Brain and Cognitive Sciences, University of Rochester, Rochester, New York, United States of America.
Center for Visual Science, University of Rochester, Rochester, New York, United States of America.
PLoS Comput Biol. 2022 Mar 8;18(3):e1009557. doi: 10.1371/journal.pcbi.1009557. eCollection 2022 Mar.
Perception is often characterized computationally as an inference process in which uncertain or ambiguous sensory inputs are combined with prior expectations. Although behavioral studies have shown that observers can change their prior expectations in the context of a task, robust neural signatures of task-specific priors have been elusive. Here, we analytically derive such signatures under the general assumption that the responses of sensory neurons encode posterior beliefs that combine sensory inputs with task-specific expectations. Specifically, we derive predictions for the task-dependence of correlated neural variability and decision-related signals in sensory neurons. The qualitative aspects of our results are parameter-free and specific to the statistics of each task. The predictions for correlated variability also differ from predictions of classic feedforward models of sensory processing and are therefore a strong test of theories of hierarchical Bayesian inference in the brain. Importantly, we find that Bayesian learning predicts an increase in so-called "differential correlations" as the observer's internal model learns the stimulus distribution, and the observer's behavioral performance improves. This stands in contrast to classic feedforward encoding/decoding models of sensory processing, since such correlations are fundamentally information-limiting. We find support for our predictions in data from existing neurophysiological studies across a variety of tasks and brain areas. Finally, we show in simulation how measurements of sensory neural responses can reveal information about a subject's internal beliefs about the task. Taken together, our results reinterpret task-dependent sources of neural covariability as signatures of Bayesian inference and provide new insights into their cause and their function.
知觉在计算上通常被描述为一种推断过程,其中不确定或模糊的感觉输入与先验期望相结合。尽管行为研究表明,观察者可以在任务背景下改变他们的先验期望,但特定于任务的先验的稳健神经特征仍然难以捉摸。在这里,我们在一个普遍的假设下分析得出了这些特征,即感觉神经元的反应编码了后验信念,该信念将感觉输入与特定于任务的期望相结合。具体来说,我们推导出了在感觉神经元中与任务相关的相关性神经变异性和决策相关信号的任务依赖性预测。我们结果的定性方面是无参数的,并且特定于每个任务的统计信息。相关性变异性的预测也与经典感觉处理前馈模型的预测不同,因此是对大脑中分层贝叶斯推断理论的有力检验。重要的是,我们发现贝叶斯学习预测了所谓的“差异相关性”的增加,因为观察者的内部模型学习了刺激分布,并且观察者的行为表现得到了改善。这与经典的感觉处理前馈编码/解码模型形成对比,因为这种相关性从根本上限制了信息。我们在各种任务和大脑区域的现有神经生理学研究数据中找到了对我们预测的支持。最后,我们在模拟中展示了如何测量感觉神经反应可以揭示有关主体对任务的内部信念的信息。总之,我们的结果将依赖于任务的神经共变源重新解释为贝叶斯推断的特征,并为它们的原因和功能提供了新的见解。