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首页> 外文期刊>International journal of bifurcation and chaos in applied sciences and engineering >Local homeostasis stabilizes a model of the olfactory system globally in respect to perturbations by input during pattern classification
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Local homeostasis stabilizes a model of the olfactory system globally in respect to perturbations by input during pattern classification

机译:通过模式分类期间的输入,局部动态平衡可稳定全局的嗅觉系统模型

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摘要

A software model of the olfactory system is presented as a test bed for identifying and solving the problems of simulating the nonlinear dynamics of sensory cortex. Compression, normalization and spatial contrast enhancement of the input to the bulb, the input stage of the olfactory system, are done by input-dependent attenuation of forward and lateral transmission, and by modulation of the asymptotic maximum of the sigmoid function of bulbar neural populations. An implementation of these mechanisms in the model, constituting local homeostatic regulation at the input stage, stabilizes the model in respect to variations in analog input and to recovery from repeated input-induced state transitions. Both non-Hebbian habituation and Hebbian reinforcement constituting local homeostatic regulation are used to train the model. A spatially patterned analog input belonging to a previously learned class may then guide the system to an appropriate basin of attraction. These advances have improved the classification performance of the model but reveal a still unsolved problem: the prestimulus state is governed by a global attractor, but the learned states are governed by collections of local attractors, not the desired global states.
机译:提出了嗅觉系统的软件模型作为测试平台,用于识别和解决模拟感觉皮层非线性动力学的问题。嗅觉系统输入阶段的球泡输入的压缩,归一化和空间对比度增强是通过前向和侧向传输的依赖于输入的衰减以及球根神经群体的乙状结肠功能的渐近最大值的调制来完成的。 。这些机制在模型中的实现(在输入阶段构成局部稳态调节)可以使模型相对于模拟输入的变化以及从重复的输入诱发的状态转换中恢复的状态稳定下来。构成局部稳态调节的非希伯来习惯和希伯来强化都用于训练模型。属于先前学习的类别的空间图案化模拟输入然后可以将系统引导至合适的吸引盆。这些进步改进了模型的分类性能,但揭示了一个仍未解决的问题:刺激状态由全局吸引子控制,而学习状态由局部吸引子的集合而不是所需的全局状态控制。

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