Log In
Or create an account -> 
Imperial Library
  • Home
  • About
  • News
  • Upload
  • Forum
  • Help
  • Login/SignUp

Index
Title Page Copyright and Credits
Regression Analysis with R
Packt Upsell
Why subscribe? PacktPub.com
Contributors
About the author About the reviewer Packt is searching for authors like you
Preface
Who this book is for What this book covers To get the most out of this book
Download the example code files Download the color images Conventions used
Get in touch
Reviews
Getting Started with Regression
Going back to the origin of regression Regression in the real world Understanding regression concepts Regression versus correlation Discovering different types of regression The R environment Installing R
Using precompiled binary distribution
Installing on Windows Installing on macOS Installing on Linux
Installation from source code
RStudio R packages for regression
The R stats package The car package The MASS package The caret package The glmnet package The sgd package The BLR package The Lars package
Summary
Basic Concepts – Simple Linear Regression
Association between variables – covariance and correlation Searching linear relationships Least squares regression Creating a linear regression model
Statistical significance test Exploring model results Diagnostic plots
Modeling a perfect linear association Summary
More Than Just One Predictor – MLR
Multiple linear regression concepts Building a multiple linear regression model Multiple linear regression with categorical predictor
Categorical variables Building a model
Gradient Descent and linear regression
Gradient Descent Stochastic Gradient Descent The sgd package Linear regression with SGD
Polynomial regression Summary
When the Response Falls into Two Categories – Logistic Regression
Understanding logistic regression
The logit model
Generalized Linear Model
Simple logistic regression
Multiple logistic regression
Customer satisfaction analysis with the multiple logistic regression Multiple logistic regression with categorical data
Multinomial logistic regression Summary
Data Preparation Using R Tools
Data wrangling
A first look at data Change datatype Removing empty cells Replace incorrect value Missing values            Treatment of NaN values
Finding outliers in data Scale of features
Min–max normalization z score standardization
Discretization in R
Data discretization by binning Data discretization by histogram analysis
Dimensionality reduction
Principal Component Analysis
Summary
Avoiding Overfitting Problems - Achieving Generalization
Understanding overfitting
Overfitting detection – cross-validation
Feature selection
Stepwise regression Regression subset selection
Regularization
Ridge regression Lasso regression ElasticNet regression
Summary
Going Further with Regression Models
Robust linear regression Bayesian linear regression
Basic concepts of probability Bayes' theorem Bayesian model using BAS package
Count data model
Poisson distributions Poisson regression model Modeling the number of warp breaks per loom
Summary
Beyond Linearity – When Curving Is Much Better
Nonlinear least squares Multivariate Adaptive Regression Splines Generalized Additive Model Regression trees Support Vector Regression Summary
Regression Analysis in Practice
Random forest regression with the Boston dataset
Exploratory analysis Multiple linear model fitting Random forest regression model
Classifying breast cancer using logistic regression
Exploratory analysis Model fitting
Regression with neural networks
Exploratory analysis Neural network model
Summary
Other Books You May Enjoy
Leave a review - let other readers know what you think
  • ← Prev
  • Back
  • Next →
  • ← Prev
  • Back
  • Next →

Chief Librarian: Las Zenow <zenow@riseup.net>
Fork the source code from gitlab
.

This is a mirror of the Tor onion service:
http://kx5thpx2olielkihfyo4jgjqfb7zx7wxr3sd4xzt26ochei4m6f7tayd.onion