Context-aware Semantics-based Information Retrieval

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Last edited by MARC Bot
September 24, 2020 | History

Context-aware Semantics-based Information Retrieval

Information retrieval can benefit from contextual information to adapt the results to a user’s current situation and personal preferences. In this respect, semantics-based information retrieval is especially challenging because a change in context may require modifications to the knowledge base at hand, such as updates to or reclassifications of individuals. This thesis introduces a novel approach for context-aware semantics-based information retrieval that covers two aspects.
First, context-aware system design requires an identification of relevant contextual information. For information retrieval, the impact of a contextual aspect on the query results determines its relevance. Performing the same query in different contexts often leads to different result rankings. The comparison of such rankings can provide insights into the effects of context changes on the information retrieval results. While numerous methods exist for assessing the result relevance with respect to a query, the question how different two result rankings are has not been tackled yet. The first part of this thesis is therefore concerned with the definition of a cognitively plausible dissimilarity measure for information retrieval results (DIR). It is based solely on the results and thus applicable independent of the retrieval method. The DIR measure supports cognitive engineering tasks, such as work flow and user interface design: Using DIR, developers can identify which contextual aspects strongly influence the outcome of the retrieval task and should therefore be in the user’s focus. DIR’s purpose is to reflect how human users quantify the changes in information retrieval result rankings. Its cognitive plausibility has been evaluated in two human participants tests, which show a strong correlation with user judgments.
Second, the relevant contextual aspects have to be modeled in a way that supports interaction with semantics-based knowledge bases. The Semantic Web is based on nominal data and it is therefore inherently difficult to integrate information from the Sensor Web, which is an increasingly important source of contextual information. The second part of this thesis introduces an approach based on semantic rules that bridge these two worlds to enable context-aware information retrieval from the Semantic Web. It demonstrates how user preferences can be modeled in the Semantic Web Rule Language (SWRL). SWRL’s support for rules with free variables allows for reasoning on the individuals in an ontology – in the running scenario, the current conditions at surf spots in California are compared against a user model and ranked on the basis of their deviation from a user’s preferences. Moreover, novel SWRL built-ins are introduced to dynamically read observations from the Sensor Web during rule execution, and to perform queries by example on individuals’ data type values. This approach allows for a strict separation of static knowledge about individuals in an ontology and any dynamic information through an explicit link to sensors.

Publish Date
Publisher
IOS Press
Pages
150

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Cover of: Context-aware Semantics-based Information Retrieval
Context-aware Semantics-based Information Retrieval
2010, IOS Press
Paperback

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Book Details


Table of Contents

Chapter 1. Introduction and Motivation
Page 1
1.1. Information retrieval as a cornerstone of the information society
Page 1
1.2. The inherent context-dependence of information retrieval
Page 5
1.3. Hypothesis and research questions
Page 8
1.4. Expected results and contribution
Page 11
1.5. Application scenario
Page 13
1.6. Methodology and outline
Page 14
Chapter 2. Related Work and Methodic Background
Page 17
2.1. Semantics and ontology
Page 17
2.2. Information retrieval
Page 20
2.3. Semantic Web
Page 23
2.4. Context
Page 27
2.5. Cognitive engineering
Page 30
2.6. Statistical correlation measures
Page 32
Chapter 3. Identification of Relevant Context Information
Page 35
3.1. Motivation
Page 35
3.2. DIR approach
Page 39
3.3. Formalization
Page 43
Chapter 4. Human Participants Test
Page 49
4.1. Test one: Judgment by order
Page 49
4.2. Test two: Judgment by numbers
Page 54
4.3. Results & discussion
Page 58
Chapter 5. A Context Model for Semantics-based Information Retrieval
Page 61
5.1. Requirements analysis: Characteristics of a context model
Page 61
5.2. User model
Page 68
5.3. Linking to real-world sensors
Page 73
5.4. Discussion
Page 75
Chapter 6. Prototype implementation: The Surf Spot Finder. 79
6.1. Identification of relevant context information
Page 79
6.2. User interface
Page 85
6.3. Server-side implementation
Page 85
Chapter 7. Conclusions and Future Work
Page 91
7.1. Summary and discussion
Page 91
7.2. Application areas
Page 97
7.3. Future work
Page 100
Bibliography.
Page 111

Classifications

Library of Congress
QA76.5913 .K47 2010

The Physical Object

Format
Paperback
Number of pages
150
Dimensions
9.4 x 6.3 x 0.4 inches
Weight
8 ounces

ID Numbers

Open Library
OL24623248M
ISBN 10
1607506351
ISBN 13
9781607506355
LCCN
2010485559

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History

Download catalog record: RDF / JSON
September 24, 2020 Edited by MARC Bot import existing book
March 30, 2011 Edited by Carsten Keßler Edited without comment.
March 30, 2011 Edited by Carsten Keßler Edited without comment.
March 30, 2011 Created by Carsten Keßler Added new book.