Miller Paul, Katz Donald B
Volen National Center for Complex Systems, Department of Biology, Brandeis University, 415 South St, Waltham, MA, 02454-9110, USA,
J Comput Neurosci. 2013 Dec;35(3):261-94. doi: 10.1007/s10827-013-0452-x. Epub 2013 Apr 23.
Animals choose actions based on imperfect, ambiguous data. "Noise" inherent in neural processing adds further variability to this already-noisy input signal. Mathematical analysis has suggested that the optimal apparatus (in terms of the speed/accuracy trade-off) for reaching decisions about such noisy inputs is perfect accumulation of the inputs by a temporal integrator. Thus, most highly cited models of neural circuitry underlying decision-making have been instantiations of a perfect integrator. Here, in accordance with a growing mathematical and empirical literature, we describe circumstances in which perfect integration is rendered suboptimal. In particular we highlight the impact of three biological constraints: (1) significant noise arising within the decision-making circuitry itself; (2) bounding of integration by maximal neural firing rates; and (3) time limitations on making a decision. Under conditions (1) and (2), an attractor system with stable attractor states can easily best an integrator when accuracy is more important than speed. Moreover, under conditions in which such stable attractor networks do not best the perfect integrator, a system with unstable initial states can do so if readout of the system's final state is imperfect. Ubiquitously, an attractor system with a nonselective time-dependent input current is both more accurate and more robust to imprecise tuning of parameters than an integrator with such input. Given that neural responses that switch stochastically between discrete states can "masquerade" as integration in single-neuron and trial-averaged data, our results suggest that such networks should be considered as plausible alternatives to the integrator model.
动物基于不完美、模糊的数据来选择行动。神经处理过程中固有的“噪声”给这个本就有噪声的输入信号增添了更多变异性。数学分析表明,对于处理此类有噪声的输入并做出决策而言(在速度/准确性权衡方面),最优的机制是通过时间积分器对输入进行完美累加。因此,大多数关于决策背后神经回路的高引用模型都是完美积分器的实例。在此,根据越来越多的数学和实证文献,我们描述了完美积分变得次优的情况。特别地,我们强调了三个生物学限制的影响:(1)决策回路自身产生的显著噪声;(2)最大神经放电率对积分的限制;(3)做出决策的时间限制。在条件(1)和(2)下,当准确性比速度更重要时,具有稳定吸引子状态的吸引子系统能够轻易胜过积分器。此外,在这种稳定吸引子网络不能胜过完美积分器的条件下,如果系统最终状态的读出不完美,具有不稳定初始状态的系统则可以做到。普遍而言,与具有此类输入的积分器相比,具有非选择性时间依赖输入电流的吸引子系统在参数的不精确调整方面既更准确又更稳健。鉴于在单神经元和试验平均数据中,在离散状态之间随机切换的神经反应可能会“伪装”成积分,我们的结果表明,此类网络应被视为积分器模型的合理替代方案。