Department of Psychology, Stanford University, Stanford, California, USA.
Nat Neurosci. 2019 Apr;22(4):514-523. doi: 10.1038/s41593-019-0340-4. Epub 2019 Feb 25.
The foundation for modern understanding of how we make perceptual decisions about what we see or where to look comes from considering the optimal way to perform these behaviors. While statistical computation is useful for deriving the optimal solution to a perceptual problem, optimality requires perfect knowledge of priors and often complex computation. Accumulating evidence, however, suggests that optimal perceptual goals can be achieved or approximated more simply by human observers using heuristic approaches. Perceptual neuroscientists captivated by optimal explanations of sensory behaviors will fail in their search for the neural circuits and cortical processes that implement an optimal computation whenever that behavior is actually achieved through heuristics. This article provides a cross-disciplinary review of decision-making with the aim of building perceptual theory that uses optimality to set the computational goals for perceptual behavior but, through consideration of ecological, computational, and energetic constraints, incorporates how these optimal goals can be achieved through heuristic approximation.
现代对于我们如何对所见或所看之处做出感知决策的理解基础,源于对执行这些行为的最佳方式的考虑。虽然统计计算对于推导出感知问题的最优解很有用,但最优性需要对先验知识有完美的了解,而且通常需要复杂的计算。然而,越来越多的证据表明,人类观察者可以通过启发式方法更简单地实现或近似最优的感知目标。热衷于用感官行为的最优解释来解释的感知神经科学家们,将在他们寻找实现最优计算的神经回路和皮质过程的过程中失败,而这种行为实际上是通过启发式方法实现的。本文提供了决策制定的跨学科综述,旨在建立使用最优性来为感知行为设定计算目标的感知理论,但通过考虑生态、计算和能量约束,纳入了如何通过启发式近似来实现这些最优目标。