Home Page Icon
Home Page
Table of Contents for
Mastering Predictive Analytics with R Second Edition
Close
Mastering Predictive Analytics with R Second Edition
by Rui Miguel Forte, James D. Miller
Mastering Predictive Analytics with R - Second Edition
Mastering Predictive Analytics with R Second Edition
Table of Contents
Mastering Predictive Analytics with R Second Edition
Credits
About the Authors
About the Reviewer
www.PacktPub.com
eBooks, discount offers, and more
Why subscribe?
Customer Feedback
Preface
What this book covers
What you need for this book
Who this book is for
Conventions
Reader feedback
Customer support
Downloading the example code
Downloading the color images of this book
Errata
Piracy
Questions
1. Gearing Up for Predictive Modeling
Models
Learning from data
The core components of a model
Our first model – k-nearest neighbors
Types of model
Supervised, unsupervised, semi-supervised, and reinforcement learning models
Parametric and nonparametric models
Regression and classification models
Real-time and batch machine learning models
The process of predictive modeling
Defining the model's objective
Collecting the data
Picking a model
Pre-processing the data
Exploratory data analysis
Feature transformations
Encoding categorical features
Missing data
Outliers
Removing problematic features
Feature engineering and dimensionality reduction
Training and assessing the model
Repeating with different models and final model selection
Deploying the model
Summary
2. Tidying Data and Measuring Performance
Getting started
Tidying data
Categorizing data quality
The first step
The next step
The final step
Performance metrics
Assessing regression models
Assessing classification models
Assessing binary classification models
Cross-validation
Learning curves
Plot and ping
Summary
3. Linear Regression
Introduction to linear regression
Assumptions of linear regression
Simple linear regression
Estimating the regression coefficients
Multiple linear regression
Predicting CPU performance
Predicting the price of used cars
Assessing linear regression models
Residual analysis
Significance tests for linear regression
Performance metrics for linear regression
Comparing different regression models
Test set performance
Problems with linear regression
Multicollinearity
Outliers
Feature selection
Regularization
Ridge regression
Least absolute shrinkage and selection operator (lasso)
Implementing regularization in R
Polynomial regression
Summary
4. Generalized Linear Models
Classifying with linear regression
Introduction to logistic regression
Generalized linear models
Interpreting coefficients in logistic regression
Assumptions of logistic regression
Maximum likelihood estimation
Predicting heart disease
Assessing logistic regression models
Model deviance
Test set performance
Regularization with the lasso
Classification metrics
Extensions of the binary logistic classifier
Multinomial logistic regression
Predicting glass type
Ordinal logistic regression
Predicting wine quality
Poisson regression
Negative Binomial regression
Summary
5. Neural Networks
The biological neuron
The artificial neuron
Stochastic gradient descent
Gradient descent and local minima
The perceptron algorithm
Linear separation
The logistic neuron
Multilayer perceptron networks
Training multilayer perceptron networks
The back propagation algorithm
Predicting the energy efficiency of buildings
Evaluating multilayer perceptrons for regression
Predicting glass type revisited
Predicting handwritten digits
Receiver operating characteristic curves
Radial basis function networks
Summary
6. Support Vector Machines
Maximal margin classification
Support vector classification
Inner products
Kernels and support vector machines
Predicting chemical biodegration
Predicting credit scores
Multiclass classification with support vector machines
Summary
7. Tree-Based Methods
The intuition for tree models
Algorithms for training decision trees
Classification and regression trees
CART regression trees
Tree pruning
Missing data
Regression model trees
CART classification trees
C5.0
Predicting class membership on synthetic 2D data
Predicting the authenticity of banknotes
Predicting complex skill learning
Tuning model parameters in CART trees
Variable importance in tree models
Regression model trees in action
Improvements to the M5 model
Summary
8. Dimensionality Reduction
Defining DR
Correlated data analyses
Scatterplots
Causation
The degree of correlation
Reporting on correlation
Principal component analysis
Using R to understand PCA
Independent component analysis
Defining independence
ICA pre-processing
Factor analysis
Explore and confirm
Using R for factor analysis
The output
NNMF
Summary
9. Ensemble Methods
Bagging
Margins and out-of-bag observations
Predicting complex skill learning with bagging
Predicting heart disease with bagging
Limitations of bagging
Boosting
AdaBoost
AdaBoost for binary classification
Predicting atmospheric gamma ray radiation
Predicting complex skill learning with boosting
Limitations of boosting
Random forests
The importance of variables in random forests
XGBoost
Summary
10. Probabilistic Graphical Models
A little graph theory
Bayes' theorem
Conditional independence
Bayesian networks
The Naïve Bayes classifier
Predicting the sentiment of movie reviews
Predicting promoter gene sequences
Predicting letter patterns in English words
Summary
11. Topic Modeling
An overview of topic modeling
Latent Dirichlet Allocation
The Dirichlet distribution
The generative process
Fitting an LDA model
Modeling the topics of online news stories
Model stability
Finding the number of topics
Topic distributions
Word distributions
LDA extensions
Modeling tweet topics
Word clouding
Summary
12. Recommendation Systems
Rating matrix
Measuring user similarity
Collaborative filtering
User-based collaborative filtering
Item-based collaborative filtering
Singular value decomposition
Predicting recommendations for movies and jokes
Loading and pre-processing the data
Exploring the data
Evaluating binary top-N recommendations
Evaluating non-binary top-N recommendations
Evaluating individual predictions
Other approaches to recommendation systems
Summary
13. Scaling Up
Starting the project
Data definition
Experience
Data of scale – big data
Using Excel to gauge your data
Characteristics of big data
Volume
Varieties
Sources and spans
Structure
Statistical noise
Training models at scale
Pain by phase
Specific challenges
Heterogeneity
Scale
Location
Timeliness
Privacy
Collaborations
Reproducibility
A path forward
Opportunities
Bigger data, bigger hardware
Breaking up
Sampling
Aggregation
Dimensional reduction
Alternatives
Chunking
Alternative language integrations
Summary
14. Deep Learning
Machine learning or deep learning
What is deep learning?
An alternative to manual instruction
Growing importance
Deeper data?
Deep learning for IoT
Use cases
Word embedding
Word prediction
Word vectors
Numerical representations of contextual similarities
Netflix learns
Implementations
Deep learning architectures
Artificial neural networks
Recurrent neural networks
Summary
Index
Search in book...
Toggle Font Controls
Playlists
Add To
Create new playlist
Name your new playlist
Playlist description (optional)
Cancel
Create playlist
Sign In
Email address
Password
Forgot Password?
Create account
Login
or
Continue with Facebook
Continue with Google
Sign Up
Full Name
Email address
Confirm Email Address
Password
Login
Create account
or
Continue with Facebook
Continue with Google
Prev
Previous Chapter
Table of Contents
Next
Next Chapter
Mastering Predictive Analytics with R Second Edition
Mastering Predictive Analytics with R Second Edition
Add Highlight
No Comment
..................Content has been hidden....................
You can't read the all page of ebook, please click
here
login for view all page.
Day Mode
Cloud Mode
Night Mode
Reset