Information Retrieval: Uncertainty and Logics PDF
By:Fabio Crestani,Mounia Lalmas,C. J. Van Rijsbergen
Published on 1998-10-31 by Springer Science & Business Media
DOWNLOAD HERE
In recent years, there have been several attempts to define a logic for information retrieval (IR). The aim was to provide a rich and uniform representation of information and its semantics with the goal of improving retrieval effectiveness. The basis of a logical model for IR is the assumption that queries and documents can be represented effectively by logical formulae. To retrieve a document, an IR system has to infer the formula representing the query from the formula representing the document. This logical interpretation of query and document emphasizes that relevance in IR is an inference process. The use of logic to build IR models enables one to obtain models that are more general than earlier well-known IR models. Indeed, some logical models are able to represent within a uniform framework various features of IR systems such as hypermedia links, multimedia data, and user's knowledge. Logic also provides a common approach to the integration of IR systems with logical database systems. Finally, logic makes it possible to reason about an IR model and its properties. This latter possibility is becoming increasingly more important since conventional evaluation methods, although good indicators of the effectiveness of IR systems, often give results which cannot be predicted, or for that matter satisfactorily explained. However, logic by itself cannot fully model IR. The success or the failure of the inference of the query formula from the document formula is not enough to model relevance in IR. It is necessary to take into account the uncertainty inherent in such an inference process. In 1986, Van Rijsbergen proposed the uncertainty logical principle to model relevance as an uncertain inference process. When proposing the principle, Van Rijsbergen was not specific about which logic and which uncertainty theory to use. As a consequence, various logics and uncertainty theories have been proposed and investigated. The choice of an appropriate logic and uncertainty mechanism has been a main research theme in logical IR modeling leading to a number of logical IR models over the years. Information Retrieval: Uncertainty and Logics contains a collection of exciting papers proposing, developing and implementing logical IR models. This book is appropriate for use as a text for a graduate-level course on Information Retrieval or Database Systems, and as a reference for researchers and practitioners in industry.
This Book was ranked at 37 by Google Books for keyword athena medical computer system.
Book ID of Information Retrieval: Uncertainty and Logics's Books is MrzB9AAmcRoC, Book which was written byFabio Crestani,Mounia Lalmas,C. J. Van Rijsbergenhave ETAG "3I/0ZbLeF5o"
Book which was published by Springer Science & Business Media since 1998-10-31 have ISBNs, ISBN 13 Code is 9780792383024 and ISBN 10 Code is 0792383028
Reading Mode in Text Status is false and Reading Mode in Image Status is true
Book which have "323 Pages" is Printed at BOOK under CategoryComputers
Book was written in en
eBook Version Availability Status at PDF is true and in ePub is false
Book Preview
DOWNLOAD HERE
Download Information Retrieval: Uncertainty and Logics PDF Free
Download Information Retrieval: Uncertainty and Logics Book Free
Download Information Retrieval: Uncertainty and Logics Free
Download Information Retrieval: Uncertainty and Logics PDF
Download Information Retrieval: Uncertainty and Logics Book
How to Download Information Retrieval: Uncertainty and Logics Book
How to Download Information Retrieval: Uncertainty and Logics
How to Download Information Retrieval: Uncertainty and Logics pdf
How to Download Information Retrieval: Uncertainty and Logics free
Free Download Information Retrieval: Uncertainty and Logics