Multivariate Picture Fuzzy Time Series: New Definitions and a New Forecasting Method Based on Pi-Sigma Artificial Neural Network
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DOI: 10.1007/s10614-021-10202-w
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Keywords
Forecasting; Picture fuzzy clustering; Pi-sigma neural network; Multivariate time series; Particle swarm optimization;All these keywords.
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