Radillo Adrian E, Veliz-Cuba Alan, Josić Krešimir, Kilpatrick Zachary P
Department of Mathematics, University of Houston, Houston, TX 77204, U.S.A.
Department of Mathematics, University of Dayton, Dayton, OH 45469, U.S.A.
Neural Comput. 2017 Jun;29(6):1561-1610. doi: 10.1162/NECO_a_00957. Epub 2017 Mar 23.
In a constantly changing world, animals must account for environmental volatility when making decisions. To appropriately discount older, irrelevant information, they need to learn the rate at which the environment changes. We develop an ideal observer model capable of inferring the present state of the environment along with its rate of change. Key to this computation is an update of the posterior probability of all possible change point counts. This computation can be challenging, as the number of possibilities grows rapidly with time. However, we show how the computations can be simplified in the continuum limit by a moment closure approximation. The resulting low-dimensional system can be used to infer the environmental state and change rate with accuracy comparable to the ideal observer. The approximate computations can be performed by a neural network model via a rate-correlation-based plasticity rule. We thus show how optimal observers accumulate evidence in changing environments and map this computation to reduced models that perform inference using plausible neural mechanisms.
在一个不断变化的世界中,动物在做决策时必须考虑环境的波动性。为了适当地忽略陈旧、无关的信息,它们需要了解环境变化的速率。我们开发了一种理想观察者模型,该模型能够推断环境的当前状态及其变化速率。这种计算的关键是更新所有可能的变化点计数的后验概率。由于可能性的数量会随着时间迅速增长,所以这种计算可能具有挑战性。然而,我们展示了如何通过矩闭合近似在连续极限下简化这些计算。由此产生的低维系统可用于准确推断环境状态和变化速率,其精度与理想观察者相当。近似计算可以通过基于速率相关性的可塑性规则由神经网络模型来执行。因此,我们展示了最优观察者如何在变化的环境中积累证据,并将这种计算映射到使用合理神经机制进行推理的简化模型。