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Metabolic Syndrome Prediction | 4. ML-based Feature Importance #92

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merged 2 commits into from
May 18, 2024

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Arihant-Bhandari
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closes issue #89 Metabolic Syndrome Prediction | 4. ML-based Feature Importance

Worked on Step 4:

  • XGBoost (eXtreme Gradient Boosting model)

  • Random Forest

  • Decision Tree

  • LGBM (Light Gradient Boosting model)

  • CatBoost (Categorical Boosting model)

  • Extra Trees

  • AdaBoost (Adaptive Boosting)

  • Gradient Boosting model

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Great job, @Arihant-Bhandari! 🎉 Thank you for submitting your pull request. Your contribution is valuable and we appreciate your efforts to improve our project.

We will promptly review your changes and offer feedback. Keep up the excellent work! Kindly remember to check our contributing guidelines

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@SrijanShovit SrijanShovit left a comment

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Add graphs as well

@Arihant-Bhandari
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@SrijanShovit hi, i have made changes as requested, pls review. thank you for your time.

@SrijanShovit SrijanShovit merged commit ce3cd25 into SrijanShovit:main May 18, 2024
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@SrijanShovit
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check your discord once @Arihant-Bhandari

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2 participants