Institute of Cognitive Sciences and Technologies, National Research Council, Rome, Italy.
School of Psychological Sciences, Tel Aviv University, Tel Aviv, Israel.
Psychon Bull Rev. 2023 Aug;30(4):1360-1379. doi: 10.3758/s13423-023-02255-9. Epub 2023 Mar 14.
Assessing our confidence in the choices we make is important to making adaptive decisions, and it is thus no surprise that we excel in this ability. However, standard models of decision-making, such as the drift-diffusion model (DDM), treat confidence assessment as a post hoc or parallel process that does not directly influence the choice, which depends only on accumulated evidence. Here, we pursue the alternative hypothesis that what is monitored during a decision is an evolving sense of confidence (that the to-be-selected option is the best) rather than raw evidence. Monitoring confidence has the appealing consequence that the decision threshold corresponds to a desired level of confidence for the choice, and that confidence improvements can be traded off against the resources required to secure them. We show that most previous findings on perceptual and value-based decisions traditionally interpreted from an evidence-accumulation perspective can be explained more parsimoniously from our novel confidence-driven perspective. Furthermore, we show that our novel confidence-driven DDM (cDDM) naturally generalizes to decisions involving any number of alternative options - which is notoriously not the case with traditional DDM or related models. Finally, we discuss future empirical evidence that could be useful in adjudicating between these alternatives.
评估我们在决策中做出的选择的信心对于做出适应性决策非常重要,因此,我们在这方面表现出色也就不足为奇了。然而,标准的决策模型,如漂移-扩散模型(DDM),将信心评估视为一种事后或平行的过程,不会直接影响选择,而选择仅取决于累积的证据。在这里,我们追求替代假设,即在决策过程中监测的是信心的演变感(即待选选项是最佳选项),而不是原始证据。监测信心具有吸引力的结果,即决策阈值对应于对选择的期望信心水平,并且可以权衡信心提高所需的资源。我们表明,从证据积累的角度来看,传统上对感知和基于价值的决策的大多数先前发现都可以从我们新颖的信心驱动的角度更简洁地解释。此外,我们表明,我们新颖的信心驱动的 DDM(cDDM)自然适用于涉及任意数量的替代选项的决策——这与传统的 DDM 或相关模型明显不同。最后,我们讨论了未来的实证证据,这些证据对于在这些替代方案之间做出裁决可能很有用。