All Relations between short term memory and cnn

Publication Sentence Publish Date Extraction Date Species
Hanyun Li, Wenzao Li, Jiacheng Zhao, Peizhen Yu, Yao Huan. A sentiment analysis approach for travel-related Chinese online review content. PeerJ. Computer science. vol 9. 2023-09-14. PMID:37705661. to address the above issues, we introduce a dual-channel algorithm that integrates convolutional neural networks (cnn) and bi-directional long and short-term memory (bilstm) with an attention mechanism (dc-cbla). 2023-09-14 2023-10-07 Not clear
Walaa Othman, Batol Hamoud, Alexey Kashevnik, Nikolay Shilov, Ammar Al. A Machine Learning-Based Correlation Analysis between Driver Behaviour and Vital Signs: Approach and Case Study. Sensors (Basel, Switzerland). vol 23. issue 17. 2023-09-09. PMID:37687842. additionally, new models have been developed using convolutional neural network (cnn) and bidirectional long short-term memory (bilstm) to classify the external events from out-cabin videos, as well as a decision tree classifier to detect the driver's maneuver using accelerometer and gyroscope sensor data. 2023-09-09 2023-10-07 Not clear
Xiashuang Wang, Yinglei Wang, Dunwei Liu, Ying Wang, Zhengjun Wan. Automated recognition of epilepsy from EEG signals using a combining space-time algorithm of CNN-LSTM. Scientific reports. vol 13. issue 1. 2023-09-08. PMID:37684278. in this study, we propose a novel deep learning method that combines a convolution neural network (cnn) with a long short-term memory (lstm) network for multi-class classification including both binary and ternary tasks, using a publicly available benchmark database on epilepsy eegs. 2023-09-08 2023-10-07 human
Yi-Jun Tang, Ke Yan, Xingyi Zhang, Ye Tian, Bin Li. Protein intrinsically disordered region prediction by combining neural architecture search and multi-objective genetic algorithm. BMC biology. vol 21. issue 1. 2023-09-06. PMID:37674132. first, the existing predictors construct network structures based on their own experiences such as convolutional neural network (cnn) which is used to extract the feature of neighboring residues in protein, and long short-term memory (lstm) is used to extract the long-distance dependencies feature of protein residues. 2023-09-06 2023-10-07 Not clear
Manoj Kumar, Anoop Kumar Patel, Mantosh Biswas, S Shithart. Attention-based bidirectional-long short-term memory for abnormal human activity detection. Scientific reports. vol 13. issue 1. 2023-09-02. PMID:37660111. using a convolutional neural network (cnn), a bidirectional long short-term memory (bi-lstm), and an attention mechanism to pay attention to the unique spatiotemporal characteristics of raw video streams, a deep-learning approach has been implemented in the proposed framework to detect anomalous human activity. 2023-09-02 2023-09-07 human
Mengjuan Xu, Xiang Chen, Antong Sun, Xu Zhang, Xun Che. A Novel Event-Driven Spiking Convolutional Neural Network for Electromyography Pattern Recognition. IEEE transactions on bio-medical engineering. vol 70. issue 9. 2023-08-31. PMID:37030849. compared to cnn with the same structure, cnn-long short term memory (cnn-lstm), linear kernel linear discriminant analysis classifier (lda) and spiking multilayer perceptron (spiking mlp), the accuracy of scnn is 50.69%, 33.92%, 32.94% and 9.41% higher in the small sample training experiment, 6.50%, 4.23%, 28.73%, and 2.57% higher in the electrode shifts experiment respectively. 2023-08-31 2023-09-07 human
Kaidi Liu, Xiaohan Xie, Juanting Yan, Sizong Zhang, Hui Zhan. An adsorption isotherm identification method based on CNN-LSTM neural network. Journal of molecular modeling. vol 29. issue 9. 2023-08-31. PMID:37651008. in this paper, we deploy a hybrid of convolutional neural networks (cnn) and long short-term memory (lstm) networks for the identification of adsorption isotherms. 2023-08-31 2023-09-07 Not clear
Li Shang, Zi Zhang, Fujian Tang, Qi Cao, Hong Pan, Zhibin Li. CNN-LSTM Hybrid Model to Promote Signal Processing of Ultrasonic Guided Lamb Waves for Damage Detection in Metallic Pipelines. Sensors (Basel, Switzerland). vol 23. issue 16. 2023-08-26. PMID:37631596. machine learning approaches in recent years, including convolutional neural networks (cnn) and long short-term memory (lstm), have exhibited their advantages to overcome these challenges for the signal processing and data classification of complex systems, thus showing great potential for damage detection in critical oil/gas pipeline structures. 2023-08-26 2023-09-07 Not clear
Jimin Jun, Hong Kook Ki. Informer-Based Temperature Prediction Using Observed and Numerical Weather Prediction Data. Sensors (Basel, Switzerland). vol 23. issue 16. 2023-08-26. PMID:37631584. recently, deep-learning-based temperature prediction models have been proposed, demonstrating successful performances, such as conventional neural network (cnn)-based models, bi-directional long short-term memory (blstm)-based models, and a combination of both neural networks, cnn-blstm. 2023-08-26 2023-09-07 Not clear
Khawla Seddiki, Fŕed Eric Precioso, Melissa Sanabria, Michel Salzet, Isabelle Fournier, Arnaud Droi. Early Diagnosis: End-to-End CNN-LSTM Models for Mass Spectrometry Data Classification. Analytical chemistry. 2023-08-25. PMID:37624777. it is a combination of a convolutional neural network (cnn) and a long short-term memory (lstm) network. 2023-08-25 2023-09-07 Not clear
