CoAuthorAI: A Human in the Loop System For Scientific Book Writing

arXiv cs.CL / 4/23/2026

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Key Points

  • CoAuthorAI is a human-in-the-loop system designed to improve LLM performance on book-length scientific writing by addressing issues like inconsistent structure and unreliable citations.
  • It combines retrieval-augmented generation, expert-designed hierarchical outlines, and automatic reference linking to maintain coherence and citation accuracy.
  • The workflow supports iterative expert refinement at the sentence level, enabling tighter alignment with scientific standards.
  • Evaluation results include up to 98% soft-heading recall across 500 multi-domain review chapters and an 82% satisfaction rate in a human evaluation of 100 articles.
  • A Springer Nature book on rock dynamics was produced using CoAuthorAI alongside Kexin Technology's LUFFA AI model, indicating real-world publication viability.

Abstract

Large language models (LLMs) are increasingly used in scientific writing but struggle with book-length tasks, often producing inconsistent structure and unreliable citations. We introduce CoAuthorAI, a human-in-the-loop writing system that combines retrieval-augmented generation, expert-designed hierarchical outlines, and automatic reference linking. The system allows experts to iteratively refine text at the sentence level, ensuring coherence and accuracy. In evaluations of 500 multi-domain literature review chapters, CoAuthorAI achieved a maximum soft-heading recall of 98%; in a human evaluation of 100 articles, the generated content reached a satisfaction rate of 82%. The book AI for Rock Dynamics generated with CoAuthorAI and Kexin Technology's LUFFA AI model has been published with Springer Nature. These results show that systematic human-AI collaboration can extend LLMs' capabilities from articles to full-length books, enabling faster and more reliable scientific publishing.