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Quantitative modeling of the neural representation of objects: how semantic feature norms can account for fMRI activation.

机译:对象的神经表示的定量建模:语义特征规范如何解释fMRI激活。

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Recent multivariate analyses of fMRI activation have shown that discriminative classifiers such as Support Vector Machines (SVM) are capable of decoding fMRI-sensed neural states associated with the visual presentation of categories of various objects. However, the lack of a generative model of neural activity limits the generality of these discriminative classifiers for understanding the underlying neural representation. In this study, we propose a generative classifier that models the hidden factors that underpin the neural representation of objects, using a multivariate multiple linear regression model. The results indicate that object features derived from an independent behavioral feature norming study can explain a significant portion of the systematic variance in the neural activity observed in an object-contemplation task. Furthermore, the resulting regression model is useful for classifying a previously unseen neural activation vector, indicating that the distributed pattern of neural activities encodes sufficient signal to discriminate differences among stimuli. More importantly, there appears to be a double dissociation between the two classifier approaches and within- versus between-participants generalization. Whereas an SVM-based discriminative classifier achieves the best classification accuracy in within-participants analysis, the generative classifier outperforms an SVM-based model which does not utilize such intermediate representations in between-participants analysis. This pattern of results suggests the SVM-based classifier may be picking up some idiosyncratic patterns that do not generalize well across participants and that good generalization across participants may require broad, large-scale patterns that are used in our set of intermediate semantic features. Finally, this intermediate representation allows us to extrapolate the model of the neural activity to previously unseen words, which cannot be done with a discriminative classifier.
机译:最近对fMRI激活的多变量分析表明,诸如支持向量机(SVM)之类的判别分类器能够解码与各种对象的类别的可视表示相关的fMRI感知的神经状态。但是,缺乏神经活动的生成模型限制了这些区分性分类器用于理解基本神经表示的一般性。在这项研究中,我们提出了一种生成分类器,该模型使用多元多元线性回归模型对支持对象神经表示的隐藏因素进行建模。结果表明,来自独立行为特征规范研究的目标特征可以解释在目标思考任务中观察到的神经活动的系统变异的很大一部分。此外,所得的回归模型可用于对以前看不见的神经激活向量进行分类,这表明神经活动的分布模式编码了足以区分刺激之间差异的信号。更重要的是,两种分类器方法之间以及参与者内部与参与者之间的概括之间似乎存在双重分离。尽管基于SVM的判别式分类器在参与者内部分析中实现了最佳分类精度,但是生成式分类器的表现优于基于SVM的模型,该模型在参与者之间的分析中没有利用这种中间表示。这种结果模式表明,基于SVM的分类器可能会选择一些在参与者之间不能很好地概括的特质模式,并且在参与者之间进行良好的概括可能需要在我们的一组中间语义特征中使用的广泛,大规模的模式。最后,这种中间表示使我们能够将神经活动的模型外推到以前看不见的单词,这是无法使用区分性分类器完成的。

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