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1. Introduction2. Understanding Prediction, Classification, & Forecasting in MLPredictionClassificationForecastingSummary:3. The 7 Essential ML Algorithms1. Linear Regression2. Logistic Regression Model3. Decision Trees4. Random Forest5. Support Vector Machine (SVM)6. k-Nearest Neighbors (k-NN)7. ARIMA (AutoRegressive Integrated Moving Average)Summary4. Algorithm 1: Linear RegressionKey Concepts:Advantages:Limitations:Implementation Example:Summary:5. Algorithm 2: Logistic RegressionKey Concepts:Advantages:Limitations:Implementation Example:Summary:6. Algorithm 3: Decision TreesKey Concepts:Advantages:Limitations:Implementation Example:Summary:7. Algorithm 4: Random ForestKey Concepts:Advantages:Limitations:Implementation Example:Summary:8. Algorithm 5: Support Vector Machine (SVM)Key Concepts:Advantages:Limitations:Implementation Example:Summary:9. Algorithm 6: k-Nearest Neighbors (k-NN)Key Concepts:Advantages:Limitations:Implementation Example:Summary:10. Algorithm 7: Time Series Forecasting with ARIMAKey Concepts:Advantages:Limitations:Implementation Example:Summary11. Comparing the AlgorithmsPerformance:When to Use Each Algorithm:Computational Efficiency:Interpretability:Scalability:12. Choosing the Right Algorithm for Your Use CaseUnlock Predictive…
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