Non-Fiction Books:

The Mathematics of Machine Learning

Lectures on Supervised Methods and Beyond
Click to share your rating 0 ratings (0.0/5.0 average) Thanks for your vote!

Format:

Paperback / softback
$114.99 was $137.99
Releases

Pre-order to reserve stock from our first shipment. Your credit card will not be charged until your order is ready to ship.

Available for pre-order now

Buy Now, Pay Later with:

4 payments of $28.75 with Afterpay Learn more

Pre-order Price Guarantee

If you pre-order an item and the price drops before the release date, you'll pay the lowest price. This happens automatically when you pre-order and pay by credit card.

If paying by PayPal, Afterpay, Zip or internet banking, and the price drops after you have paid, you can ask for the difference to be refunded.

If Mighty Ape's price changes before release, you'll pay the lowest price.

Availability

This product will be released on

Delivering to:

It should arrive:

  • 8-15 July using International Courier

Description

This book is an introduction to machine learning, with a strong focus on the mathematics behind the standard algorithms and techniques in the field, aimed at senior undergraduates and early graduate students of Mathematics. There is a focus on well-known supervised machine learning algorithms, detailing the existing theory to provide some theoretical guarantees, featuring intuitive proofs and exposition of the material in a concise and precise manner. A broad set of topics is covered, giving an overview of the field. A summary of the topics covered is: statistical learning theory, approximation theory, linear models, kernel methods, Gaussian processes, deep neural networks, ensemble methods and unsupervised learning techniques, such as clustering and dimensionality reduction. This book is suited for students who are interested in entering the field, by preparing them to master the standard tools in Machine Learning. The reader will be equipped to understand the main theoretical questions of the current research and to engage with the field.

Author Biography:

Dr. Maria Han Veiga, Assistant professor of mathematics, Ohio State University, Ohio, USA Prior to joining Ohio State, she was a postdoctoral fellow at the University of Michigan in Mathematics and Data Science (MIDAS). She obtained her PhD at the University of Zurich. Her research focuses on numerical analysis for hyperbolic partial differential equations and scientific machine learning. Dr. Fran�ois Ged Postdoctoral fellow, University of Vienna, Austria He obtained his PhD in Mathematics at the University of Zurich, Switzerland, after which he was a postdoc fellow at the �cole Polytechnique F�d�rale de Lausanne. His research interests gravitate around the theory of deep learning and reinforcement learning, as well as mathematical population genetics and growth-fragmentation processes.
Release date Australia
July 1st, 2024
Audience
  • General (US: Trade)
Illustrations
26 Illustrations, color; 13 Illustrations, black and white
Pages
270
ISBN-13
9783111288475
Product ID
38596936

Customer previews

Nobody has previewed this product yet. You could be the first!

Write a Preview

Help & options

Filed under...