论文标题
研究不确定性的神经表示
Studying the neural representations of uncertainty
论文作者
论文摘要
对大脑不确定性表示的研究是神经科学中的一个核心主题。与研究神经表示的大多数数量不同,不确定性是观察者对世界的信念的特性,它带来了特定的方法论挑战。我们分析有关不确定性神经表示的文献如何解决这些挑战并区分“代码驱动”和“相关”方法。代码驱动的方法对代表世界状态的神经代码和相关的不确定性做出了假设。相比之下,相关方法搜索不确定性和神经活动之间的关系,而没有对这种不确定性伴随的世界的神经表示的约束。为了比较这两种方法,我们将几个标准应用于神经表示:灵敏度,特异性,不变性,功能。我们的分析表明,两种方法导致不同但互补的发现,塑造了新的研究问题并指导未来的实验。
The study of the brain's representations of uncertainty is a central topic in neuroscience. Unlike most quantities of which the neural representation is studied, uncertainty is a property of an observer's beliefs about the world, which poses specific methodological challenges. We analyze how the literature on the neural representations of uncertainty addresses those challenges and distinguish between "code-driven" and "correlational" approaches. Code-driven approaches make assumptions about the neural code for representing world states and the associated uncertainty. By contrast, correlational approaches search for relationships between uncertainty and neural activity without constraints on the neural representation of the world state that this uncertainty accompanies. To compare these two approaches, we apply several criteria for neural representations: sensitivity, specificity, invariance, functionality. Our analysis reveals that the two approaches lead to different, but complementary findings, shaping new research questions and guiding future experiments.