Dongjin Song
Assistant Professor/Computing
Storrs Mansfield
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Scholarly Contributions
49 Scholarly Contributions
Machine learning crop yield models based on meteorological features and comparison with a process-based model
2022
Research Type: Journal Article
CGAN-Cmap: protein contact map prediction using deep generative adversarial neural networks
2022
Research Type: Journal Article
Automatic Depression Screening Using Social Interaction Data on Smartphones
2022
Research Type: Journal Article
Improved inter-residue contact prediction via a hybrid generative model and dynamic loss function
2022
Research Type: Journal Article
TimeAutoAD: Autonomous Anomaly Detection With Self-Supervised Contrastive Loss for Multivariate Time Series
2022
Research Type: Journal Article
Multimodal Sensing and Therapeutic Systems for Wound Healingand Management: A Review
2022
Research Type: Journal Article
Harnessing Deep Neural Networks for Multivariate Time Series Analysis
2022
Research Type: Poster/Presentation
Mini-review: Recent advances in imaging-based rapid antibiotic susceptibility testing
2021
Research Type: Journal Article
Dual stage attention based recurrent neural network for time series prediction
2021
Research Type: Patent and Intellectual Property
Time series retrieval for analyzing and correcting system status
2021
Research Type: Patent and Intellectual Property
Unsupervised anomaly detection, diagnosis, and correction in multivariate time series data
2021
Research Type: Patent and Intellectual Property
Deep Multi-Instance Contrastive Learning with Dual Attention for Anomaly Precursor Detection
2021
Research Type: Poster/Presentation
Dynamic Gaussian Mixture Based Deep Generative Model for Robust Forecasting on Sparse Multivariate Time Series
2020
Research Type: Poster/Presentation
Channel-Temporal Gated Networks for Long Sequence Time-series Forecasting
Research Type: Conference Proceedings
Topology-aware Embedding Memory for Continual Learning on Expanding Networks
Research Type: Conference Proceedings