Long Short Term Memory
Long Short-Term Memory (LSTM) networks are a type of recurrent neural network designed to process sequential data by learning long-term dependencies, enabling accurate predictions and classifications in various applications. Current research focuses on enhancing LSTM architectures, such as incorporating convolutional layers, attention mechanisms, and hybrid models combining LSTMs with other deep learning techniques like transformers or graph neural networks, to improve efficiency and accuracy. This work is significant because LSTMs are proving highly effective across diverse fields, from financial forecasting and environmental monitoring to medical image analysis and activity recognition, offering powerful tools for analyzing complex temporal data.
Papers
Smartphone-based Eye Tracking System using Edge Intelligence and Model Optimisation
Nishan Gunawardena, Gough Yumu Lui, Jeewani Anupama Ginige, Bahman Javadi
Deep Analysis of Time Series Data for Smart Grid Startup Strategies: A Transformer-LSTM-PSO Model Approach
Zecheng Zhang
Recording Brain Activity While Listening to Music Using Wearable EEG Devices Combined with Bidirectional Long Short-Term Memory Networks
Jingyi Wang, Zhiqun Wang, Guiran Liu
Advances in Land Surface Model-based Forecasting: A comparative study of LSTM, Gradient Boosting, and Feedforward Neural Network Models as prognostic state emulators
Marieke Wesselkamp, Matthew Chantry, Ewan Pinnington, Margarita Choulga, Souhail Boussetta, Maria Kalweit, Joschka Boedecker, Carsten F. Dormann, Florian Pappenberger, Gianpaolo Balsamo
Predicting Stock Prices with FinBERT-LSTM: Integrating News Sentiment Analysis
Wenjun Gu, Yihao Zhong, Shizun Li, Changsong Wei, Liting Dong, Zhuoyue Wang, Chao Yan
Novel Approach for Predicting the Air Quality Index of Megacities through Attention-Enhanced Deep Multitask Spatiotemporal Learning
Harun Khan, Joseph Tso, Nathan Nguyen, Nivaan Kaushal, Ansh Malhotra, Nayel Rehman
Classification of Heart Sounds Using Multi-Branch Deep Convolutional Network and LSTM-CNN
Seyed Amir Latifi, Hassan Ghassemian, Maryam Imani