Parallel architecture to accelerate superparamagnetic clustering algorithm
Autor: | Sio Hang Pun, Peng Un Mak, Chang Hao Chen, Baijun Zhang, Tim C. Lei, Pan Ke Wang, Mang I Vai |
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Rok vydání: | 2020 |
Předmět: |
Hardware architecture
Computer science 020208 electrical & electronic engineering Monte Carlo method Parallel algorithm Markov process 02 engineering and technology symbols.namesake Data point Spike sorting 0202 electrical engineering electronic engineering information engineering symbols Electrical and Electronic Engineering Cluster analysis Algorithm |
Zdroj: | Electronics Letters. 56:701-704 |
ISSN: | 1350-911X 0013-5194 |
DOI: | 10.1049/el.2020.0760 |
Popis: | Superparamagnetic clustering (SPC) is an unsupervised classification technique in which clusters are self-organised based on data density and mutual interaction energy. Traditional SPC algorithm uses the Swendsen–Wang Monte Carlo approximation technique to significantly reduce the search space for reasonable clustering. However, Swendsen–Wang approximation is a Markov process which limits the conventional superparamagnetic technique to process data clustering in a sequential manner. Here the authors propose a parallel approach to replace the conventional appropriation to allow the algorithm to perform clustering in parallel. One synthetic and one open-source dataset were used to validate the accuracy of this parallel approach in which comparable clustering results were obtained as compared to the conventional implementation. The parallel method has an increase of clustering speed at least 8.7 times over the conventional approach, and the larger the sample size, the more increase in speed was observed. This can be explained by the higher degree of parallelism utilised for the increased data points. In addition, a hardware architecture was proposed to implement the parallel superparamagnetic algorithm using digital electronic technologies suitable for rapid or real-time neural spike sorting. |
Databáze: | OpenAIRE |
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