Ipython script to exemplify the methodology of fuzzy scoring to model exposure
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Updated
Feb 20, 2019 - Jupyter Notebook
Ipython script to exemplify the methodology of fuzzy scoring to model exposure
The project addresses the limitations of traditional risk tolerance questionnaires, which are often subject to errors due to behavioral biases and lack automation. By leveraging machine learning and detailed financial data, the project seeks to provide a more accurate and automated approach to determining an investor's risk tolerance.
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