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Titre: Long Short-Term Memory Networks for Time Series Forecasting
Auteur(s): MEHENNI, Amel Hakima
MOUCER, Nessrine
Mots-clés: Time Series Forecasting, RNN, LSTM, Single-step, Multi-step, Univariate, Multivariate.
Date de publication: 2022
Editeur: Université Ibn Khaldoun -Tiaret-
Résumé: Time series forecasting occurs when you make scientific predictions based on historical time stamped data. It involves building models through historical analysis and using them to make observations and drive future Strategic decision-making. Their main specificities compared to the most common areas of machine learning are their dependence over time and their seasonal behaviors that can appear in their evolution. In the literature, statistical models are widely used for time series forecasting. However, there are many complex models or approaches that can be very useful in some cases. Generalized Autoregressive Conditional Heteroskedasticity (GARCH), Bayesian models and ARIMA vectors (VAR) are just a few examples. There are also even time series models borrowed from deep learning. Recently, many fields including computer vision have paid a lot of attention to deep learning techniques like recurrent neural networks and long short term memory (LSTM), convolutional neural networks (CNN) or GRU cells can be successfully employed for time series forecasting issues. Through this work, we aim to develop a RNN model with LSTM (Long Short-Term Memory) cell for time series forecasting. The proposed model will be experimented and evaluated on real-world datasets with the known metrics in this field
URI/URL: http://dspace.univ-tiaret.dz:80/handle/123456789/5723
Collection(s) :Master

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