Logistic Regression is one of the most important supervised machine learning algorithms used for classification problems. In this video, you will learn how to build a Logistic Regression model using Python and Scikit-Learn with a real dataset.
We cover:
✔ What is Logistic Regression in Machine Learning
✔ Logistic Regression vs Linear Regression
✔ Train-Test Split in Scikit-Learn
✔ LogisticRegression class parameters (solver, C, regularization)
✔ Training and evaluating the model
✔ Accuracy calculation
✔ Prediction on new data
✔ Logistic Regression cost function (Negative Log-Likelihood)
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