Auto-survey Challenge · The Large Language Model Bible Contribute to LLM-Bible

Auto-survey Challenge

Khuong Thanh Gia Hieu Tau, Lisn, Rachmat Benedictus Kent Tau, Lisn. Junior Conference on Data Science and Engineering 2023

[Paper]    
Prompting Reinforcement Learning Responsible AI Survey Paper Tools

We present a novel platform for evaluating the capability of Large Language Models (LLMs) to autonomously compose and critique survey papers spanning a vast array of disciplines including sciences, humanities, education, and law. Within this framework, AI systems undertake a simulated peer-review mechanism akin to traditional scholarly journals, with human organizers serving in an editorial oversight capacity. Within this framework, we organized a competition for the AutoML conference 2023. Entrants are tasked with presenting stand-alone models adept at authoring articles from designated prompts and subsequently appraising them. Assessment criteria include clarity, reference appropriateness, accountability, and the substantive value of the content. This paper presents the design of the competition, including the implementation baseline submissions and methods of evaluation.

Similar Work