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Lessons from the ‘Noisy Factors’ Study
June 13, 2024, 4:30 p.m. | Ben Lorica
Gradient Flow gradientflow.com
My first job after academia was in quantitative finance, a field that relies heavily on the use of mathematical models and statistical methods to analyze financial markets. One of the most widely used tools in this field is the Fama-French factors, a set of variables developed by Nobel laureate Eugene Fama and Kenneth French toContinue reading "Lessons from the ‘Noisy Factors’ Study"
The post Lessons from the ‘Noisy Factors’ Study appeared first on Gradient Flow.
academia analyze finance financial financial markets french job markets quantitative set statistical study tools variables
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