Information Retrieval and over one million other books are available for Amazon Kindle. Learn more


or
Sign in to turn on 1-Click ordering.
or
Amazon Prime Free Trial required. Sign up when you check out. Learn More
More Buying Choices
Have one to sell? Sell yours here
Information Retrieval: Uncertainty and Logics: Advanced Models for the Representation and Retrieval of Information (The Information Retrieval Series)
 
 
Start reading Information Retrieval on your Kindle in under a minute.

Don't have a Kindle? Get your Kindle here, or download a FREE Kindle Reading App.

Information Retrieval: Uncertainty and Logics: Advanced Models for the Representation and Retrieval of Information (The Information Retrieval Series) [Hardcover]

Cornelis Joost van Rijsbergen (Editor), Fabio Crestani (Editor), Mounia Lalmas (Editor)
5.0 out of 5 stars  See all reviews (1 customer review)

Price: $285.00 & this item ships for FREE with Super Saver Shipping. Details
  Special Offers Available
o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o
In Stock.
Ships from and sold by Amazon.com. Gift-wrap available.
Only 1 left in stock--order soon (more on the way).
Want it delivered Monday, January 30? Choose One-Day Shipping at checkout. Details
Textbook Student FREE Two-Day Shipping for Students. Learn more

Formats

Amazon Price New from Used from
Kindle Edition $228.00  
Hardcover $285.00  

Book Description

0792383028 978-0792383024 October 31, 1998 1
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.

Special Offers and Product Promotions

  • Buy $50 in qualifying physical textbooks, get $5 in Amazon MP3 Credit. Here's how (restrictions apply)

Product Details

  • Hardcover: 352 pages
  • Publisher: Springer; 1 edition (October 31, 1998)
  • Language: English
  • ISBN-10: 0792383028
  • ISBN-13: 978-0792383024
  • Product Dimensions: 9.1 x 6.2 x 1 inches
  • Shipping Weight: 1.4 pounds (View shipping rates and policies)
  • Average Customer Review: 5.0 out of 5 stars  See all reviews (1 customer review)
  • Amazon Best Sellers Rank: #6,924,210 in Books (See Top 100 in Books)

 

Customer Reviews

1 Review
5 star:
 (1)
4 star:    (0)
3 star:    (0)
2 star:    (0)
1 star:    (0)
 
 
 
 
 
Average Customer Review
5.0 out of 5 stars (1 customer review)
 
 
 
 
Share your thoughts with other customers:
Most Helpful Customer Reviews

5.0 out of 5 stars A complete reference, January 27, 2000
By A Customer
This review is from: Information Retrieval: Uncertainty and Logics: Advanced Models for the Representation and Retrieval of Information (The Information Retrieval Series) (Hardcover)
I think this is the most complete account of research into the design and implementation of logic based IR systems. Basicaly, everybody who is somebody in logical-probabilistic IR has a paper in this book. I think the editors did a very good job.
Help other customers find the most helpful reviews 
Was this review helpful to you? Yes No

Share your thoughts with other customers: Create your own review
 
 
 
Only search this product's reviews



Inside This Book (learn more)
First Sentence:
This paper is to be seen as describing a new theoretical framework for investigating information retrieval. Read the first page
Key Phrases - Statistically Improbable Phrases (SIPs): (learn more)
real retrieval situation, aboutness derivations, left monotonic union, aboutness decision, compositional monotonicity, opinionated probability, given retrieval situation, hyperindex browser, abducible sentences, logical uncertainty principle, preferential structure, conditional information content, document characterisations, fuzzy modal logic, fuzzy assertions, aboutness relation, probabilistic datalog, aboutness language, implication entropy, logical imaging, semantic information theory, external join, predicate retrieve, internet security software, sieve formula
Key Phrases - Capitalized Phrases (CAPs): (learn more)
New York, Computer Science, Journal of Documentation, The Computer Journal, The Netherlands, University of Glasgow, Information Systems, Lecture Notes, Cambridge University Press, Springer Verlag, Journal of Philosophical Logic, Machine Learning, Pos Neg, Annual International, Fondazione Ugo Bordoni, Strict Composition, Basic Research Action, Robertson Sparck-Jones, Singleton Reflexivity, Utrecht University, Basil Blackwell, Clarendon Press, Guarded Left Union, Journal of Logic Programming, Philosophy of Science
New!
Books on Related Topics | Concordance | Text Stats
Browse Sample Pages:
Front Cover | Table of Contents | First Pages | Index | Back Cover | Surprise Me!
Search Inside This Book:




Tag this product

 (What's this?)
Think of a tag as a keyword or label you consider is strongly related to this product.
Tags will help all customers organize and find favorite items.
Your tags: Add your first tag
 

Customer Discussions

This product's forum
Discussion Replies Latest Post
No discussions yet

Ask questions, Share opinions, Gain insight
Start a new discussion
Topic:
First post:
Prompts for sign-in
 


Active discussions in related forums
Search Customer Discussions
Search all Amazon discussions
   
Related forums


Listmania!


Create a Listmania! list

So You'd Like to...


Create a guide


Look for Similar Items by Category


Look for Similar Items by Subject