pytextrank - Python implementation of TextRank for text document NLP parsing and summarization

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Python implementation of TextRank, based on the Mihalcea 2004 paper. The results produced by this implementation are intended more for use as feature vectors in machine learning, not as academic paper summaries.

https://github.com/ceteri/pytextrank

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