
Tao Qi
Doctoral student @ Tsinghua University
transformer
noise
pretrained language model
ranking
federated learning
poisoning attacks
long document modeling
hierarchical transformer
efficient transformer
personalized news recommendation; user interest; hierarchical interest tree
news recommendation; news popularity; user interest
finetuning
news recommendation
recall
differentially privacy
8
presentations
1
number of views
SHORT BIO
Tao Qi is now a Ph.D. student at the Department of Electronic Engineering of Tsinghua University, Beijing, China. His current research interests include news recommendation, user modeling and text mining. He has published several papers on conferences in NLP and data mining fields.
Presentations

Towards the Robustness of Differentially Private Federated Learning
Tao Qi and 2 other authors

Two Birds with One Stone: Unified Model Learning for Both Recall and Ranking in News Recommendation
Chuhan Wu and 3 other authors

NoisyTune: A Little Noise Can Help You Finetune Pretrained Language Models Better
Chuhan Wu and 3 other authors

Uni-FedRec: A Unified Privacy-Preserving News Recommendation Framework for Model Training and Online Serving
Tao Qi and 4 other authors

NewsBERT: Distilling Pre-trained Language Model for Intelligent News Application
Chuhan Wu and 5 other authors

HieRec: Hierarchical User Interest Modeling for Personalized News Recommendation
Tao Qi and 6 other authors

PP-Rec: News Recommendation with Personalized User Interest and Time-aware News Popularity
Tao Qi and 4 other authors

Hi-Transformer: Hierarchical Interactive Transformer for Efficient and Effective Long Document Modeling
Chuhan Wu and 3 other authors