Synchronized Stepwise Control of Firing and Learning Thresholds in a Spiking Randomly Connected Neural Network toward Hardware Implementation
arxiv(2024)
摘要
We propose hardware-oriented models of intrinsic plasticity (IP) and synaptic
plasticity (SP) for spiking randomly connected recursive neural network (RNN).
Although the potential of RNNs for temporal data processing has been
demonstrated, randomness of the network architecture often causes performance
degradation. Self-organization mechanism using IP and SP can mitigate the
degradation, therefore, we compile these functions in a spiking neuronal model.
To implement the function of IP, a variable firing threshold is introduced to
each excitatory neuron in the RNN that changes stepwise in accordance with its
activity. We also define other thresholds for SP that synchronize with the
firing threshold, which determine the direction of stepwise synaptic update
that is executed on receiving a pre-synaptic spike. We demonstrate the
effectiveness of our model through simulations of temporal data learning and
anomaly detection with a spiking RNN using publicly available
electrocardiograms. Considering hardware implementation, we employ discretized
thresholds and synaptic weights and show that these parameters can be reduced
to binary if the RNN architecture is appropriately designed. This contributes
to minimization of the circuit of the neuronal system having IP and SP.
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