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Gated Spiking Neural P Systems for Time Series Forecasting

Qian Liu, Lifan Long, Hong Peng, Jun Wang, Qian Yang, Xiaoxiao Song, Agustín Riscos-Núñez, Mario J. Pérez-Jiménez

2021IEEE Transactions on Neural Networks and Learning Systems74 citationsDOI

Abstract

Spiking neural P (SNP) systems are a class of neural-like computing models, abstracted by the mechanism of spiking neurons. This article proposes a new variant of SNP systems, called gated spiking neural P (GSNP) systems, which are composed of gated neurons. Two gated mechanisms are introduced in the nonlinear spiking mechanism of GSNP systems, consisting of a reset gate and a consumption gate. The two gates are used to control the updating of states in neurons. Based on gated neurons, a prediction model for time series is developed, known as the GSNP model. Several benchmark univariate and multivariate time series are used to evaluate the proposed GSNP model and to compare several state-of-the-art prediction models. The comparison results demonstrate the availability and effectiveness of GSNP for time series forecasting.

Topics & Concepts

Computer scienceBenchmark (surveying)Series (stratigraphy)UnivariateTime seriesArtificial neural networkReset (finance)Artificial intelligenceClass (philosophy)Nonlinear systemMultivariate statisticsPattern recognition (psychology)AlgorithmMechanism (biology)Spiking neural networkData miningMachine learningDNA and Biological ComputingAdvanced Memory and Neural ComputingNeural Networks and Reservoir Computing