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Lesson Description

    Lesson Description
    Fundamentals of Classification in Machine Learning
    • Fundamentals of Classification in Machine Learning
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    Fundamentals of Classification in Machine Learning
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    Summary and Schedule
    1. 01 Introduction
    2. 02 Logistic Regression
    3. 03 Logistic Regression Optimization
    4. 04 Svm
    5. 05 Svm Optimization
    6. 06 Model Evaluation
    7. 07 Neural Networks
    8. 08 Neural Networks Optimization
    9. 09 Random Forest
    10. 10 Random Forest Optimization

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    01 IntroductionIntroduction to Classification


    02 Logistic RegressionLogistic Regression with Breast Cancer Dataset


    03 Logistic Regression OptimizationOptimising a Logistic Regression Classifier


    04 SvmSupport Vector Machine (SVM) with Breast Cancer Dataset


    05 Svm OptimizationOptimising a Support Vector Machine (SVM) Classifier


    06 Model EvaluationModel Evaluation: Comparing Logistic Regression and SVM


    07 Neural NetworksNeural Network (MLPClassifier) with Breast Cancer Dataset


    08 Neural Networks OptimizationOptimising a Neural Network Classifier


    09 Random ForestRandom Forest Classifier with Breast Cancer Dataset


    10 Random Forest OptimizationOptimising a Random Forest Classifier



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