时间敏感神经网络

I.L. Davis, P. A. Sandon
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引用次数: 0

摘要

解决了识别以周期性重复事件序列为特征的节奏模式的问题。描述了一种在神经网络中表示时间信息的方法和利用这种表示的应用程序。Tempnet节奏系统是这些想法的一个特殊实例。它被用来演示时间表征在处理时间信号中的使用。衰减节点激活用于表示特定时间事件的时间。这种方法在一个独立于时间尺度的周期性重复模式分类系统中得到了证明。介绍了网络模拟器,以及一些样本训练和性能运行的结果。
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Temporally sensitive neural networks
The problem of recognizing rhythmic patterns characterized by a periodically repeating sequence of events is addressed. An approach to representing temporal information in neural networks and an application that makes use of this representation are described. The Tempnet rhythm system is a particular instantiation of these ideas. It is used to demonstrate the use of temporal representation in the processing of temporal signals. Decaying node activations are used to represent the timing of specific temporal events. This approach was demonstrated in a system for categorizing periodically repeating patterns, independent of time scale. The network simulator is described, along with the results of some sample training and performance runs.<>
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