Liquid State Machine with Dendritically Enhanced Readout for Low-power, Neuromorphic VLSI Implementations
Subhrajit Roy, Amitava Banerjee, Arindam Basu

TL;DR
This paper introduces a dendritically enhanced readout for liquid state machines that improves performance and reduces resource use, making it suitable for low-power neuromorphic hardware implementations.
Contribution
It proposes a biologically inspired dendritic neuron model with network rewiring for reservoir computing, achieving better accuracy with fewer synapses compared to traditional perceptrons.
Findings
Up to 3.3 times less error in spike train classification
Achieves higher accuracy with fewer synapses
More robust against statistical variations
Abstract
In this paper, we describe a new neuro-inspired, hardware-friendly readout stage for the liquid state machine (LSM), a popular model for reservoir computing. Compared to the parallel perceptron architecture trained by the p-delta algorithm, which is the state of the art in terms of performance of readout stages, our readout architecture and learning algorithm can attain better performance with significantly less synaptic resources making it attractive for VLSI implementation. Inspired by the nonlinear properties of dendrites in biological neurons, our readout stage incorporates neurons having multiple dendrites with a lumped nonlinearity. The number of synaptic connections on each branch is significantly lower than the total number of connections from the liquid neurons and the learning algorithm tries to find the best 'combination' of input connections on each branch to reduce the…
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