Fine Justin M, Moreno-Bote Rubén, Hayden Benjamin Y
Department of Neurosurgery, Baylor College of Medicine Houston, Texas, United States of America.
Center for Brain and Cognition, Universitat Pompeu Fabra, 08002, Barcelona, Spain.
bioRxiv. 2024 Sep 23:2024.09.20.614193. doi: 10.1101/2024.09.20.614193.
Mental operations like computing the value of an option are computationally expensive. Even before we evaluate options, we must decide how much attentional effort to invest in the evaluation process. More precise evaluation will improve choice accuracy, and thus reward yield, but the gain may not justify the cost. provide an accounting of the internal economics of attentionally effortful economic decisions. To understand this process, we examined choices and neural activity in several brain regions in six macaques making risky choices. We extended the rational inattention framework to incorporate the foraging theoretic understanding of local environmental richness or reward rate, which we predict will promote attentional effort. Consistent with this idea, we found local reward rate positively predicted choice accuracy. Supporting the hypothesis that this effect reflects variations in attentional effort, richer contexts were associated with increased baseline and evoked pupil size. Neural populations likewise showed systematic baseline coding of reward rate context. During increased reward rate contexts, ventral striatum and orbitofrontal cortex showed both an increase in value decodability and a rotation in the population geometries for value. This confluence of these results suggests a mechanism of attentional effort that operates by controlling gain through using partially distinct population codes for value. Additionally, increased reward rate accelerated value code dynamics, which have been linked to improved signal-to-noise. These results extend the theory of rational inattention to static and stationary contexts and align theories of rational inattention with specific costly, neural processes.
像计算选项价值这样的心理操作在计算上是昂贵的。甚至在我们评估选项之前,我们就必须决定在评估过程中投入多少注意力。更精确的评估会提高选择的准确性,从而提高奖励收益,但这种收益可能并不值得付出成本。我们对注意力耗费型经济决策的内部经济学进行了核算。为了理解这个过程,我们研究了六只进行风险选择的猕猴的几个脑区中的选择和神经活动。我们扩展了理性疏忽框架,纳入了对局部环境丰富度或奖励率的觅食理论理解,我们预测这将促进注意力的投入。与这一观点一致,我们发现局部奖励率能正向预测选择的准确性。支持这一效应反映注意力投入变化这一假设的是,更丰富的情境与基线瞳孔大小和诱发瞳孔大小的增加有关。神经群体同样显示出奖励率情境的系统性基线编码。在奖励率增加的情境中,腹侧纹状体和眶额皮质在价值可解码性方面都有所增加,并且在价值的群体几何结构方面发生了旋转。这些结果的融合表明了一种注意力投入机制,该机制通过使用部分不同的价值群体编码来控制增益。此外,奖励率的增加加速了价值编码动态,这与改善信噪比有关。这些结果将理性疏忽理论扩展到静态和稳定的情境中,并使理性疏忽理论与特定的高成本神经过程相一致。