Learning to Rank for Information Retrieval

Nonfiction, Computers, Database Management, Information Storage & Retrievel, Advanced Computing, Artificial Intelligence, General Computing
Cover of the book Learning to Rank for Information Retrieval by Tie-Yan Liu, Springer Berlin Heidelberg
View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart
Author: Tie-Yan Liu ISBN: 9783642142673
Publisher: Springer Berlin Heidelberg Publication: April 29, 2011
Imprint: Springer Language: English
Author: Tie-Yan Liu
ISBN: 9783642142673
Publisher: Springer Berlin Heidelberg
Publication: April 29, 2011
Imprint: Springer
Language: English

Due to the fast growth of the Web and the difficulties in finding desired information, efficient and effective information retrieval systems have become more important than ever, and the search engine has become an essential tool for many people.

The ranker, a central component in every search engine, is responsible for the matching between processed queries and indexed documents. Because of its central role, great attention has been paid to the research and development of ranking technologies. In addition, ranking is also pivotal for many other information retrieval applications, such as collaborative filtering, definition ranking, question answering, multimedia retrieval, text summarization, and online advertisement. Leveraging machine learning technologies in the ranking process has led to innovative and more effective ranking models, and eventually to a completely new research area called “learning to rank”.

Liu first gives a comprehensive review of the major approaches to learning to rank. For each approach he presents the basic framework, with example algorithms, and he discusses its advantages and disadvantages. He continues with some recent advances in learning to rank that cannot be simply categorized into the three major approaches – these include relational ranking, query-dependent ranking, transfer ranking, and semisupervised ranking. His presentation is completed by several examples that apply these technologies to solve real information retrieval problems, and by theoretical discussions on guarantees for ranking performance.

This book is written for researchers and graduate students in both information retrieval and machine learning. They will find here the only comprehensive description of the state of the art in a field that has driven the recent advances in search engine development.

View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart

Due to the fast growth of the Web and the difficulties in finding desired information, efficient and effective information retrieval systems have become more important than ever, and the search engine has become an essential tool for many people.

The ranker, a central component in every search engine, is responsible for the matching between processed queries and indexed documents. Because of its central role, great attention has been paid to the research and development of ranking technologies. In addition, ranking is also pivotal for many other information retrieval applications, such as collaborative filtering, definition ranking, question answering, multimedia retrieval, text summarization, and online advertisement. Leveraging machine learning technologies in the ranking process has led to innovative and more effective ranking models, and eventually to a completely new research area called “learning to rank”.

Liu first gives a comprehensive review of the major approaches to learning to rank. For each approach he presents the basic framework, with example algorithms, and he discusses its advantages and disadvantages. He continues with some recent advances in learning to rank that cannot be simply categorized into the three major approaches – these include relational ranking, query-dependent ranking, transfer ranking, and semisupervised ranking. His presentation is completed by several examples that apply these technologies to solve real information retrieval problems, and by theoretical discussions on guarantees for ranking performance.

This book is written for researchers and graduate students in both information retrieval and machine learning. They will find here the only comprehensive description of the state of the art in a field that has driven the recent advances in search engine development.

More books from Springer Berlin Heidelberg

Cover of the book Frühe ästhetische Bildung – mit Kindern künstlerische Wege entdecken by Tie-Yan Liu
Cover of the book Electrogenerated Chemiluminescence by Tie-Yan Liu
Cover of the book International Straits by Tie-Yan Liu
Cover of the book Communication and Popularization of Science and Technology in China by Tie-Yan Liu
Cover of the book Introduction to Microsystem Design by Tie-Yan Liu
Cover of the book CSR und Brand Management by Tie-Yan Liu
Cover of the book Cut & Paste-Management und 99 andere Neuronenstürme aus Daily Dueck by Tie-Yan Liu
Cover of the book Is this Cell a Human Being? by Tie-Yan Liu
Cover of the book Major Aspects of Chinese Religion and Philosophy by Tie-Yan Liu
Cover of the book Endoscopy by Tie-Yan Liu
Cover of the book Membrane Biophysics by Tie-Yan Liu
Cover of the book From the Web to the Grid and Beyond by Tie-Yan Liu
Cover of the book Dermal Tumors: The Basics by Tie-Yan Liu
Cover of the book Scattering Amplitudes in Gauge Theories by Tie-Yan Liu
Cover of the book Percutaneous Penetration Enhancers Drug Penetration Into/Through the Skin by Tie-Yan Liu
We use our own "cookies" and third party cookies to improve services and to see statistical information. By using this website, you agree to our Privacy Policy