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Statistical learning using real-world scenes - Extracting categorical regularities without conscious intent

机译:使用真实场景进行统计学习-无需有意识地提取分类规律

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Recent work has shown that observers can parse streams of syllables, tones, or visual shapes and learn statistical regularities in them without conscious intent (e.g., learn that A is always followed by B). Here, we demonstrate that these statistical-learning mechanisms can operate at an abstract, conceptual level. In Experiments 1 and 2, observers incidentally learned which semantic categories of natural scenes covaried (e.g., kitchen scenes were always followed by forest scenes). In Experiments 3 and 4, category learning with images of scenes transferred to words that represented the categories. In each experiment, the category of the scenes was irrelevant to the task. Together, these results suggest that statistical-learning mechanisms can operate at a categorical level, enabling generalization of learned regularities using existing conceptual knowledge. Such mechanisms may guide learning in domains as disparate as the acquisition of causal knowledge and the development of cognitive maps from environmental exploration.
机译:最近的工作表明,观察者可以解析音节,音调或视觉形状流,并在无意识的情况下学习其中的统计规律(例如,了解到A总是跟在B后面)。在这里,我们证明了这些统计学习机制可以在抽象的概念级别上运行。在实验1和2中,观察者偶然发现了自然场景的哪些语义类别是协变的(例如,厨房场景总是跟着森林场景)。在实验3和4中,类别学习是将场景的图像转移到代表类别的单词上。在每个实验中,场景的类别与任务无关。总之,这些结果表明,统计学习机制可以在分类级别上运行,从而可以使用现有的概念知识来对所学规律进行概括。这样的机制可以指导与因果知识的获取和来自环境探索的认知图的发展不同的领域中的学习。

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