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
DECODE: Data-driven Energy Consumption Prediction leveraging Historical Data and Environmental Factors in Buildings
Aditya Mishra, Haroon R. Lone, Aayush Mishra
Learning Vehicle Dynamics from Cropped Image Patches for Robot Navigation in Unpaved Outdoor Terrains
Jeong Hyun Lee, Jinhyeok Choi, Simo Ryu, Hyunsik Oh, Suyoung Choi, Jemin Hwangbo
Unveiling Intractable Epileptogenic Brain Networks with Deep Learning Algorithms: A Novel and Comprehensive Framework for Scalable Seizure Prediction with Unimodal Neuroimaging Data in Pediatric Patients
Bliss Singhal, Fnu Pooja
Establishing a real-time traffic alarm in the city of Valencia with Deep Learning
Miguel Folgado, Veronica Sanz, Johannes Hirn, Edgar Lorenzo-Saez, Javier Urchueguia
An LSTM-Based Predictive Monitoring Method for Data with Time-varying Variability
Jiaqi Qiu, Yu Lin, Inez Zwetsloot
Advanced Deep Regression Models for Forecasting Time Series Oil Production
Siavash Hosseini, Thangarajah Akilan
AMDNet23: A combined deep Contour-based Convolutional Neural Network and Long Short Term Memory system to diagnose Age-related Macular Degeneration
Md. Aiyub Ali, Md. Shakhawat Hossain, Md. Kawar Hossain, Subhadra Soumi Sikder, Sharun Akter Khushbu, Mirajul Islam
MASA-TCN: Multi-anchor Space-aware Temporal Convolutional Neural Networks for Continuous and Discrete EEG Emotion Recognition
Yi Ding, Su Zhang, Chuangao Tang, Cuntai Guan