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Humans Perform Semi-Supervised Classification Too

机译:人类也执行半监督分类

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摘要

We explore the connections between machine learning and human learning in one form of semi-supervised classification. 22 human subjects completed a novel 2-class categorization task in which they were first taught to categorize a single labeled example from each category, and subsequently were asked to categorize, without feedback, a large set of additional items. Stimuli were visually complex and unrecognizable shapes. The unlabeled examples were sampled from a bimodal distribution with modes appearing either to the left (left-shift condition) or right (right-shift condition) of the two labeled examples. Results showed that, although initial decision boundaries were near the middle of the two labeled examples, after exposure to the unlabeled examples, they shifted in different directions in the two groups. In this respect, the human behavior conformed well to the predictions of a Gaussian mixture model for semi-supervised learning. The human behavior differed from model predictions in other interesting respects, suggesting some fruitful avenues for future inquiry.
机译:我们以一种半监督分类的形式探索了机器学习和人类学习之间的联系。 22名人类受试者完成了一项新颖的2类分类任务,首先要教他们对每个类别中的单个标记示例进行分类,然后要求他们在没有反馈的情况下对大量其他项目进行分类。刺激是视觉上复杂且无法识别的形状。未标记的示例从双峰分布中采样,模式出现在两个标记的示例的左侧(左移条件)或右侧(右移条件)。结果表明,尽管初始决策边界位于两个标记示例的中间,但在暴露于未标记示例之后,它们在两组中沿不同方向移动。在这方面,人类行为与半监督学习的高斯混合模型的预测非常吻合。在其他有趣的方面,人类行为与模型预测有所不同,这为将来的研究提供了一些富有成果的途径。

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