This code applies Gradient Boosting on a continuous outcome variable (number of shares). Using a parameter search and two subsequent simulations, the best Parameter combination is approximated. The result outperforms Ordinary Least Square Regression in terms of Mean Absolut Error.
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This code applies Gradient Boosting on a continuous outcome variable (number of shares). Using a parameter search and two subsequent simulations, the best Parameter combination is approximated. The result outperforms Ordinary Least Square Regression in terms of Mean Absolut Error.
jan-meyer-1986/Gradient-Boosting-Social-Media-Messages
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This code applies Gradient Boosting on a continuous outcome variable (number of shares). Using a parameter search and two subsequent simulations, the best Parameter combination is approximated. The result outperforms Ordinary Least Square Regression in terms of Mean Absolut Error.
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