Schütt Heiko H, Yoo Aspen H, Calder-Travis Joshua, Ma Wei Ji
Center for Neural Science.
Department of Experimental Psychology.
Psychol Rev. 2023 Mar;130(2):334-367. doi: 10.1037/rev0000402. Epub 2023 Feb 20.
Bayesian optimal inference is often heralded as a principled, general framework for human perception. However, optimal inference requires integration over all possible world states, which quickly becomes intractable in complex real-world settings. Additionally, deviations from optimal inference have been observed in human decisions. A number of approximation methods have previously been suggested, such as sampling methods. In this study, we additionally propose , which evaluate only a single best estimate of the world state per response category. We compare the predicted behavior of these model observers to human decisions in five perceptual categorization tasks. Compared to the Bayesian observer, the point estimate observer loses decisively in one task, ties in two and wins in two tasks. Two sampling observers also improve upon the Bayesian observer, but in a different set of tasks. Thus, none of the existing general observer models appears to fit human perceptual decisions in all situations, but the point estimate observer is competitive with other observer models and may provide another stepping stone for future model development. (PsycInfo Database Record (c) 2023 APA, all rights reserved).
贝叶斯最优推理常常被誉为人类感知的一个有原则的通用框架。然而,最优推理需要对所有可能的世界状态进行整合,在复杂的现实世界场景中,这很快就会变得难以处理。此外,在人类决策中已经观察到与最优推理的偏差。此前已经提出了一些近似方法,比如抽样方法。在本研究中,我们还提出了点估计观察者,它对每个反应类别仅评估世界状态的单个最佳估计。我们将这些模型观察者的预测行为与人类在五项感知分类任务中的决策进行比较。与贝叶斯观察者相比,点估计观察者在一项任务中决定性地失利,在两项任务中持平,在两项任务中获胜。另外两个抽样观察者也比贝叶斯观察者表现更好,但在不同的任务组中。因此,现有的通用观察者模型似乎都无法在所有情况下拟合人类的感知决策,但点估计观察者与其他观察者模型具有竞争力,可能为未来的模型发展提供另一个垫脚石。(《心理学文摘数据库记录》(c)2023 美国心理学会,保留所有权利)