Analysis of A Mixed Neural Network Based on CNN and RNN for Computational Model of Sensory Cortex

Haoyue Yan, Chenwei Wu
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引用次数: 1

Abstract

Under the limitation of modern science, Anatomy is not able to discover the extremely complicated organ - brain’s working activities. Along with the development of machine learning and its subset - neural network, named by nearly implementing neurons’ connection, scientists found an efficient way to represent brain as a visible approach. Therefore, a new discipline has been created under biology, named as computational neuroscience. Most scientists focus on finding computational models that are closed to fit the specific or general areas of the cortex. Convolutional neural network (CNN) and Recurrent neural network (RNN) are two of them. By taking advantages of those two most popular networks, in this study, a mixed computational model with CNN and RNN might be the best computational model for analogizing brain’s activities so far.
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基于CNN和RNN的混合神经网络对感觉皮层计算模型的分析
在现代科学的限制下,解剖学无法发现极其复杂的器官——大脑的工作活动。随着机器学习及其子集——神经网络的发展,科学家们发现了一种有效的方法来表示大脑作为一种可见的方法。因此,在生物学之下产生了一门新的学科,称为计算神经科学。大多数科学家专注于寻找适合大脑皮层特定或一般区域的计算模型。卷积神经网络(CNN)和递归神经网络(RNN)就是其中的两种。通过利用这两种最流行的网络,在本研究中,CNN和RNN的混合计算模型可能是迄今为止模拟大脑活动的最佳计算模型。
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