Produktbild: Introducing Machine Learning
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Introducing Machine Learning

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Beschreibung

Produktdetails

Einband

Taschenbuch

Erscheinungsdatum

20.02.2020

Verlag

Pearson Education Limited

Seitenzahl

400

Maße (L/B/H)

23,5/19,5/2,2 cm

Gewicht

760 g

Auflage

1. Auflage

Sprache

Englisch

ISBN

978-0-13-556566-7

Beschreibung

Produktdetails

Einband

Taschenbuch

Erscheinungsdatum

20.02.2020

Verlag

Pearson Education Limited

Seitenzahl

400

Maße (L/B/H)

23,5/19,5/2,2 cm

Gewicht

760 g

Auflage

1. Auflage

Sprache

Englisch

ISBN

978-0-13-556566-7

Herstelleradresse

Pearson
St.-Martin-Straße 82
81541 München
DE

Email: [email protected]

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  • Produktbild: Introducing Machine Learning
  • Introduction

    Part I Laying the Groundwork of Machine Learning

    Chapter 1 How Humans Learn

    The Journey Toward Thinking Machines

    The Dawn of Mechanical Reasoning

    Godel’s Incompleteness Theorems

    Formalization of Computing Machines

    Toward the Formalization of Human Thought

    The Birth of Artificial Intelligence as a Discipline

    The Biology of Learning

    What Is Intelligent Software, Anyway?

    How Neurons Work

    The Carrot-and-Stick Approach

    Adaptability to Changes

    Artificial Forms of Intelligence

    Primordial Intelligence

    Expert Systems

    Autonomous Systems

    Artificial Forms of Sentiment

    Summary

    Chapter 2 Intelligent Software

    Applied Artificial Intelligence

    Evolution of Software Intelligence

    Expert Systems

    General Artificial Intelligence

    Unsupervised Learning

    Supervised Learning

    Summary

    Chapter 3 Mapping Problems and Algorithms

    Fundamental Problems

    Classifying Objects

    Predicting Results

    Grouping Objects

    More Complex Problems

    Image Classification

    Object Detection

    Text Analytics

    Automated Machine Learning

    Aspects of an AutoML Platform

    The AutoML Model Builder in Action

    Summary

    Chapter 4 General Steps for a Machine Learning Solution

    Data Collection

    Data-Driven Culture in the Organization

    Storage Options

    Data Preparation

    Improving Data Quality

    Cleaning Data

    Feature Engineering

    Finalizing the Training Dataset

    Model Selection and Training

    The Algorithm Cheat Sheet

    The Case for Neural Networks

    Evaluation of the Model Performance

    Deployment of the Model

    Choosing the Appropriate Hosting Platform

    Exposing an API

    Summary

    Chapter 5 The Data Factor

    Data Quality

    Data Validity

    Data Collection

    Data Integrity

    Completeness

    Uniqueness

    Timeliness

    Accuracy

    Consistency

    What’s a Data Scientist, Anyway?

    The Data Scientist at Work

    The Data Scientist Tool Chest

    Data Scientists and Software Developers

    Summary

    Part II Machine Learning In .NET

    Chapter 6 The .NET Way

    Why (Not) Python?

    Why Is Python So Popular in Machine Learning?

    Taxonomy of Python Machine Learning Libraries

    End-to-End Solutions on Top of Python Models

    Introducing ML.NET

    Creating and Consuming Models in ML.NET

    Elements of the Learning Context

    Summary

    Chapter 7 Implementing the ML.NET Pipeline

    The Data to Start From

    Exploring the Dataset

    Applying Common Data Transformations

    Considerations on the Dataset

    The Training Step

    Picking an Algorithm

    Measuring the Actual Value of an Algorithm

    Planning the Testing Phase

    A Look at the Metrics

    Price Prediction from Within a Client Application

    Getting the Model File

    Setting Up the ASP.NET Application

    Making a Taxi Fare Prediction

    Devising an Adequate User Interface

    Questioning Data and Approach to the Problem

    Summary

    Chapter 8 ML.NET Tasks and Algorithms

    The Overall ML.NET Architecture

    Involved Types and Interfaces

    Data Representation

    Supported Catalogs

    Classification Tasks

    Binary Classification

    Multiclass Classification

    Clustering Tasks

    Preparing Data for Work

    Training the Model

    Evaluating the Model

    Transfer Learning

    Steps for Building an Image Classifier

    Applying Necessary Data Transformations

    Composing and Training the Model

    Margin Notes on Transfer Learning

    Summary

    Part III Fundamentals of Shallow Learning

    Chapter 9 Math Foundations of Machine Learning

    Under the Umbrella of Statistics

    The Mean in Statistics

    The Mode in Statistics

    The Median in Statistics

    Bias and Variance

    The Variance in Statistics

    The Bias in Statistics

    Data Representation

    Five-number Summary

    Histograms

    Scatter Plots

    Scatter Plot Matrices

    Plotting at the Appropriate Scale

    Summary

    Chapter 10 Metrics of Machine Learning

    Statistics vs. Machine Learning

    The Ultimate Goal of Machine Learning

    From Statistical Models to Machine Learning Models

    Evaluation of a Machine Learning Model

    From Dataset to Predictions

    Measuring the Precision of a Model

    Preparing Data for Processing

    Scaling

    Standardization

    Normalization

    Summary

    Chapter 11 How to Make Simple Predictions: Linear Regression

    The Problem

    Guessing Results Guided by Data

    Making Hypotheses About the Relationship

    The Linear Algorithm

    The General Idea

    Identifying the Cost Function

    The Ordinary Least Square Algorithm

    The Gradient Descent Algorithm

    How Good Is the Algorithm?

