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Responses of central auditory neurons modeled with finite impulse response (FIR) neural networks.

机译:用有限脉冲响应(FIR)神经网络建模的中央听觉神经元的响应。

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摘要

To simulate central auditory responses to complex sounds, a computational model was implemented. It consists of a multi-scale classification process, and an artificial neural network composed of two modules of finite impulse response (FIR) neural networks connected to a maximum network. Electrical activities of single auditory neurons were recorded at the rat midbrain in response to a repetitive pseudo-random frequency modulated (FM) sound. The multi-scale classification process divides the training dataset into either strong or weak response using a multiple-scale Gaussian filter that based on response probability. Two modules of FIR neural network are then independently trained to model the two types of responses. This caters for the possible differences in neuronal circuitry and transmission delay. Their outputs are connected to a maximum network to generate the final output. After training, we use a different set of FM responses collected from the same neuron to test the performance of the model. Two criteria are adopted for assessment. One measures the matching of the modeled output to the actual output on a point-to-point basis. Another measures the matching of bulk responses between the two. Results show that the proposed model predicts the responses of central auditory neurons satisfactorily.
机译:为了模拟中央听觉对复杂声音的反应,采用了一种计算模型。它由一个多尺度分类过程和一个人工神经网络组成,该人工神经网络由连接到最大网络的两个有限脉冲响应(FIR)神经网络模块组成。响应重复的伪随机频率调制(FM)声音,在大鼠中脑记录了单个听觉神经元的电活动。多尺度分类过程使用基于响应概率的多尺度高斯滤波器将训练数据集分为强响应或弱响应。然后分别对FIR神经网络的两个模块进行训练,以对两种类型的响应进行建模。这迎合了神经元电路和传输延迟的可能差异。它们的输出连接到最大网络以生成最终输出。训练后,我们使用从同一神经元收集的一组不同的FM响应来测试模型的性能。评估采用两个标准。一种是在点对点的基础上测量建模输出与实际输出的匹配程度。另一个度量了两者之间的批量响应的匹配。结果表明,所提出的模型可以令人满意地预测中枢听神经元的反应。

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