Abstract

Optimal Bayesian models have been highly successful in describing human performance on perceptual decision-making tasks, such as cue combination and visual search. However, recent studies have argued that these models are often overly flexible and therefore lack explanatory power. Moreover, there are indications that neural computation is inherently imprecise, which makes it implausible that humans would perform optimally on any non-trivial task. Here, we reconsider human performance on a visual-search task by using an approach that constrains model flexibility and tests for computational imperfections. Subjects performed a target detection task in which targets and distractors were tilted ellipses with orientations drawn from Gaussian distributions with different means. We varied the amount of overlap between these distributions to create multiple levels of external uncertainty. We also varied the level of sensory noise, by testing subjects under both short and unlimited display times. On average, empirical performance—measured as d’—fell 18.1% short of optimal performance. We found no evidence that the magnitude of this suboptimality was affected by the level of internal or external uncertainty. The data were well accounted for by a Bayesian model with imperfections in its computations. This “imperfect Bayesian” model convincingly outperformed the “flawless Bayesian” model as well as all ten heuristic models that we tested. These results suggest that perception is founded on Bayesian principles, but with suboptimalities in the implementation of these principles. The view of perception as imperfect Bayesian inference can provide a middle ground between traditional Bayesian and anti-Bayesian views.

Highlights

  • An important function of the visual system is to make inferences about the environment from noisy sensory input

  • Numerous studies have reported that humans often perform as accurately as is possible given these sensory imprecisions. This suggests that the brain makes optimal use of the sensory input and computes without error

  • It is often claimed that human performance on perceptual inference tasks is optimal or “Bayesian” [1,2,3,4,5], meaning that subjects supposedly perform as well as theoretically possible given the amount of sensory noise in their observations

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Summary

Introduction

An important function of the visual system is to make inferences about the environment from noisy sensory input. It is often claimed that human performance on perceptual inference tasks is optimal or “Bayesian” [1,2,3,4,5], meaning that subjects supposedly perform as well as theoretically possible given the amount of sensory noise in their observations. Evidence for this claim has mainly come from tasks in which subjects integrate two sensory cues to estimate a common source. More recent work has reported that optimality in perception extends to tasks with as many as eight cues and with highly non-linear optimal decision rules, including visual search [13,14,15,16,17], categorization [18], change detection [19], change localization [20], and sameness discrimination [21] tasks

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