AI RESEARCH

CRISP: Characterizing Relative Impact of Scholarly Publications

arXiv CS.AI

ArXi:2603.26791v1 Announce Type: cross Assessing a cited paper's impact is typically done by analyzing its citation context in isolation within the citing paper. While this focuses on the most directly relevant text, it prevents relative comparisons across all the works a paper cites. We propose CRISP, which instead jointly ranks all cited papers within a citing paper using large language models (LLMs). To mitigate LLMs' positional bias, we rank each list three times in a randomized order and aggregate the impact labels through majority voting.