pathak-ashutosh/econberta
Robust Extraction of Named Entities in Economics
This project helps economists, researchers, and data analysts extract specific economic entities like organizations, financial instruments, or locations from text documents. It takes raw text data, likely in a standardized format, and outputs structured information highlighting these key economic terms. The main users are professionals who need to systematically identify and categorize economic data within large volumes of text for analysis.
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Use this if you need to precisely identify and categorize specific economic terms and entities from financial reports, news articles, or academic papers to support your economic analysis or research.
Not ideal if you're looking for a general-purpose text analysis tool that doesn't focus specifically on economic terminology or if you don't have text data in a compatible format.
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Last pushed
Jul 03, 2024
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