Causal and anti-causal learning in pattern recognition for neuroimaging

S. Weichwald, B. Scholkopf, T. Ball, M. Grosse-Wentrup
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引用次数: 14

Abstract

Pattern recognition in neuroimaging distinguishes between two types of models: encoding- and decoding models. This distinction is based on the insight that brain state features, that are found to be relevant in an experimental paradigm, carry a different meaning in encoding-than in decoding models. In this paper, we argue that this distinction is not sufficient: Relevant features in encoding- and decoding models carry a different meaning depending on whether they represent causal-or anti-causal relations. We provide a theoretical justification for this argument and conclude that causal inference is essential for interpretation in neuroimaging.
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神经影像模式识别中的因果与反因果学习
神经成像中的模式识别区分了两种模型:编码模型和解码模型。这种区别是基于这样一种认识,即在实验范式中发现的与之相关的大脑状态特征,在编码模型中具有与解码模型不同的含义。在本文中,我们认为这种区分是不够的:编码和解码模型中的相关特征根据它们是否代表因果关系或反因果关系而具有不同的含义。我们为这一论点提供了理论依据,并得出因果推理对神经影像学解释至关重要的结论。
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