citation-management
Citation Management for Scientific Writing
Overview
Citation management is the systematic practice of collecting, organizing, annotating, and inserting bibliographic references in scientific documents. A well-chosen reference manager reduces manual formatting errors, keeps libraries synchronized across devices, and integrates cleanly with word processors and LaTeX. This guide covers tool selection, citation style conventions, DOI and persistent identifier workflows, citation tracking, and common pitfalls that account for a large share of post-publication corrections and retractions related to reference errors.
Key Concepts
1. Reference Manager Capabilities and Tool Comparison
All major reference managers share a common core: they store metadata (author, title, journal, year, DOI), generate formatted citations in a chosen style, and provide a browser extension for one-click capture from publisher pages. The differences lie in collaboration features, cloud storage, word processor plugin support, price, and data portability.
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