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| - | * Foreword | + | * [[http://bit.ly/theMLbook-Preface|Preface]] |
| - | - Introduction | + | - [[http://bit.ly/theMLbook-Chapter-1|Introduction]] |
| * What is Machine Learning | * What is Machine Learning | ||
| * Types of Learning | * Types of Learning | ||
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| * How Supervised Learning Works | * How Supervised Learning Works | ||
| * Why the Model Works on New Data | * Why the Model Works on New Data | ||
| - | - Notation and Definitions | + | - [[http://bit.ly/theMLbook-Chapter-2|Notation and Definitions]] |
| * Notation | * Notation | ||
| * Scalars, Vectors, and Sets | * Scalars, Vectors, and Sets | ||
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| * Instance-Based vs Model-Based Learning | * Instance-Based vs Model-Based Learning | ||
| * Shallow vs Deep Learning | * Shallow vs Deep Learning | ||
| - | - Fundamental Algorithms | + | - [[http://bit.ly/theMLbook-Chapter-3|Fundamental Algorithms]] |
| * Linear Regression | * Linear Regression | ||
| * Logistic Regression | * Logistic Regression | ||
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| * Support Vector Machine | * Support Vector Machine | ||
| * k-Nearest Neighbors | * k-Nearest Neighbors | ||
| - | - Anatomy of a Learning Algorithm | + | - [[http://bit.ly/theMLbook-Chapter-4|Anatomy of a Learning Algorithm]] |
| * Building Blocks of a Learning Algorithm | * Building Blocks of a Learning Algorithm | ||
| * Gradient Descent | * Gradient Descent | ||
| * How Machine Learning Engineers Work | * How Machine Learning Engineers Work | ||
| * Learning Algorithms' Particularities | * Learning Algorithms' Particularities | ||
| - | - Basic Practice | + | - [[http://bit.ly/theMLbook-Chapter-5|Basic Practice]] |
| * Feature Engineering | * Feature Engineering | ||
| * One-Hot Encoding | * One-Hot Encoding | ||
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| * Area under the ROC Curve (AUC) | * Area under the ROC Curve (AUC) | ||
| * Hyperparameter Tuning | * Hyperparameter Tuning | ||
| - | - Neural Networks and Deep Learning | + | * Cross-Validation |
| + | - [[http://bit.ly/theMLbook-Chapter-6|Neural Networks and Deep Learning]] | ||
| * Neural Networks | * Neural Networks | ||
| * Multilayer Perceptron Example | * Multilayer Perceptron Example | ||
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| * Convolutional Neural Network | * Convolutional Neural Network | ||
| * Recurrent Neural Network | * Recurrent Neural Network | ||
| - | - Problems and Solutions | + | - [[http://bit.ly/theMLbook-Chapter-7|Problems and Solutions]] |
| * Kernel Regression | * Kernel Regression | ||
| * Multiclass Classification | * Multiclass Classification | ||
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| * One-Shot Learning | * One-Shot Learning | ||
| * Zero-Shot Learning | * Zero-Shot Learning | ||
| - | - Advanced Practice | + | - [[http://bit.ly/theMLbook-Chapter-8|Advanced Practice]] |
| * Handling Imbalanced Datasets | * Handling Imbalanced Datasets | ||
| * Combining Models | * Combining Models | ||
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| * Handling Multiple Outputs | * Handling Multiple Outputs | ||
| * Transfer Learning | * Transfer Learning | ||
| - | - Unsupervised Learning | + | * Algorithmic Efficiency |
| + | - [[http://bit.ly/theMLbook-Chapter09|Unsupervised Learning]] | ||
| * Density Estimation | * Density Estimation | ||
| * Clustering | * Clustering | ||