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Chapter 1: Introduction to Machine Learning

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Page 1: Chapter 1: Introduction to Machine Learning · Dodecagon Hendecagon Heptagon Hexagon Sides 10 12 11 50 Features versus targets 10 20 LSTAT 30 25 5.0 7.5 DIS 10.0 12.5 12.5 15.0 17.5

Chapter 1: Introduction to Machine Learning

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Chapter 2: Making Decisions with Trees

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Chapter 3: Making Decisions with LinearEquations

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Chapter 4: Preparing Your Data

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Chapter 5: Image Processing with NearestNeighbors

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Chapter 6: Classifying Text Using NaiveBayes

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Chapter 7: Neural Networks - Here ComesDeep Learning

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Chapter 8: Ensembles - When One Model IsNot Enough

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Chapter 9: The Y is as Important as the X

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Chapter 10: Imbalanced Learning - Not Even1% Win the Lottery

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Chapter 11: Clustering - Making Sense ofUnlabeled Data

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Chapter 12: Anomaly Detection - FindingOutliers in Data

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Chapter 13: Recommender System - Gettingto Know Their Taste

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