2019
DOI: 10.3389/fnins.2019.00504
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Analysis of Liquid Ensembles for Enhancing the Performance and Accuracy of Liquid State Machines

Abstract: Liquid state machine (LSM), a bio-inspired computing model consisting of the input sparsely connected to a randomly interlinked reservoir (or liquid) of spiking neurons followed by a readout layer, finds utility in a range of applications varying from robot control and sequence generation to action, speech, and image recognition. LSMs stand out among other Recurrent Neural Network (RNN) architectures due to their simplistic structure and lower training complexity. Plethora of recent efforts have been focused t… Show more

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Cited by 42 publications
(39 citation statements)
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“…Therefore, we use insights from linear discriminant analysis (LDA) (Fisher, 1936 ; Fukunaga and Mantock, 1983 ; Hourdakis and Trahanias, 2013 ) to quantify the separation between the class attractors. The between class scatter matrix in the following equation contains information on how far each data point is located from the global mean, in the high dimensional space (Fukunaga and Mantock, 1983 ; Wijesinghe et al, 2019 ). Each data point is a vector that contains all the elements in an attractor matrix.…”
Section: Resultsmentioning
confidence: 99%
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“…Therefore, we use insights from linear discriminant analysis (LDA) (Fisher, 1936 ; Fukunaga and Mantock, 1983 ; Hourdakis and Trahanias, 2013 ) to quantify the separation between the class attractors. The between class scatter matrix in the following equation contains information on how far each data point is located from the global mean, in the high dimensional space (Fukunaga and Mantock, 1983 ; Wijesinghe et al, 2019 ). Each data point is a vector that contains all the elements in an attractor matrix.…”
Section: Resultsmentioning
confidence: 99%
“…In the equation, μ i is the sample mean vector (centroid) of class ω i , P (ω i ) is the probability of class ω i , L is the number of classes, and μ g is the global sample mean vector. The single measure that quantifies the separation is given by the trace of the above matrix (Wijesinghe et al, 2019 ).…”
Section: Resultsmentioning
confidence: 99%
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“…Nevertheless, in a number of cases, for example, for r = 1.65, 1.805, local maxima of classification accuracy arise at the border of strong chaos and the ordered behavior of the logistic mapping. The important role of the chaotic dynamics of the reservoir was highlighted in the studies on ESNs (setting the spectral radius) [29,45], and LSMs (setting separation property) [30]. A detailed study of the influences of the chaos parameters of the logistic mapping on the classification accuracy of the LogNNet neural network can be a topic for future research.…”
Section: Discussionmentioning
confidence: 99%
“…An alternative approach to reduce the number of trained weights is based on physical reservoir computing (RC) [23]. RC uses complex physical dynamic systems (coupled oscillators [24][25][26], memristor crossbar arrays [27], opto-electronic feedback loop [28]), or recurrent neural networks (echo state networks (ESNs) [29] and liquid state machines (LSMs) [30]), as reservoirs with rich dynamics and powerful computing capabilities. The couplings in the reservoir are not trained, but are specified in a special way.…”
Section: Introductionmentioning
confidence: 99%