Statistical language models for information retrieval /

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Bibliographic Details
Author / Creator:Zhai, ChengXiang.
Imprint:San Rafael, Calif. (1537 Fourth Street, San Rafael, CA 94901 USA) : Morgan & Claypool Publishers, c2008.
Description:1 electronic text (xiii, 125 p. : ill.) : digital file.
Language:English
Series:Synthesis lectures on human language technologies ; # 1
Synthesis lectures on human language technologies (Online) ; # 1.
Subject:
Format: E-Resource Book
URL for this record:http://pi.lib.uchicago.edu/1001/cat/bib/8512666
Hidden Bibliographic Details
ISBN:9781598295917 (electronic bk.)
9781598295900 (pbk.)
Notes:Title from PDF t.p. (viewed on December 10, 2008).
Series from website.
Includes bibliographical references (p. 109-125).
Abstract freely available; full-text restricted to subscribers or individual document purchasers.
Also available in print.
System requirements: Adobe Acrobat reader.
Summary:As online information grows dramatically, search engines such as Google are playing a more and more important role in our lives. Critical to all search engines is the problem of designing an effective retrieval model that can rank documents accurately for a given query. This has been a central research problem in information retrieval for several decades. In the past ten years, a new generation of retrieval models, often referred to as statistical language models, has been successfully applied to solve many different information retrieval problems. Compared with the traditional models such as the vector space model, these new models have a more sound statistical foundation and can leverage statistical estimation to optimize retrieval parameters. They can also be more easily adapted to model nontraditional and complex retrieval problems. Empirically, they tend to achieve comparable or better performance than a traditional model with less effort on parameter tuning. This book systematically reviews the large body of literature on applying statistical language models to information retrieval with an emphasis on the underlying principles, empirically effective language models, and language models developed for non-traditional retrieval tasks. All the relevant literature has been synthesized to make it easy for a reader to digest the research progress achieved so far and see the frontier of research in this area. The book also offers practitioners an informative introduction to a set of practically useful language models that can effectively solve a variety of retrieval problems. No prior knowledge about information retrieval is required, but some basic knowledge about probability and statistics would be useful for fully digesting all the details.
Standard no.:10.2200/S00158ED1V01Y200811HLT001