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An application of formal concept analysis to semantic neural decoding

机译:形式概念分析在语义神经解码中的应用

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This paper proposes a novel application of Formal Concept Analysis (FCA) to neural decoding: the semantic relationships between the neural representations of large sets of stimuli are explored using concept lattices. In particular, the effects of neural code sparsity are modelled using the lattices. An exact Bayesian approach is employed to construct the formal context needed by FCA. This method is explained using an example of neurophysiological data from the high-level visual cortical area STSa. Prominent features of the resulting concept lattices are discussed, including indications for hierarchical face representation and a product-of-experts code in real neurons. The robustness of these features is illustrated by studying the effects of scaling the attributes.
机译:本文提出了形式概念分析(FCA)在神经解码中的一种新颖应用:使用概念格探索了大组刺激的神经表示之间的语义关系。特别是,神经网络稀疏性的影响是使用网格建模的。使用精确的贝叶斯方法来构造FCA所需的形式上下文。使用来自高级视觉皮层区域STSa的神经生理学数据的示例说明了此方法。讨论了所得概念格的突出特征,包括分层面部表示的指示以及真实神经元中的专家产品代码。通过研究缩放属性的效果可以说明这些功能的鲁棒性。

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