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Deconstructing Odorant Identity via Primacy in Dual Networks

机译:在双网络中通过Primacy解构异味同一性

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摘要

In the olfactory system, odor percepts retain their identity despite substantial variations in concentration, timing, and background. We study a novel strategy for encoding intensity-invariant stimulus identity that is based on representing relative rather than absolute values of stimulus features. For example, in what is known as the primacy coding model, odorant identities are represented by the conditions that some odorant receptors are activated more strongly than others. Because, in this scheme, odorant identity depends only on the relative amplitudes of olfactory receptor responses, identity is invariant to changes in both intensity and monotonic nonlinear transformations of its neuronal responses. Here we show that sparse vectors representing odorant mixtures can be recovered in a compressed sensing framework via elastic net loss minimization. In the primacy model, this minimization is performed under the constraint that some receptors respond to a given odorant more strongly than others. Using duality transformation, we show that this constrained optimization problem can be solved by a neural network whose Lyapunov function represents the dual Lagrangian and whose neural responses represent the Lagrange coefficients of primacy and other constraints. The connectivity in such a dual network resembles known features of connectivity in olfactory circuits. We thus propose that networks in the piriform cortex implement dual computations to compute odorant identity with the sparse activities of individual neurons representing Lagrange coefficients. More generally, we propose that sparse neuronal firing rates may represent Lagrange multipliers, which we call the dual brain hypothesis. We show such a formulation is well suited to solve problems with multiple interacting relative constraints.
机译:在嗅觉系统中,尽管浓度,时序和背景中的大量变化,但气味感知保留了他们的身份。我们研究了一种用于编码基于相对的强度不变刺激标识的新策略,该刺激标识基于代表相对而不是刺激特征的绝对值。例如,在所谓的primacy编码模型中,气味同一性由一些气味受体被激活比其他气味受体更强烈的条件表示。因为在该方案中,异味同一性仅取决于嗅觉受体反应的相对幅度,因此其神经元应答的强度和单调非线性变化的变化不变。在这里,我们表明,代表气味混合物的稀疏载体可以通过弹性净损耗最小化在压缩传感框架中回收。在PRISCACY模型中,在一些受体的约束下进行这种最小化在一些受体比其他受体更强烈地响应给定的气味剂。使用二元变换,我们表明,这种约束优化问题可以通过Lyapunov函数代表双拉格朗日的神经网络来解决,并且其神经响应表示PRIMACY和其他限制的拉格朗日系数。这种双网络中的连接类似于嗅探电路中的连接性的已知特征。因此,我们提出了芯片皮层中的网络实现了双重计算,以计算具有代表拉格朗日系数的单个神经元的稀疏活动的气味同一性。更一般地,我们提出了稀疏的神经元烧制率可以代表拉格朗日乘法器,我们称之为双重脑假设。我们展示了这种制定非常适合解决多次交互相对约束的问题。

著录项

  • 来源
    《Neural computation》 |2019年第4期|710-737|共28页
  • 作者单位

    Cold Spring Harbor Lab POB 100 Cold Spring Harbor NY 11724 USA;

    Cold Spring Harbor Lab POB 100 Cold Spring Harbor NY 11724 USA;

    NYU Sch Med Neurosci Inst New York NY 10016 USA;

    Cold Spring Harbor Lab POB 100 Cold Spring Harbor NY 11724 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
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