首页> 外文会议>International Joint Conference on Neural Networks;IJCNN 2009 >Prerequisites for integrating unsupervised and reinforcement learning in a single network of spiking neurons
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Prerequisites for integrating unsupervised and reinforcement learning in a single network of spiking neurons

机译:在单个尖峰神经元网络中集成无监督和强化学习的前提条件

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Most artificial neural network architectures learn either via unsupervised or reinforcement learning but rarely via both. However, the brain effectively integrates both types of learning. We describe which prerequisites are necessary in a spiking network architecture in order to integrate both learning mechanisms and present a network which meets these requirements. In a nut shell, the network has a winner-take-all type output layer resembling the motor output and an excitatory feedback layer which extends the firing of the input layer until after the end of external stimulation resembling the function of the hippocampus.
机译:大多数人工神经网络体系结构都是通过无监督学习或强化学习来学习的,但很少通过两者来学习。但是,大脑有效地整合了两种学习方式。我们描述了尖峰网络体系结构中哪些先决条件是必需的,以便集成两种学习机制并提出满足这些要求的网络。在坚果壳中,该网络具有类似于电机输出的赢家通吃型输出层和激励反馈层,该激励层将输入层的发射范围扩展到类似于海马功能的外部刺激结束之后。

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