Lantian Yao, Yuntian Zhang, Wenshuo Li, Chia-Ru Chung, Jiahui Guan, Wenyang Zhang, Ying-Chih Chiang, Tzong-Yi Le. DeepAFP: an effective computational framework for identifying antifungal peptides based on deep learning. Protein science : a publication of the Protein Society. 2023-08-18. PMID:37595093. deepafp fully leverages and mines composition information, evolutionary information, and physicochemical properties of peptides by employing combined kernels from multiple branches of convolutional neural network (cnn) with bi-directional long short-term memory (bilstm) layers. 2023-08-18 2023-10-07 human
Wuyi Yang, Wenlei Chang, Zhongchang Song, Fuqiang Niu, Xianyan Wang, Yu Zhan. Denoising odontocete echolocation clicks using a hybrid model with convolutional neural network and long short-term memory network. The Journal of the Acoustical Society of America. vol 154. issue 2. 2023-08-15. PMID:37581404. in this study, a hybrid model based on the convolutional neural network (cnn) and long short-term memory (lstm) network-called a hybrid cnn-lstm model-was proposed to denoise echolocation clicks. 2023-08-15 2023-09-07 Not clear
Iva Matetić, Ivan Štajduhar, Igor Wolf, Sandi Ljubi. Improving the Efficiency of Fan Coil Units in Hotel Buildings through Deep-Learning-Based Fault Detection. Sensors (Basel, Switzerland). vol 23. issue 15. 2023-08-12. PMID:37571501. we tested three contemporary dl modeling approaches: convolutional neural network (cnn), long short-term memory network (lstm), and a combination of cnn and gated recurrent unit (gru). 2023-08-12 2023-08-16 Not clear
Chaojun Wen, Xiaoqing Lin, Yuxuan Ying, Yunfeng Ma, Hong Yu, Xiaodong Li, Jianhua Ya. Dioxin emission prediction from a full-scale municipal solid waste incinerator: Deep learning model in time-series input. Waste management (New York, N.Y.). vol 170. 2023-08-10. PMID:37562201. then, the dioxin emission prediction performance of the machine learning and deep learning models, including long short-term memory (lstm) and convolutional neural networks (cnn), with normal input and time-series input are compared. 2023-08-10 2023-08-16 Not clear
Mohsen Sadat Shahabi, Ahmad Shalbaf, Reza Rostam. Prediction of response to repetitive transcranial magnetic stimulation for major depressive disorder using hybrid Convolutional recurrent neural networks and raw Electroencephalogram Signal. Cognitive neurodynamics. vol 17. issue 4. 2023-07-31. PMID:37522037. in this work, we proposed a hybrid model created by pre-trained convolutional neural networks (cnn) models and bidirectional long short-term memory (blstm) cells to predict response to rtms treatment from raw eeg signal. 2023-07-31 2023-08-14 Not clear
Rudresh Deepak Shirwaikar, Iram Sarwari, Mehwish Najam, Shama H . Has Machine Learning Enhanced the Diagnosis of Autism Spectrum Disorder? Critical reviews in biomedical engineering. vol 51. issue 1. 2023-07-31. PMID:37522537. diagnosis of autism has recently made substantial use of long short term memory (lstm), convolutional neural network (cnn) and its variants, the random forest (rf) and naive bayes (nb) machine learning techniques. 2023-07-31 2023-08-14 Not clear
Turki Aljrees, Xiaochun Cheng, Mian Muhammad Ahmed, Muhammad Umer, Rizwan Majeed, Khaled Alnowaiser, Nihal Abuzinadah, Imran Ashra. Fake news stance detection using selective features and FakeNET. PloS one. vol 18. issue 7. 2023-07-31. PMID:37523404. these methods are employed with a hybrid neural network architecture of convolutional neural network (cnn) and long short-term memory (lstm) model called fakenet. 2023-07-31 2023-08-14 Not clear
Amir Djenna, Ezedin Barka, Achouak Benchikh, Karima Khadi. Unmasking Cybercrime with Artificial-Intelligence-Driven Cybersecurity Analytics. Sensors (Basel, Switzerland). vol 23. issue 14. 2023-07-29. PMID:37514596. this study provides a new collaborative deep learning approach based on unsupervised long short-term memory (lstm) and supervised convolutional neural network (cnn) models for the early identification and detection of botnet attacks. 2023-07-29 2023-08-14 Not clear
Md Muntasir Zitu, Shijun Zhang, Dwight H Owen, Chienwei Chiang, Lang L. Generalizability of machine learning methods in detecting adverse drug events from clinical narratives in electronic medical records. Frontiers in pharmacology. vol 14. 2023-07-28. PMID:37502211. we applied classical machine learning (support vector machine (svm)), deep learning (convolutional neural network (cnn) and bidirectional long short-term memory (bilstm)), and state-of-the-art transformer-based (bidirectional encoder representations from transformers (bert) and clinicalbert) methods trained and tested in the two different corpora and compared performance among them to detect drug-ade relationships. 2023-07-28 2023-08-14 Not clear
Yanan Lu, Kun L. Multistation collaborative prediction of air pollutants based on the CNN-BiLSTM model. Environmental science and pollution research international. 2023-07-25. PMID:37490250. a hybrid deep learning model consisting of a convolutional neural network (cnn) and bidirectional long short-term memory (bilstm) is proposed to predict pollutant concentrations. 2023-07-25 2023-08-14 Not clear