
Chenyan Xiong
dense retrieval
large language models
zero-shot
pretraining
representation learning
prompting
structured data
few-shot text ranking
synthetic weak supervision
meta-learning to reweight
t5
prompt-based learning
retrieval augmentation
large language model
domain invariance
10
presentations
11
number of views
SHORT BIO
Chenyan Xiong is a researcher in the Information and Data Science group, Microsoft Research. His general research area is in the intersection of deep learning, semantics, and information retrieval. His current research interests include large-scale text understanding, conversational information access, and neural information retrieval.
Presentations

Toolink: Linking Toolkit Creation and Using through Chain-of-Solving on Open-Source Model
Cheng Qian and 3 other authors

Augmenting Zero-Shot Dense Retrievers with Plug-in Mixture-of-Memories | VIDEO
Suyu Ge and 5 other authors

Augmentation-Adapted Retriever Improves Generalization of Language Models as Generic Plug-In
Zichun Yu and 3 other authors

Model-Generated Pretraining Signals Improves Zero-Shot Generalization of Text-to-Text Transformers
Linyuan Gong and 7 other authors

Structure-Aware Language Model Pretraining Improves Dense Retrieval on Structured Data
Xinze Li and 6 other authors

COCO-DR: Combating the Distribution Shift in Zero-Shot Dense Retrieval with Contrastive and Distributionally Robust Learning
Yue Yu and 4 other authors

Zero-Shot Dense Retrieval with Momentum Adversarial Domain Invariant Representations
Ji Xin and 5 other authors

Distantly-Supervised Dense Retrieval Enables Open-Domain Question Answering without Evidence Annotation
Chen Zhao and 3 other authors

Few-Shot Text Ranking with Meta Adapted Synthetic Weak Supervision
Si Sun and 7 other authors

Data Augmentation for Abstractive Query-Focused Multi-Document Summarization
Ramakanth Pasunuru and 6 other authors