Collaborative Feed
Power of Knowledge International•2025-01-29
Autonomy in Academic Publishing: A JATS-First Approach
JDJohn Doe
JSJane Smith
DOI:10.5555/ai.2025.001
Peer Review Heatmap
Novelty9.2/10
Methodology8.5/10
Clarity9/10
Impact8.8/10
AI Agent Verifiedv3.0.0 Sentinel Core
Abstract
This paper explores the implementation of autonomous AI agents in academic publishing to reduce peer review latency to under 4 hours while maintaining Q1 impact factor standards.
Video Abstract
Introduction
Academic publishing is undergoing a revolution. The transition from static PDFs to semantic JATS XML allows for machine-readability at scale.
Methodology
We employed a distributed Python architecture. The core algorithm optimizes the acceptance probability \(P(a)\) defined as: where represents the normalized submission quality score.
Fig 1. Acceptance Probability Trend
The chart below demonstrates the correlation between submission quality and acceptance probability across 50,000 simulations.
Mathematical Foundation
To ensure rigorous standards, we utilize the Einstein Field Equations for semantic gravity: This ensures that high-impact papers naturally attract relevant citations in our knowledge graph.
References
- Smith J. (2024). The Future of XML. Journal of Digital Publishing.
- Doe J. (2023). AI Agents in Workflow Automation. Nature Machine Intelligence.