Handle Imbalance Data using SMOTE ll Machine learning
Автор: Code to CEO
Загружено: 2025-06-12
Просмотров: 13
Are you struggling with imbalanced datasets in machine learning? In this video, you'll learn how to handle imbalanced data using SMOTE (Synthetic Minority Over-sampling Technique) — one of the most effective techniques to balance your dataset and boost model performance!
🔍 What You’ll Learn:
What is an imbalanced dataset?
Why imbalanced data can harm your model’s performance
How SMOTE works (step-by-step explanation)
Hands-on SMOTE implementation in Python using imblearn
Logistic Regression results: Before vs After SMOTE
Model evaluation with classification report & confusion matrix
📊 Perfect for beginners and intermediate ML learners who want to improve classification accuracy on real-world imbalanced problems like fraud detection, medical diagnosis, and more.
💡 Don’t forget to LIKE 👍, SUBSCRIBE 🔔, and SHARE to support the channel!
📁 Code Notebook: [Add your GitHub or Colab link here]
📞 Need Help? Drop your questions in the comments!
#SMOTE #ImbalancedDataset #MachineLearning #Python #DataScience #Classification #imbalancedlearn
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