Department of Engineering Mathematics, Faculty of Engineering, University of Bristol, Bristol, UK.
Nat Commun. 2022 Aug 29;13(1):5066. doi: 10.1038/s41467-022-32741-y.
Integration-to-threshold models of two-choice perceptual decision making have guided our understanding of human and animal behavior and neural processing. Although such models seem to extend naturally to multiple-choice decision making, consensus on a normative framework has yet to emerge, and hence the implications of threshold characteristics for multiple choices have only been partially explored. Here we consider sequential Bayesian inference and a conceptualisation of decision making as a particle diffusing in n-dimensions. We show by simulation that, within a parameterised subset of time-independent boundaries, the optimal decision boundaries comprise a degenerate family of nonlinear structures that jointly depend on the state of multiple accumulators and speed-accuracy trade-offs. This degeneracy is contrary to current 2-choice results where there is a single optimal threshold. Such boundaries support both stationary and collapsing thresholds as optimal strategies for decision-making, both of which result from stationary representations of nonlinear boundaries. Our findings point towards a normative theory of multiple-choice decision making, provide a characterisation of optimal decision thresholds under this framework, and inform the debate between stationary and dynamic decision boundaries for optimal decision making.
双选感知决策的整合到阈值模型指导了我们对人类和动物行为及神经处理的理解。尽管这些模型似乎自然地扩展到多选决策,但规范框架的共识尚未出现,因此阈值特征对多选的影响仅部分得到了探索。在这里,我们考虑顺序贝叶斯推理和将决策视为在 n 维空间中扩散的粒子的概念化。我们通过模拟表明,在时间独立边界的参数化子集内,最优决策边界由多个累加器状态和速度准确性权衡共同依赖的非线性结构的退化族组成。这种退化与当前的 2 选结果相反,其中只有一个最优阈值。这种边界支持作为决策的最优策略的固定和崩溃阈值,它们都源于非线性边界的固定表示。我们的发现指向了多选决策的规范理论,为该框架下的最优决策阈值提供了特征描述,并为最优决策的固定和动态决策边界之间的争论提供了信息。