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Clustering of user activities based on adaptive threshold spiking neural networks

机译:基于自适应阈值尖峰神经网络的用户活动聚类

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Spiking neural networks are utilized in solving hard computation problems in intelligent systems. Spiking neural networks have a high computational power due to the implicit employment of various parameters such as input times and values in addition to neuron threshold, synaptic delays, and weights in their structures. On the other hand, smart environment techniques are emergent science in this decade. Intelligent systems represented by spiking neural network models and smart environments represented by sensors readings are utilized in this research for clustering users' activities during some period of time. A new learning algorithm for spiking neural network based on adaptation of the internal neuron threshold is proposed. Threshold adaptation is employed to help a spiking neuron to fire the lowest number of output spikes and to preserve all information of the input spike train on the same time. Simulations show that the clustering algorithm has encouraging results.
机译:尖峰神经网络用于解决智​​能系统中的硬计算问题。由于神经元阈值,突触延迟及其结构权重等各种参数(例如输入时间和值)的隐式使用,尖峰神经网络具有很高的计算能力。另一方面,智能环境技术已成为近十年来的新兴科学。在这项研究中,以尖峰神经网络模型为代表的智能系统和以传感器读数为代表的智能环境被用于在一段时间内对用户的活动进行聚类。提出了一种基于内部神经元阈值自适应的尖峰神经网络学习算法。阈值自适应用于帮助尖峰神经元触发最少数量的输出尖峰,并同时保留输入尖峰序列的所有信息。仿真表明,聚类算法具有令人鼓舞的效果。

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