波动刺激任务中漂移扩散观测器的贝叶斯置信度表达式

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Joshua Calder-Travis , Rafal Bogacz , Nick Yeung
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引用次数: 0

摘要

我们引入了一种新的决策置信度建模方法,目的是实现计算成本低廉的预测,同时考虑并利用随机波动刺激中的逐个试验的可变性。使用决策的漂移-扩散模型的框架,以及与时间相关的阈值和贝叶斯置信度读出的思想,我们推导了置信度报告上概率分布的表达式。根据当前的置信模型,这些推导允许积累到响应时已经收到但尚未处理的“管道”证据、漂移率变异性的影响和元认知噪音。这些表达对于在试验过程中发生变化的刺激有效,其提供的证据具有正态分布的波动。为了得到最终的表达式,我们进行了许多近似,并通过模拟测试了所有近似。导出的表达式只包含少量的标准函数,并且每次试验只需要评估一次,这使得在随机波动的刺激任务中对置信度数据进行逐个试验建模变得更加可行。最后,我们使用这些表达式来深入了解最佳观察者的置信度,以及经验观察到的模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Expressions for Bayesian confidence of drift diffusion observers in fluctuating stimuli tasks

We introduce a new approach to modelling decision confidence, with the aim of enabling computationally cheap predictions while taking into account, and thereby exploiting, trial-by-trial variability in stochastically fluctuating stimuli. Using the framework of the drift diffusion model of decision making, along with time-dependent thresholds and the idea of a Bayesian confidence readout, we derive expressions for the probability distribution over confidence reports. In line with current models of confidence, the derivations allow for the accumulation of “pipeline” evidence that has been received but not processed by the time of response, the effect of drift rate variability, and metacognitive noise. The expressions are valid for stimuli that change over the course of a trial with normally-distributed fluctuations in the evidence they provide. A number of approximations are made to arrive at the final expressions, and we test all approximations via simulation. The derived expressions contain only a small number of standard functions, and require evaluating only once per trial, making trial-by-trial modelling of confidence data in stochastically fluctuating stimuli tasks more feasible. We conclude by using the expressions to gain insight into the confidence of optimal observers, and empirically observed patterns.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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