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Relating Simple Sentence Representations in Deep Neural Networks and the Brain

机译:在深层神经网络和大脑中关联简单句子表示

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What is the relationship between sentence representations learned by deep recurrent models against those encoded by the brain? Is there any correspondence between hidden layers of these recurrent models and brain regions when processing sentences? Can these deep models be used to synthesize brain data which can then be utilized in other extrinsic tasks? We investigate these questions using sentences with simple syntax and semantics (e.g., The bone was eaten by the dog.). We consider multiple neural network architectures, including recently proposed ELMo and BERT. We use magnetoencephalography (MEG) brain recording data collected from human subjects when they were reading these simple sentences. Overall, we find that BERT's activations correlate the best with MEG brain data. We also find that the deep network representation can be used to generate brain data from new sentences to augment existing brain data. To the best of our knowledge, this is the first work showing that the MEG brain recording when reading a word in a sentence can be used to distinguish earlier words in the sentence. Our exploration is also the first to use deep neural network representations to generate synthetic brain data and to show that it helps in improving subsequent stimuli decoding task accuracy.
机译:深度递归模型学习的句子表示与大脑编码的句子表示之间有什么关系?处理句子时,这些递归模型的隐藏层与大脑区域之间是否存在对应关系?这些深层模型可以用于合成大脑数据,然后将其用于其他外部任务吗?我们使用具有简单语法和语义的句子来调查这些问题(例如,骨头被狗吃掉了)。我们考虑了多种神经网络架构,包括最近提出的ELMo和BERT。当人类受试者阅读这些简单句子时,我们使用脑磁图(MEG)大脑记录数据。总体而言,我们发现BERT的激活与MEG大脑数据之间的相关性最好。我们还发现,深层网络表示可用于从新句子中生成大脑数据,以增强现有的大脑数据。据我们所知,这是第一篇表明阅读句子中一个单词时的MEG脑记录可用于区分句子中较早单词的第一篇著作。我们的探索也是首次使用深度神经网络表示来生成合成的大脑数据,并表明它有助于提高后续刺激解码任务的准确性。

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