Search papers, labs, and topics across Lattice.
Peking University, Ministry of Education, Key Laboratory of High Confidence Software Technologies
4
0
6
Dynamic rubrics that evolve with the policy can significantly enhance reinforcement learning performance, even without external supervision.
ScaffoldAgent's utility-guided approach ensures that outlines evolve dynamically, leading to superior long-form report generation and improved factual accuracy.
The $\ell_2$ norm of hidden states serves as a powerful indicator of reasoning intensity in LLMs, enabling new techniques that boost reasoning performance without extra training.
LLMs can reason far better on clinical records when demonstrations are selected using a graph-guided approach that combines patient data with LLM-estimated information gain.