HaHaIamHarry/Sentiment-Analysis-on-FOMC-meeting-minutes-with-FinBERT
A project using FinBERT to find out if sentiment of FOMC minutes have relationship with future stock returns
This project helps investors and economists understand how the sentiment expressed in Federal Open Market Committee (FOMC) meeting minutes relates to stock market performance. It takes the full text of FOMC minutes as input and produces a sentiment score for each meeting, indicating how positive or negative the language was. This allows financial professionals to see if positive or negative tones in these important documents correlate with S&P 500 movements and future returns.
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Use this if you are a financial analyst or investor looking for an additional signal from central bank communications to inform your market outlook or investment decisions.
Not ideal if you need to predict exact stock price movements or require a comprehensive financial model that incorporates a wide range of economic indicators beyond sentiment.
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Last pushed
Nov 02, 2023
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