    Improving the Solution

    The Polynomial Route

    Regularization

    Summary

    Chapter 12 How to Make Complex Predictions and Decisions: Trees

    The Problem

    What’s a Tree, Anyway?

    Trees in Machine Learning

    A Sample Tree-Based Algorithm

    Design Principles for Tree-Based Algorithms

    Decision Trees versus Expert Systems

    Flavors of Tree Algorithms

    Classification Trees

    How the CART Algorithm Works

    How the ID3 Algorithm Works

    Regression Trees

    How the Algorithm Works

    Tree Pruning

    Summary

    Chapter 13 How to Make Better Decisions: Ensemble Methods

    The Problem

    The Bagging Technique

    Random Forest Algorithms

    Steps of the Algorithms

    Pros and Cons

    The Boosting Technique

    The Power of Boosting

    Gradient Boosting

    Pros and Cons

    Summary

    Chapter 14 Probabilistic Methods: Naïve Bayes

    Quick Introduction to Bayesian Statistics

    Introducing Bayesian Probability

    Some Preliminary Notation

    Bayes’ Theorem

    A Practical Code Review Example

    Applying Bayesian Statistics to Classification

    Initial Formulation of the Problem

    A Simplified (Yet Effective) Formulation

    Practical Aspects of Bayesian Classifiers

    Naïve Bayes Classifiers

    The General Algorithm

    Multinomial Naïve Bayes

    Bernoulli Naïve Bayes

    Gaussian Naïve Bayes

    Naïve Bayes Regression

    Foundation of Bayesian Linear Regression

    Applications of Bayesian Linear Regression

    Summary

    Chapter 15 How to Group Data: Classification and Clustering

    A Basic Approach to Supervised Classification

    The K-Nearest Neighbors Algorithm

    Steps of the Algorithm

    Business Scenarios

    Support Vector Machine

    Overview of the Algorithm

    A Quick Mathematical Refresher

    Steps of the Algorithm

    Unsupervised Clustering

    A Business Case: Reducing the Dataset

    The K-Means Algorithm

    The K-Modes Algorithm

    The DBSCAN Algorithm

    Summary

    Part IV Fundamentals of Deep Learning

    Chapter 16 Feed-Forward Neural Networks

    A Brief History of Neural Networks

    The McCulloch-Pitt Neuron

    Feed-Forward Networks

    More Sophisticated Networks

    Types of Artificial Neurons

    The Perceptron Neuron

    The Logistic Neuron

    Training a Neural Network

    The Overall Learning Strategy

    The Backpropagation Algorithm

    Summary

    Chapter 17 Design of a Neural Network

    Aspects of a Neural Network

    Activation Functions

    Hidden Layers

    The Output Layer

    Building a Neural Network

    Available Frameworks

    Your First Neural Network in Keras

    Neural Networks versus Other Algorithms

    Summary

    Chapter 18 Other Types of Neural Networks

    Common Issues of Feed-Forward Neural Networks

    Recurrent Neural Networks

    Anatomy of a Stateful Neural Network

    LSTM Neural Networks

    Convolutional Neural Networks

    Image Classification and Recognition

    The Convolutional Layer

    The Pooling Layer

    The Fully Connected Layer

    Further Neural Network Developments

    Generative Adversarial Neural Networks

    Auto-Encoders

    Summary

    Chapter 19 Sentiment Analysis: An End-to-End Solution

    Preparing Data for Training

    Formalizing the Problem

    Getting the Data.

    Manipulating the Data

    Considerations on the Intermediate Format

    Training the Model

    Choosing the Ecosystem

    Building a Dictionary of Words

    Choosing the Trainer

    Other Aspects of the Network

    The Client Application

    Getting Input for the Model

    Getting the Prediction from the Model

    Turning the Response into Usable Information

    Summary

    Part V Final Thoughts

    Chapter 20 AI Cloud Services for the Real World

    Azure Cognitive Services

    Azure Machine Learning Studio

    Azure Machine Learning Service

    Data Science Virtual Machines

    On-Premises Services

    SQL Server Machine Learning Services

    Machine Learning Server

    Microsoft Data Processing Services

    Azure Data Lake

    Azure Databricks

    Azure HDInsight

    .NET for Apache Spark

    Azure Data Share

    Azure Data Factory

    Summary

    Chapter 21 The Business Perception of AI

    Perception of AI in the Industry

    Realizing the Potential

    What Artificial Intelligence Can Do for You

    Challenges Around the Corner

    End-to-End Solutions

    Let’s Just Call It Consulting

    The Borderline Between Software and Data Science

    Agile AI

    Summary

    9780135565667 TOC 12/19/2019