lin882/WebAnalyticsProject
Python - We analyzed the correlation between mutual fund investment decision and earning call transcripts.
This project helps financial analysts and investment managers understand how the sentiment in company earnings call transcripts might relate to mutual fund investment decisions. It takes raw earnings call transcripts and financial reports as input, processes them to determine sentiment, and then outputs an analysis showing correlations with investment changes. The intended user is someone who makes or researches investment decisions.
No commits in the last 6 months.
Use this if you want to explore the relationship between the tone of earnings calls and specific mutual fund's buy/sell decisions for stocks.
Not ideal if you need a real-time investment decision-making tool or a comprehensive market prediction system.
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Jan 11, 2018
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