A potential reset mechanism for the modulation of decision processes under uncertainty

Krista Bond, Alexis Porter, T. Verstynen
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Abstract

Humans and other mammals flexibly select actions in noisy, uncertain contexts, quickly using feedback to adapt their decision policies to either explore other options or to exploit what they know. Drawing inspiration from the plasticity of cortico-basal ganglia-thalamic circuitry, we recently developed a cognitive model of decision-making that uses both a value-driven learning signal to update an internal estimate of state action-value (i.e., conflict in the probability of reward between two choices) and a change-point-driven learning signal that adapts to changes in reward contingencies (i.e., a previously high value target becoming devalued). In this work, we expand on previous results from our group (Bond, Dunovan, & Verstynen, 2018) to more carefully detail how these environmental signals drive changes in the decision process. Across nine separate behavioral testing sessions, we independently manipulated the level of value-conflict and volatility in action-outcome contingencies. Using a hierarchical drift diffusion model, we found that the belief in the value difference between options had the greatest influence on decision processes, impacting drift rate, while estimates of environmental change had a smaller, but detectable influence on the decision threshold. Taken together, these findings bolster our previous work showing how separate environmental signals impact different aspects of the decision algorithm.
不确定性下决策过程调节的潜在重置机制
人类和其他哺乳动物在嘈杂、不确定的环境中灵活地选择行动,迅速利用反馈来调整他们的决策政策,以探索其他选择或利用他们所知道的。从皮质-基底神经节-丘脑回路的可塑性中获得灵感,我们最近开发了一种决策的认知模型,该模型既使用价值驱动的学习信号来更新对状态行动价值的内部估计(即,两种选择之间奖励概率的冲突),也使用变化点驱动的学习信号来适应奖励偶然性的变化(即,以前高价值的目标变得贬值)。在这项工作中,我们扩展了我们小组之前的结果(Bond, Dunovan, & Verstynen, 2018),以更仔细地详细说明这些环境信号如何驱动决策过程中的变化。在九个独立的行为测试环节中,我们独立地操纵了行动-结果偶然性中价值冲突和波动性的水平。使用分层漂移扩散模型,我们发现对选项之间价值差异的信念对决策过程的影响最大,影响漂移率,而对环境变化的估计对决策阈值的影响较小,但可检测到。综上所述,这些发现支持了我们之前的工作,即不同的环境信号如何影响决策算法的不同方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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