acadTags/Automated-Social-Annotation
Joint Multi-label Attention Network (JMAN)
This tool helps researchers and content managers automatically organize and categorize documents using 'social tags'. It takes the document's title and full text as input, then suggests relevant tags from a predefined list. This is ideal for anyone dealing with large collections of academic papers, articles, or other textual content that needs consistent, topic-based labeling.
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Use this if you need to automatically assign descriptive topic tags to a large volume of documents, improving their findability and organization.
Not ideal if you need to categorize documents based on highly specialized, niche taxonomies that are not well-represented by existing social tags or knowledge bases.
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12
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Language
Python
License
MIT
Category
Last pushed
Sep 17, 2020
Commits (30d)
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