Modeling the effect of stimulus perturbations on error correlations between brain and behavior

Heeyoung Choo, Dirk Bernhardt-Walther
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引用次数: 1

Abstract

Over the last decade, machine learning algorithms have proven to be useful tools for exploring neural representations of percepts and concepts in the brain. An important but often neglected next step is it to relate neural representations to human behavior. Here, we introduce a novel approach to definitively linking neural representations to structural properties of stimuli as well as human behavior by analyzing patterns of classification errors using linear mixed-effects (LME) models. An LME model includes a priori predictive models of matching of error patterns between neural decoding and human behavior as fixed effects as well as random effects to account for subject variability. Finally, we demonstrate the viability of this approach using data from a set of fMRI and behavioral experiments testing the influence of visual properties on the neural representation of categories of real-world visual scenes.
模拟刺激扰动对大脑和行为之间误差相关性的影响
在过去的十年里,机器学习算法已经被证明是探索大脑中感知和概念的神经表征的有用工具。一个重要但经常被忽视的下一步是将神经表征与人类行为联系起来。在这里,我们引入了一种新的方法,通过使用线性混合效应(LME)模型分析分类错误的模式,将神经表征与刺激的结构特性以及人类行为明确地联系起来。LME模型包括神经解码和人类行为之间的错误模式匹配的先验预测模型,作为固定效应和随机效应,以解释受试者的可变性。最后,我们使用一组功能磁共振成像和行为实验的数据来证明这种方法的可行性,这些实验测试了视觉特性对现实世界视觉场景类别的神经表征的影响。
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