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Using Graph Components Derived from an Associative Concept Dictionary to Predict fMRI Neural Activation Patterns that Represent the Meaning of Nouns

机译:使用从关联概念词典派生的图分量预测代表名词含义的fMRI神经激活模式

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摘要

In this study, we introduce an original distance definition for graphs, called the Markov-inverse-F measure (MiF). This measure enables the integration of classical graph theory indices with new knowledge pertaining to structural feature extraction from semantic networks. MiF improves the conventional Jaccard and/or Simpson indices, and reconciles both the geodesic information (random walk) and co-occurrence adjustment (degree balance and distribution). We measure the effectiveness of graph-based coefficients through the application of linguistic graph information for a neural activity recorded during conceptual processing in the human brain. Specifically, the MiF distance is computed between each of the nouns used in a previous neural experiment and each of the in-between words in a subgraph derived from the Edinburgh Word Association Thesaurus of English. From the MiF-based information matrix, a machine learning model can accurately obtain a scalar parameter that specifies the degree to which each voxel in (the MRI image of) the brain is activated by each word or each principal component of the intermediate semantic features. Furthermore, correlating the voxel information with the MiF-based principal components, a new computational neurolinguistics model with a network connectivity paradigm is created. This allows two dimensions of context space to be incorporated with both semantic and neural distributional representations.
机译:在这项研究中,我们介绍了图形的原始距离定义,称为Markov逆F度量(MiF)。该措施使经典图论索引与有关从语义网络中提取结构特征的新知识集成在一起。 MiF改进了常规的Jaccard和/或Simpson指数,并协调了测地信息(随机游走)和共现调整(度平衡和分布)。我们通过对人类大脑在概念处理过程中记录的神经活动的语言图信息的应用来测量基于图的系数的有效性。具体来说,MiF距离是在先前的神经实验中使用的每个名词与子图中的每个中间词之间的距离计算得出的,该子图中的子单词源自爱丁堡英语单词协会词库。从基于MiF的信息矩阵中,机器学习模型可以准确地获取一个标量参数,该参数指定大脑中每个体素(MRI图像)被中间语义特征的每个词或每个主要成分激活的程度。此外,将体素信息与基于MiF的主成分相关联,创建了具有网络连接范例的新的计算神经语言学模型。这允许将上下文空间的两个维度与语义和神经分布表示结合在一起。

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