Machine Learning Decision Trees: Learn how decision trees split data to make predictive decisions.
Machine Learning - Evaluating Decision Trees Performance: Discover how to assess the accuracy and reliability of decision trees.
Machine Learning Application - Decision Trees: Apply decision tree algorithms to real-world datasets.
Machine Learning Random Forests: Understand how random forests combine multiple decision trees for robust predictions.
Master Machine Learning Hyperparameter Tuning: Learn advanced techniques for optimizing model performance through hyperparameter tuning.
Machine Learning Decision Trees Random Forest: Explore how random forests enhance decision tree performance.
Master Machine Learning - Support Vector Machines (SVM): Learn how SVMs are used for classification by maximizing margin separation.
Master Machine Learning - Kernel Functions in Support Vector Machines (SVM): Understand how kernel functions improve SVM classification of non-linear data.
Machine Learning Application - Support Vector Machines (SVM): Apply SVM algorithms to classify complex datasets.
Machine Learning K-Nearest Neighbor (KNN) Algorithm: Learn how KNN uses neighbors to classify data points.
Machine Learning Preprocessing for KNN Algorithm: Master data preprocessing techniques to improve KNN performance.
Machine Learning Application - KNN Algorithm: Apply the KNN algorithm to solve classification problems.
Machine Learning Gradient Boosting Algorithm: Learn how gradient boosting improves prediction accuracy through iterative training.
Master Hyperparameter Tuning in Machine Learning: Learn to fine-tune model hyperparameters for maximum performance.
Machine Learning Application of Gradient Boosting: Apply gradient boosting to enhance model accuracy in real-world scenarios.
Machine Learning Model Evaluation Metrics: Understand key metrics like accuracy and F1-score for evaluating machine learning models.
Machine Learning ROC Curve and AUC Explained: Learn to interpret ROC curves and AUC for assessing classification models.
Requirements
Anyone can learn this class it is very simple.
Description
Supervised Machine Learning: Mastering Predictive ModelsThis course provides a deep dive into the fundamental concepts and techniques of supervised machine learning. You will learn how to build, train, and evaluate predictive models to solve real-world problems.Introduction to Machine Learning: Explore the principles of machine learning and its applications.Reinforcement Learning: Understand the role of reinforcement learning and its distinction from supervised learning.Introduction to Supervised Learning: Gain insights into how models are trained using labeled data.Model Training and Evaluation: Learn the process of model training, including performance evaluation techniques.Regression Models and Performance OptimizationLinear Regression: Discover how linear regression is used to model continuous outcomes.Evaluating Model Fit: Master techniques to evaluate and refine regression models for better performance.Multiple Linear Regression: Dive into modeling with multiple variables, extending linear regression capabilities.Logistic Regression: Understand classification tasks using logistic regression, with a focus on feature engineering and model interpretation.Advanced Decision-Making AlgorithmsDecision Trees: Learn how decision trees create intuitive, tree-like structures for classification and regression tasks.Evaluating Decision Tree Performance: Explore methods to evaluate decision trees for accuracy and generalization.Random Forests: Understand ensemble learning through random forests and how they improve model robustness.Advanced Techniques and Hyperparameter TuningSupport Vector Machines (SVM): Learn how SVMs optimize classification tasks, including the use of kernel functions for non-linear data.K-Nearest Neighbor (KNN) Algorithm: Explore the KNN algorithm and its preprocessing requirements for optimal performance.Gradient Boosting: Master this powerful ensemble technique that iteratively improves model accuracy.Hyperparameter Tuning: Discover advanced strategies to tune hyperparameters for improved model performance.Model Evaluation and MetricsModel Evaluation Metrics: Grasp key metrics such as accuracy, precision, recall, and F1-score for model evaluation.ROC Curve and AUC Explained: Learn how to use ROC curves and AUC scores to evaluate classification model performance.