nilijing/Earnings_Call_Analyzed_By_NLP
Earnings Call Sentiment Analysis. This repository includes my work on extracting the focus area of companies from their earnings calls transcripts.
This project helps financial analysts and investors quickly understand the sentiment and key focus areas from company earnings call transcripts. It takes raw transcript text as input and identifies the overall mood (positive, negative, neutral) and highlights important recurring themes like 'revenue' or 'growth'. This allows you to gain insights into a company's performance and outlook without manually sifting through long documents.
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Use this if you need to rapidly assess the sentiment and primary discussion points within earnings call transcripts for investment research or competitive analysis.
Not ideal if you require deep, nuanced qualitative analysis beyond sentiment and keyword extraction, or if you primarily work with financial reports other than earnings calls.
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Last pushed
Mar 21, 2021
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