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12: Model Building and Regression

  • Page ID
    122643
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    • 12.1: Functions for Model Building and Regression
      This page discusses Python's libraries for regression and model building, highlighting NumPy for basic operations, SciPy for advanced regression analysis, and Scikit-learn as the main machine learning library featuring various regression models and tools for model evaluation and hyperparameter tuning, making it a thorough resource for predictive modeling.
    • 12.2: Linear Regression
      This page covers linear regression methods, including simple and multiple regression, and their applications in prediction and trend analysis using Python libraries like scikit-learn and statsmodels. It outlines the process of generating synthetic data, analyzing advertising data, and comparing modeling approaches between the libraries. Scikit-learn is highlighted for predictive modeling, while statsmodels offers deeper statistical insights.
    • 12.3: Optimization - Parameter Estimation for Nonlinear Functions
      This page covers optimization, focusing on parameter estimation for nonlinear functions. It defines optimization as the process of finding optimal solutions while adhering to constraints and discusses its significance in various engineering fields. The page details the use of Python's scipy.optimize.curve_fit for fitting models, highlighting the need for accurate initial guesses, parameter bounds, and error analysis to evaluate uncertainties.
    • 12.4: Summary
      This page outlines linear regression as a supervised learning method that establishes the relationship between dependent and independent variables through a linear equation. It involves data collection, feature engineering, and model training using techniques like Ordinary Least Squares. Model performance is assessed using metrics such as MAE, MSE, RMSE, and R-squared.


    This page titled 12: Model Building and Regression is shared under a CC BY-SA 4.0 license and was authored, remixed, and/or curated by Carl Greco.