malares/STeM-Scientifc-Paper-Mining-Tool
STeM is a text mining tool to help scientists and researchers evaluate new papers in their area of interest. The program was born out of a desire to easily analyze scientific papers and to help scientists or researchers to decide whether the paper is interesting or not.
This tool helps scientists and researchers efficiently evaluate new academic papers. You feed it a collection of PDF papers and a few keywords describing your research interest. It then analyzes the papers and tells you which ones are most relevant, helping you quickly decide what to read in depth. It's designed for anyone in academia or research who needs to stay current with literature.
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Use this if you need to quickly sort through a large number of scientific papers to find the most relevant ones for your research topic.
Not ideal if you prefer to manually review every paper or if your research area lacks clearly defined keywords.
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GPL-3.0
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Last pushed
Mar 22, 2018
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