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Bio-inspired feedback-circuit implementation of discrete, free energy optimizing, winner-take-all computations

机译:生物启发式反馈电路的离散,自由能优化,赢家通吃计算

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摘要

Bayesian inference and bounded rational decision-making require the accumulation of evidence or utility, respectively, to transform a prior belief or strategy into a posterior probability distribution over hypotheses or actions. Crucially, this process cannot be simply realized by independent integrators, since the different hypotheses and actions also compete with each other. In continuous time, this competitive integration process can be described by a special case of the replicator equation. Here we investigate simple analog electric circuits that implement the underlying differential equation under the constraint that we only permit a limited set of building blocks that we regard as biologically interpretable, such as capacitors, resistors, voltage-dependent conductances and voltage- or current-controlled current and voltage sources. The appeal of these circuits is that they intrinsically perform normalization without requiring an explicit divisive normalization. However, even in idealized simulations, we find that these circuits are very sensitive to internal noise as they accumulate error over time. We discuss in how far neural circuits could implement these operations that might provide a generic competitive principle underlying both perception and action.
机译:贝叶斯推理和有限理性决策分别需要证据或效用的积累,才能将先验的信念或策略转化为假设或行动的后验概率分布。至关重要的是,这个过程不能由独立的集成商简单地实现,因为不同的假设和行动也相互竞争。在连续时间内,这种竞争性整合过程可以通过复制器方程的特殊情况来描述。在这里,我们研究了简单的模拟电路,这些电路在仅允许我们认为是生物学上可解释的有限构建基集的约束下实现了基本的微分方程,例如电容器,电阻器,电压相关电导以及电压或电流控制电流和电压源。这些电路的吸引力在于它们本质上执行归一化而无需明确的除法归一化。但是,即使在理想的仿真中,我们也会发现这些电路对内部噪声非常敏感,因为它们会随着时间的推移累积误差。我们讨论了神经回路在多大程度上可以实现这些操作,这些操作可以提供一种既基于感知又基于动作的通用竞争原则。

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