Who's #1? Who's #1?

Who's #1‪?‬

The Science of Rating and Ranking

    • $16.99
    • $16.99

Publisher Description

The mathematics behind today's most widely used rating and ranking methods

A website's ranking on Google can spell the difference between success and failure for a new business. NCAA football ratings determine which schools get to play for the big money in postseason bowl games. Product ratings influence everything from the clothes we wear to the movies we select on Netflix. Ratings and rankings are everywhere, but how exactly do they work? Who's #1? offers an engaging and accessible account of how scientific rating and ranking methods are created and applied to a variety of uses.

Amy Langville and Carl Meyer provide the first comprehensive overview of the mathematical algorithms and methods used to rate and rank sports teams, political candidates, products, Web pages, and more. In a series of interesting asides, Langville and Meyer provide fascinating insights into the ingenious contributions of many of the field's pioneers. They survey and compare the different methods employed today, showing why their strengths and weaknesses depend on the underlying goal, and explaining why and when a given method should be considered. Langville and Meyer also describe what can and can't be expected from the most widely used systems.

The science of rating and ranking touches virtually every facet of our lives, and now you don't need to be an expert to understand how it really works. Who's #1? is the definitive introduction to the subject. It features easy-to-understand examples and interesting trivia and historical facts, and much of the required mathematics is included.

GENRE
Computers & Internet
RELEASED
2012
February 26
LANGUAGE
EN
English
LENGTH
272
Pages
PUBLISHER
Princeton University Press
SELLER
Princeton University Press
SIZE
16.5
MB

More Books Like This

Fundamentals of Machine Learning for Predictive Data Analytics, second edition Fundamentals of Machine Learning for Predictive Data Analytics, second edition
2020
Mathletics Mathletics
2022
Essential Math for Data Science Essential Math for Data Science
2022
Advances in Intelligent Data Analysis XVIII Advances in Intelligent Data Analysis XVIII
2020
Data Analysis with Open Source Tools Data Analysis with Open Source Tools
2010
Introduction to Machine Learning, fourth edition Introduction to Machine Learning, fourth edition
2020

More Books by Amy N. Langville & Carl D. Meyer