Follow
Loc Trinh
Title
Cited by
Cited by
Year
Interpretable and trustworthy deepfake detection via dynamic prototypes
L Trinh, M Tsang, S Rambhatla, Y Liu
Proceedings of the IEEE/CVF winter conference on applications of computer …, 2021
962021
Interpretability and fairness evaluation of deep learning models on MIMIC-IV dataset
C Meng, L Trinh, N Xu, J Enouen, Y Liu
Scientific Reports 12 (1), 7166, 2022
862022
A multi-scale time-series dataset with benchmark for machine learning in decarbonized energy grids
X Zheng, N Xu, L Trinh, D Wu, T Huang, S Sivaranjani, Y Liu, L Xie
Scientific Data 9 (1), 359, 2022
28*2022
Survival analysis using surgeon skill metrics and patient factors to predict urinary continence recovery after robot-assisted radical prostatectomy
L Trinh, S Mingo, EB Vanstrum, DI Sanford, R Ma, JH Nguyen, Y Liu, ...
European urology focus 8 (2), 623-630, 2022
272022
An Examination of Fairness of AI Models for Deepfake Detection
L Trinh, Y Liu
Proceedings of the Thirtieth International Joint Conference on Artificial …, 2021
202021
Mimic-if: Interpretability and fairness evaluation of deep learning models on mimic-iv dataset
C Meng, L Trinh, N Xu, Y Liu
arXiv preprint arXiv:2102.06761, 2021
202021
Surgical gestures as a method to quantify surgical performance and predict patient outcomes
R Ma, A Ramaswamy, J Xu, L Trinh, D Kiyasseh, TN Chu, EY Wong, ...
NPJ Digital Medicine 5 (1), 187, 2022
122022
DL4Burn: Burn surgical candidacy prediction using multimodal deep learning
S Rambhatla, S Huang, L Trinh, M Zhang, B Long, M Dong, V Unadkat, ...
AMIA Annual Symposium Proceedings 2021, 1039, 2021
92021
Greedy layerwise training of convolutional neural networks
LQ Trinh
Massachusetts Institute of Technology, 2019
82019
Detecting out-of-context multimodal misinformation with interpretable neural-symbolic model
Y Zhang, L Trinh, D Cao, Z Cui, Y Liu
arXiv preprint arXiv:2304.07633, 2023
72023
Simulating continuous-time human mobility trajectories
N Xu, L Trinh, S Rambhatla, Z Zeng, J Chen, S Assefa, Y Liu
Deep Learning For Simulation Workshop, ICLR, 2021
62021
A synthetic limit order book dataset for benchmarking forecasting algorithms under distributional shift
D Cao, Y El-Laham, L Trinh, S Vyetrenko, Y Liu
NeurIPS 2022 Workshop on Distribution Shifts: Connecting Methods and …, 2022
32022
DSLOB: a synthetic limit order book dataset for benchmarking forecasting algorithms under distributional shift
D Cao, Y El-Laham, L Trinh, S Vyetrenko, Y Liu
arXiv preprint arXiv:2211.11513, 2022
22022
Self-supervised Sim-to-Real Kinematics Reconstruction for Video-Based Assessment of Intraoperative Suturing Skills
L Trinh, T Chu, Z Cui, A Malpani, C Yang, I Dalieh, A Hui, O Gomez, Y Liu, ...
International Conference on Medical Image Computing and Computer-Assisted …, 2023
2023
PD01-01 ENHANCED KINEMATICS AND MULTI-MODALITY LEARNING TO IMPROVE AUTOMATION OF SUTURING SKILLS ASSESSMENT
L Trinh, TN Chu, A Ghazi, JW Davis, BJ Miles, C Lau, A Malpani, Y Liu, ...
The Journal of Urology 209 (Supplement 4), e62, 2023
2023
MP41-01 DISSECTION ASSESSMENT FOR ROBOTIC TECHNIQUE (DART) TO EVALUATE NERVE-SPARE OF ROBOT-ASSISTED RADICAL PROSTATECTOMY
R Ma, A Hui, J Xu, A Desai, M Tzeng, E Cheng, L Trinh, JH Nguyen, ...
The Journal of Urology 207 (Supplement 5), e718, 2022
2022
The system can't perform the operation now. Try again later.
Articles 1–16