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Using Wikipedia to learn semantic feature representations of concrete concepts in neuroimaging experiments

机译:使用维基百科学习神经影像实验中具体概念的语义特征表示

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摘要

In this paper we show that a corpus of a few thousand Wikipedia articles about concrete or visualizable concepts can be used to produce a low-dimensional semantic feature representation of those concepts. The purpose of such a representation is to serve as a model of the mental context of a subject during functional magnetic resonance imaging (fMRI) experiments. A recent study by Mitchell et al. (2008) [19] showed that it was possible to predict fMRI data acquired while subjects thought about a concrete concept, given a representation of those concepts in terms of semantic features obtained with human supervision. We use topic models on our corpus to learn semantic features from text in an unsupervised manner, and show that these features can outperform those in Mitchell et al. (2008) [19] in demanding 12-way and 60-way classification tasks. We also show that these features can be used to uncover similarity relations in brain activation for different concepts which parallel those relations in behavioral data from human subjects.
机译:在本文中,我们显示了有关具体或可视化概念的几百篇Wikipedia文章的语料库可用于生成这些概念的低维语义特征表示。这种表示的目的是用作功能性磁共振成像(fMRI)实验过程中对象心理状况的模型。 Mitchell等人的最新研究。 (2008)[19]表明,有可能预测受试者在思考一个具体概念时所获得的功能磁共振成像数据,并给出这些概念在人类监督下获得的语义特征的表示。我们在语料库上使用主题模型以无监督的方式从文本中学习语义特征,并表明这些特征可以胜过Mitchell等人的研究。 (2008)[19]要求进行12向和60向分类任务。我们还表明,这些特征可用于揭示不同概念的大脑激活中的相似性关系,这些相似性与人类受试者的行为数据中的那些关系平行。

著录项

  • 来源
    《Artificial intelligence 》 |2013年第1期| 240-252| 共13页
  • 作者单位

    Psychology Department and Princeton Neuroscience Institute. Princeton University. Princeton, NJ 08540, United States;

    Psychology Department and Princeton Neuroscience Institute. Princeton University. Princeton, NJ 08540, United States;

    Psychology Department and Princeton Neuroscience Institute. Princeton University. Princeton, NJ 08540, United States;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    wikipedia; matrix factorization; fMRI; semantic features;

    机译:维基百科;矩阵分解功能磁共振成像;语义特征;

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