一种HME神经网络知识递增模型

Jinwei Wen, S. Luo
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引用次数: 0

摘要

HME网络采用分而治之的原则将一个任务划分为多个小任务,以提高单个网络的性能。这种方法通常会带来简单、优雅和高效的算法。通过研究混合神经网络的对偶流形结构,分析基于信息几何的知识可增长模型的概率,提出了一种实现具有知识可增长和结构可扩展能力的多hme模型的新方法。该方法有助于解释人类识别系统的转换机制,理解神经网络的全局架构理论。
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A HME neural network knowledge-increasable model
The HME network divides a task into small tasks by the principle of divide and conquer to improve the performance of a single network. This approach often brings simple, elegant and efficient algorithms. By studying the dual manifold architecture for mixtures of neural networks and analyzing the probability of knowledge-increasable model based on information geometry, the paper proposes a new method to achieve the multi-HME model that has knowledge-increasable and structure-extendible ability. The method helps to provide an explanation of the transformation mechanism of the human recognition system and understand the theory of the global architecture of the neural network.
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