的共同点来确定单词的含义。在这里,我们研究了通用神经模型字段(NMF)分类机制的简化变体的性能,以在模拟成人对象实验的跨情境学习场景中推断正确的单词参照映射。我们研究了两种学习情况:批处理模式学习,其中的数据处理需要记住所有训练示例,在线学习中的数据处理与示例展示同时进行。一个训练示例包括许多对象的图片以及相同数量单词的发声。我们表明,导出的描述批处理模式学习情况的方程式也可以应用于更现实的在线学习情况。由此产生的在线算法产生的定性和定量预测与实验结果相符。

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