Get the latest tech news

Mathematics of Data Science


This book is about the mathematical foundations of data science. 1. Introduction 2. Curses, Blessings, and Surprises in High Dimensions 3. Singular Value Decomposition and Principal Component Analysis 4. Linear Regression and Regularization 5. Graphs, Networks, and Clustering 6. Nonlinear Dimension Reduction and Diffusion Maps 7. Linear Dimension Reduction via Random Projections 8. Optimization for Data Science 9. Classification 10. A Mathematical Introduction to Deep Learning 11. Large Sample Limit of Graph Laplacians 12. Community 13. Concentration of Measure and Gaussian Analysis 14. Matrix Concentration Inequalities 15. Compressive Sensing and Sparsity 16. Low-Rank Matrix Recovery

None

Get the Android app

Or read this on Hacker News

Read more on:

Photo of data science

data science

Photo of mathematics

mathematics

Related news:

News photo

Mathematics: Its Content, Methods and Meaning

News photo

AI in mathematics is forcing big questions

News photo

Leiden Declaration on Artificial Intelligence and Mathematics