Joshua Calder-Travis, Lucie Charles, Rafal Bogacz, Nick Yeung
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引用次数: 0
摘要
在许多情况下,做出决策的最佳方法是跟踪所收集到的有利于各种选择的证据的差异。漂移扩散模型(DDM)实现了这一方法,并对决策和反应时间做出了很好的解释。然而,现有的基于漂移扩散模型的信心模型存在一定缺陷,许多信心理论都使用了替代性的非最佳决策模型。在 DDM 历史性成功的激励下,我们提出了这样一个问题:对这一框架进行简单扩展,是否就能更好地解释信心问题?受大脑不会重复表示证据这一观点的启发,在所有模型变体中,决策和信心都基于相同的证据积累过程。我们将这些模型与基准结果进行了比较,并在一项新的预注册研究中成功应用了有关信心、证据和时间之间关系的四项定性测试。通过使用计算成本低廉的表达式对逐次试验的置信度进行建模,我们发现模型变体的子集也能很好甚至出色地解释置信度数据中观察到的精确定量效应。具体来说,我们的结果倾向于这样一种假设,即信心反映了累积证据的强度,并受到做出决定所需时间的惩罚(贝叶斯读数),而所应用的惩罚并没有完全适应特定的任务情境。这些结果表明,没有必要放弃DDM或单一累积器模型来成功解释置信度报告。(PsycInfo Database Record (c) 2024 APA, 版权所有)。
The optimal way to make decisions in many circumstances is to track the difference in evidence collected in favor of the options. The drift diffusion model (DDM) implements this approach and provides an excellent account of decisions and response times. However, existing DDM-based models of confidence exhibit certain deficits, and many theories of confidence have used alternative, nonoptimal models of decisions. Motivated by the historical success of the DDM, we ask whether simple extensions to this framework might allow it to better account for confidence. Motivated by the idea that the brain will not duplicate representations of evidence, in all model variants decisions and confidence are based on the same evidence accumulation process. We compare the models to benchmark results, and successfully apply four qualitative tests concerning the relationships between confidence, evidence, and time, in a new preregistered study. Using computationally cheap expressions to model confidence on a trial-by-trial basis, we find that a subset of model variants also provide a very good to excellent account of precise quantitative effects observed in confidence data. Specifically, our results favor the hypothesis that confidence reflects the strength of accumulated evidence penalized by the time taken to reach the decision (Bayesian readout), with the penalty applied not perfectly calibrated to the specific task context. These results suggest there is no need to abandon the DDM or single accumulator models to successfully account for confidence reports. (PsycInfo Database Record (c) 2024 APA, all rights reserved).
期刊介绍:
Psychological Review publishes articles that make important theoretical contributions to any area of scientific psychology, including systematic evaluation of alternative theories.