Temporal and Spatial Reservoir Ensembling Techniques for Liquid State Machines
Anmol Biswas, Sharvari Ashok Medhe, Raghav Singhal, Udayan Ganguly

TL;DR
This paper introduces two novel ensembling techniques for Liquid State Machines to improve their performance on neuromorphic datasets, achieving state-of-the-art results and addressing scalability issues.
Contribution
The paper proposes Multi-Length Scale Reservoir Ensemble (MuLRE) and Temporal Excitation Partitioned Reservoir Ensemble (TEPRE) methods for enhancing LSM performance.
Findings
Achieved 98.1% accuracy on N-MNIST with a 3600-neuron LSM
Attained 77.8% accuracy on SHD dataset, comparable to BPTT-trained RNNs
Introduced receptive field-based input weights for vision tasks
Abstract
Reservoir computing (RC), is a class of computational methods such as Echo State Networks (ESN) and Liquid State Machines (LSM) describe a generic method to perform pattern recognition and temporal analysis with any non-linear system. This is enabled by Reservoir Computing being a shallow network model with only Input, Reservoir, and Readout layers where input and reservoir weights are not learned (only the readout layer is trained). LSM is a special case of Reservoir computing inspired by the organization of neurons in the brain and generally refers to spike-based Reservoir computing approaches. LSMs have been successfully used to showcase decent performance on some neuromorphic vision and speech datasets but a common problem associated with LSMs is that since the model is more-or-less fixed, the main way to improve the performance is by scaling up the Reservoir size, but that only…
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Taxonomy
TopicsReservoir Engineering and Simulation Methods · Oil and Gas Production Techniques · Hydraulic Fracturing and Reservoir Analysis
