Autors: Shterev, V. A., Metchkarski, N. S. M., Koparanov, K. A. Title: Time Series Prediction with Neural Networks: a Review Keywords: Forecasting; Long-Short Term Memory; Neural Networks; Time S Abstract: One dimensional time series prediction is a major problem nowadays. These series can describe physical phenomenon, traffic flow, economic transactions, etc. Anomaly detection, congestion control and bandwidth allocation require predictions with minimal error. In this paper a critical overview is provided of time series prediction techniques based on neural networks and their applications. The accent is on papers published last two years about discrete processes including both short term, long term and multi-step ahead forecasts. Many different approaches have been applied such as long-short term echo state network, deep hybrid neural network, intelligent models and so on. New methods for processing, analysis and segmentation of information are discussed. There are a few milestones like algorithms for training, prediction strategy and criteria for early stopping. The performance of different neural network architectures is reviewed also. Many real-world problems have been modelled with References Issue
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Цитирания (Citation/s):
1. Chalongvorachai T., Woraratpanya K., LSCR: Latent Space Coordination Relation for Anomaly Prediction (2023) 2023 15th International Conference on Information Technology and Electrical Engineering, ICITEE 2023, pp. 13 - 18, DOI: 10.1109/ICITEE59582.2023.10317782 - 2023 - в издания, индексирани в Scopus или Web of Science
Вид: постер/презентация в международен форум, публикация в реферирано издание, индексирана в Scopus