Scientific Paper
Research on scientific papers is rapidly evolving, driven by the need to manage the exponential growth of publications and enhance their accessibility and impact. Current efforts focus on automating tasks like peer review aggregation, classification, and summarization, often employing machine learning models such as transformers (e.g., BERT, T5) and graph neural networks, along with ensemble methods to improve accuracy and efficiency. These advancements aim to streamline the scientific process, improve the quality of publications, and facilitate knowledge discovery and dissemination, ultimately benefiting both researchers and the wider public.
Papers
Mapping the Increasing Use of LLMs in Scientific Papers
Weixin Liang, Yaohui Zhang, Zhengxuan Wu, Haley Lepp, Wenlong Ji, Xuandong Zhao, Hancheng Cao, Sheng Liu, Siyu He, Zhi Huang, Diyi Yang, Christopher Potts, Christopher D Manning, James Y. Zou
AMOR: Ambiguous Authorship Order
Maximilian Weiherer, Andreea Dogaru, Shreya Kapoor, Hannah Schieber, Bernhard Egger