trinker/clustext
Easy, fast clustering of texts
This tool helps researchers, analysts, or marketers make sense of large collections of text documents, such as customer feedback, articles, or social media posts. You feed it your documents, and it groups them into meaningful categories, then tells you what key terms define each group. This is for anyone who needs to quickly identify major themes or topics within a large corpus of text.
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Use this if you have many text documents and need to automatically discover and extract the main topics or themes they discuss, without manually reading through everything.
Not ideal if you need to classify documents into pre-defined categories or if you only have a few documents to analyze.
Stars
18
Forks
3
Language
R
License
—
Category
Last pushed
Apr 14, 2017
Commits (30d)
0
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curl "https://pt-edge.onrender.com/api/v1/quality/nlp/trinker/clustext"
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