talsan/calltone
Hands-on guide for sentiment analysis in quarterly conference calls
This guide helps investment professionals extract sentiment from quarterly earnings call transcripts. It takes raw text from conference calls, along with market and economic data, to produce actionable insights into investor sentiment and its relationship to financial performance. Anyone involved in investment management or financial analysis would find this useful for understanding market mood.
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Use this if you need a practical, step-by-step approach to perform sentiment analysis on financial conference call data.
Not ideal if you are looking for a plug-and-play solution without understanding the underlying models or data processing steps.
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Last pushed
Jun 02, 2022
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