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  1. Long Short-Term Memory Network - an overview - ScienceDirect

    Network LSTM refers to a type of Long Short-Term Memory (LSTM) network architecture that is particularly effective for learning from sequences of data, utilizing specialized structures and gating …

  2. RNN-LSTM: From applications to modeling techniques and beyond ...

    Jun 1, 2024 · LSTM has been specifically designed to address the issue of vanishing gradients, which makes vanilla RNNs unsuitable for learning long-term dependencies (Jaydip and Sidra, 2022). …

  3. A survey on long short-term memory networks for time series prediction

    Jan 1, 2021 · Recurrent neural networks and exceedingly Long short-term memory (LSTM) have been investigated intensively in recent years due to their ability to model and predict nonlinear time-variant …

  4. Fundamentals of Recurrent Neural Network (RNN) and Long Short …

    Mar 1, 2020 · All major open source machine learning frameworks offer efficient, production-ready implementations of a number of RNN and LSTM network architectures. Naturally, some practitioners, …

  5. PI-LSTM: Physics-informed long short-term memory ... - ScienceDirect

    Oct 1, 2023 · The PI-LSTM network, inspired by and compared with existing physics-informed deep learning models (PhyCNN and PhyLSTM), was validated using the numerical simulation results of …

  6. Performance analysis of neural network architectures for time series ...

    LSTM-based hybrid architectures, particularly LSTM-RNN and LSTM-GRU configurations, demonstrate reliable performance across multiple domains and should be considered as primary candidates for …

  7. Bidirectional Long Short-Term Memory Network - ScienceDirect

    Long Short-Term Memory (LSTM) networks [55] are a form of recurrent neural network that overcomes some of the drawbacks of typical recurrent neural networks. Any LSTM unit's cell state and three …

  8. LSTM-ARIMA as a hybrid approach in algorithmic investment strategies

    Jun 23, 2025 · This study makes a significant contribution to the growing field of hybrid financial forecasting models by integrating LSTM and ARIMA into a novel algorithmic investment strategy. …

  9. EA-LSTM: Evolutionary attention-based LSTM for time series prediction

    Oct 1, 2019 · This paper proposes an evolutionary attention-based LSTM model (EA-LSTM), which is trained with competitive random search for time series prediction. During temporal relationship …

  10. Enhancing streamflow forecasting using an LSTM hybrid model with ...

    Consequently, LSTM attracts considerable attention and has been rigorously validated in hydrological forecasting. Chen et al. (2020) compared an artificial neural network (ANN) with LSTM for daily …