Institut National de la Santé et de la Recherche Médicale, École Normale Supérieure, 75005 Paris, France.
Curr Opin Neurobiol. 2012 Dec;22(6):963-9. doi: 10.1016/j.conb.2012.07.007. Epub 2012 Aug 9.
Optimal binary perceptual decision making requires accumulation of evidence in the form of a probability distribution that specifies the probability of the choices being correct given the evidence so far. Reward rates can then be maximized by stopping the accumulation when the confidence about either option reaches a threshold. Behavioral and neuronal evidence suggests that humans and animals follow such a probabilitistic decision strategy, although its neural implementation has yet to be fully characterized. Here we show that that diffusion decision models and attractor network models provide an approximation to the optimal strategy only under certain circumstances. In particular, neither model type is sufficiently flexible to encode the reliability of both the momentary and the accumulated evidence, which is a pre-requisite to accumulate evidence of time-varying reliability. Probabilistic population codes, by contrast, can encode these quantities and, as a consequence, have the potential to implement the optimal strategy accurately.
最优二值感知决策需要以概率分布的形式积累证据,该概率分布指定了迄今为止的证据下选择正确的概率。然后,可以通过在任一选项的置信度达到阈值时停止积累来最大化奖励率。行为和神经证据表明,人类和动物遵循这种概率决策策略,尽管其神经实现尚未完全描述。在这里,我们表明扩散决策模型和吸引子网络模型仅在某些情况下才能提供对最优策略的近似。特别是,这两种模型类型都不够灵活,无法对瞬时和累积证据的可靠性进行编码,这是积累随时间变化的可靠性的证据的前提条件。相比之下,概率群体编码可以对这些数量进行编码,因此,具有准确实施最优策略的潜力。