A Generative Theory of Relevance

A modern information retrieval system must have the capability to find, organize and present very different manifestations of information – such as text, pictures, videos or database records – any of which may be of relevance to the user. However, the concept of relevance, while seemingly intuitive,...

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Main Author: Lavrenko, Victor
Format: Book
Language:English
Published: Springer 2017
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Online Access:http://repository.vnu.edu.vn/handle/VNU_123/29284
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Institution: Vietnam National University, Hanoi
Language: English
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spelling oai:112.137.131.14:VNU_123-292842020-10-14T02:50:20Z A Generative Theory of Relevance Lavrenko, Victor Computer Science Database Management 025.0425 A modern information retrieval system must have the capability to find, organize and present very different manifestations of information – such as text, pictures, videos or database records – any of which may be of relevance to the user. However, the concept of relevance, while seemingly intuitive, is actually hard to define, and it's even harder to model in a formal way. Lavrenko does not attempt to bring forth a new definition of relevance, nor provide arguments as to why any particular definition might be theoretically superior or more complete. Instead, he takes a widely accepted, albeit somewhat conservative definition, makes several assumptions, and from them develops a new probabilistic model that explicitly captures that notion of relevance. With this book, he makes two major contributions to the field of information retrieval: first, a new way to look at topical relevance, complementing the two dominant models, i.e., the classical probabilistic model and the language modeling approach, and which explicitly combines documents, queries, and relevance in a single formalism; second, a new method for modeling exchangeable sequences of discrete random variables which does not make any structural assumptions about the data and which can also handle rare events. Thus his book is of major interest to researchers and graduate students in information retrieval who specialize in relevance modeling, ranking algorithms, and language modeling. 2017-04-17T02:18:41Z 2017-04-17T02:18:41Z 2009 Book 978-3-540-89363-9 http://repository.vnu.edu.vn/handle/VNU_123/29284 en © 2009 Springer-Verlag Berlin Heidelberg 211 p. application/pdf Springer
institution Vietnam National University, Hanoi
building VNU Library & Information Center
continent Asia
country Vietnam
Vietnam
content_provider VNU Library and Information Center
collection VNU Digital Repository
language English
topic Computer Science
Database Management
025.0425
spellingShingle Computer Science
Database Management
025.0425
Lavrenko, Victor
A Generative Theory of Relevance
description A modern information retrieval system must have the capability to find, organize and present very different manifestations of information – such as text, pictures, videos or database records – any of which may be of relevance to the user. However, the concept of relevance, while seemingly intuitive, is actually hard to define, and it's even harder to model in a formal way. Lavrenko does not attempt to bring forth a new definition of relevance, nor provide arguments as to why any particular definition might be theoretically superior or more complete. Instead, he takes a widely accepted, albeit somewhat conservative definition, makes several assumptions, and from them develops a new probabilistic model that explicitly captures that notion of relevance. With this book, he makes two major contributions to the field of information retrieval: first, a new way to look at topical relevance, complementing the two dominant models, i.e., the classical probabilistic model and the language modeling approach, and which explicitly combines documents, queries, and relevance in a single formalism; second, a new method for modeling exchangeable sequences of discrete random variables which does not make any structural assumptions about the data and which can also handle rare events. Thus his book is of major interest to researchers and graduate students in information retrieval who specialize in relevance modeling, ranking algorithms, and language modeling.
format Book
author Lavrenko, Victor
author_facet Lavrenko, Victor
author_sort Lavrenko, Victor
title A Generative Theory of Relevance
title_short A Generative Theory of Relevance
title_full A Generative Theory of Relevance
title_fullStr A Generative Theory of Relevance
title_full_unstemmed A Generative Theory of Relevance
title_sort generative theory of relevance
publisher Springer
publishDate 2017
url http://repository.vnu.edu.vn/handle/VNU_123/29284
_version_ 1681763327027445760