Jiayi Yuan
13 papers · 2022–2025 · 8 conferences · across top CS/AI conferences
Achievements
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🐝 Cross-Pollinator (10) 🌉 Interdisciplinary Bridge 🧭 Keyword Pioneer 🌍 Conference Polyglot (8) 🌈 Renaissance Researcher (6)
🌍
Conference Polyglot
(8)
🏆
Grand Slam
🗃️
Keyword Collector
(63)
⚡
Prolific Year
(5)
💎
Century Club
(13)
❓
The Questioner
(2)
Conferences
EMNLP (3)
ICML (3)
AAAI (2)
ACL (1)
ICLR (1)
NAACL (1)
NIPS (1)
RSS (1)
Top co-authors
Research topics
Keywords
large language model
(4)
model compression
(3)
backdoor attack
(2)
depth super-resolution
(2)
sim-to-real transfer
(1)
attention mechanism
(1)
reinforcement learning
(1)
depth estimation
(1)
model security
(1)
privacy preservation
(1)
policy learning
(1)
instruction following
(1)
model merging
(1)
semantic similarity
(1)
adversarial defense
(1)
text generation
(1)
feature map
(1)
language model
(1)
low-rank adaptation
(1)
natural language generation
(1)
Papers
Robot Learning with Super-Linear Scaling
RSS 2025
ReasonerRank: Redefining Language Model Evaluation with Ground-Truth-Free Ranking Frameworks
ACL 2025
LoRATK: LoRA Once, Backdoor Everywhere in the Share-and-Play Ecosystem
EMNLP 2025
InvestESG: A multi-agent reinforcement learning benchmark for studying climate investment as a social dilemma
ICLR 2025
DHP Benchmark: Are LLMs Good NLG Evaluators?
NAACL 2025
KV Cache Compression, But What Must We Give in Return? A Comprehensive Benchmark of Long Context Capable Approaches
EMNLP 2024
GNNs Also Deserve Editing, and They Need It More Than Once
ICML 2024
KIVI: A Tuning-Free Asymmetric 2bit Quantization for KV Cache
ICML 2024
Taylor Unswift: Secured Weight Release for Large Language Models via Taylor Expansion
EMNLP 2024
Recurrent Structure Attention Guidance for Depth Super-resolution
AAAI 2023
Structure Flow-Guided Network for Real Depth Super-resolution
AAAI 2023
Setting the Trap: Capturing and Defeating Backdoors in Pretrained Language Models through Honeypots
NIPS 2023
DepthShrinker: A New Compression Paradigm Towards Boosting Real-Hardware Efficiency of Compact Neural Networks
ICML 2022