Bandit Algorithms for Website Optimization by John Myles White (Paperback, 2012)

Rarewaves Outlet (1364516)
98.1% positive feedback
Price:
AU $42.58
(inclusive of GST)
ApproximatelyS$ 35.78
+ $3.26 shipping
Estimated delivery Thu, 15 May - Tue, 17 Jun
Returns:
No returns, but backed by .
Condition:
Brand New

About this product

Product Information

This book shows you how to run experiments on your website using A/B testing - and then takes you a huge step further by introducing you to bandit algorithms for website optimization. Author John Myles White shows you how this family of algorithms can help you boost website traffic, convert visitors to customers, and increase many other measures of success. This is the first developer-focused book on bandit algorithms, which have previously only been described in research papers. You'll learn about several simple algorithms you can deploy on your own websites to improve your business including the epsilon-greedy algorithm, the UCB algorithm and a contextual bandit algorithm. All of these algorithms are implemented in easy-to-follow Python code and be quickly adapted to your business's specific needs. You'll also learn about a framework for testing and debugging bandit algorithms using Monte Carlo simulations, a technique originally developed by nuclear physicists during World War II. Monte Carlo techniques allow you to decide whether A/B testing will work for your business needs or whether you need to deploy a more sophisticated bandits algorithm.

Product Identifiers

PublisherO'reilly Media, Inc, USA
ISBN-139781449341336
eBay Product ID (ePID)138842295

Product Key Features

SubjectComputer Science
Publication Year2012
Number of Pages80 Pages
Publication NameBandit Algorithms for Website Optimization
LanguageEnglish
TypeTextbook
AuthorJohn Myles White
FormatPaperback

Additional Product Features

Country/Region of ManufactureUnited States
Title_AuthorJohn Myles White

All listings for this product

Buy It Now
New
No ratings or reviews yet
Be the first to write a review