ABSTRACT

Machine Learning for Knowledge Discovery with R contains methodologies and examples for statistical modelling, inference, and prediction of data analysis. It includes many recent supervised and unsupervised machine learning methodologies such as recursive partitioning modelling, regularized regression, support vector machine, neural network, clustering, and causal-effect inference. Additionally, it emphasizes statistical thinking of data analysis, use of statistical graphs for data structure exploration, and result presentations. The book includes many real-world data examples from life-science, finance, etc. to illustrate the applications of the methods described therein.

Key Features:

  • Contains statistical theory for the most recent supervised and unsupervised machine learning methodologies.
  • Emphasizes broad statistical thinking, judgment, graphical methods, and collaboration with subject-matter-experts in analysis, interpretation, and presentations.
  • Written by statistical data analysis practitioner for practitioners.

The book is suitable for upper-level-undergraduate or graduate-level data analysis course. It also serves as a useful desk-reference for data analysts in scientific research or industrial applications.

chapter Chapter 1|8 pages

Statistical Data Analysis

chapter Chapter 2|20 pages

Examining Data Distribution

chapter Chapter 3|30 pages

Regression with Shrinkage

chapter Chapter 4|42 pages

Recursive Partitioning Modeling

chapter Chapter 5|28 pages

Support Vector Machine

chapter 6|26 pages

Cluster Analysis

chapter 7|18 pages

Neural Network

chapter 8|24 pages

Causal Inference and Matching

chapter 9|24 pages

Business and Commercial Data Modeling

chapter 10|14 pages

Analysis of Response Profiles