SlideShare uma empresa Scribd logo
1 de 22
The Semantic Web:
Status and Prospects
Guus Schreiber
University of Amsterdam
Co-chair W3C Web Ontology Working Group
2
The Evolving Web
Web of
Knowledge
HyperText Markup Language
HyperText Transfer Protocol
Resource Description Framework
eXtensible Markup Language Self-Describing Documents
Foundation of the Current Web
Proof, Logic and
Ontology Languages
Shared terms/terminology
Machine-Machine communication
1990
2000
2010
Berners-Lee, Hendler; Nature, 2001
DOCUMENTS
DATA/PROGRAMS
3
Semantics for the Web:
some challenges
 Machine-processable representation of
semantic information
 Defining semantics in an OPEN environment
• Adding semantics to other people’s semantics
• Ability for everyone to contribute
 Ability to define mappings between semantic
representations
• Semantic representations are context-dependent,
but commonalities can/must be captured
 Creating a critical mass of semantic content
• In the end, this will be the critical success factor
4
W3C’s view on Web Semantics
Semantic Web LayerCake (Berners-Lee, 99;Swartz-Hendler, 2001)
Semantic web languages provide
“external” referents for XML documents
CV
name
education
work
private
< >
< >
< >
< >
< >
< Χς >
< ναµε>
<εδυχατιον>
<ωορκ>
<πριϖατε>
CV
name
education
work
private
< >
< >
< >
< >
< >
< Χς >
< ναµε>
<εδυχατιον>
<ωορκ>
<πριϖατε>
CV
name
education
work
private
< >
< >
< >
< >
< >
< Χς >
< ναµε>
<εδυχατιον>
<ωορκ>
<πριϖατε>
SW languages add mappings
And structure.

ωορκ
ϖατε
εδυχ Χς
ΧςΧς
Χς

CV
name
education
work
private
< >
< >
< >
< >
< >
<  >
< >
< >

<⇐⇑©∨>
CV
name
education
work
private
< >
< >
< >
< >
< >
<  >
< >
< >

<⇐⇑©∨>
CV
name
education
work
private
< >
< >
< >
< >
< >
<  >
< >
< >

<⇐⇑©∨>
CV
name
education
work
private
< >
< >
< >
< >
< >
<  >
<  >
<  >

< ⁄‹›„ >
CV
name
education
work
private
< >
< >
< >
< >
< >
<  >
< >
< >

<⇐ ⇑ © ∨>
6
What is an Ontology?
 In philosophy: theory of what exists in the
world
 In IT: consensual & formal descriptionconsensual & formal description
of shared concepts in a domainof shared concepts in a domain
– Aid to human communication and shared
understanding, by specifying meaning
– Machine-processable (e.g., agents use
ontologies in communication)
 Ontology = key technology inOntology = key technology in
semantic information processingsemantic information processing
– Applications: knowledge management, e-business,
industrial engineering, semantic world-wide web
7
Typical semantic-web use case:
image search
 A person searches for
photos of an “orange ape”
 An image collection of
animal photographs
contains snapshots of
orang-utans.
 The search engine finds
the photos, despite the
fact that the words
“orange” and “ape” do not
appear in annotations
8
Example semantic annotation
9
RDF annotation about
a web resource
chimpanzee
scratching
the head
young
ape08.jpg
active
agent
posture
life stage
Species
ontology
WordNet
ICONCLASS
10
Ontologies describes the concepts
used
great ape
grass landsrain forest
Africa
chimpanzee
geographical
range
subClassOf
typical
habitat
11
Use of semantic markup in
query interfaces
12
13
Annotating with a concept:
term disambiguation
14
W3C’s Semantic Web Activity
 Started in March 2001
• Follow-up of Metadata activity
 RDF Core Working Group
• Revision of RDF and RDF Schema
 Web Ontology Working Group
• Started November 1, 2001
• 50+ members
– HP, IBM, Lucent, Daimler Chrysler, Fujitsu, Intel, Sun, EDS,
Motorola, Nokia, Philips, Unisys, ….
 All proceedings are public
• See http://www.w3.org under “Semantic Web”
15
RDF and RDF Schema
 RDF
• Baseline representation for annotations of web
resources
• Simple triple format
• Already many tools and used in browsers such as
Mozilla
 RDF Schema
• Base-level specification of semantics
• Language constructs include: class, property,
subclass subproperty
• Classes and properties are themselves also
resources: enables annotations about annotations
16
The Web Ontology Language OWL
 OWL adds expressivity to RDF Schema to
enable more powerful semantics:
• cardinality restrictions, local range constraints,
equality of resources, inverse, symmetric and
transitive properties, boolean class combinations,
disjointness and completeness
 OWL Lite: subset of features that is easy to
implement and use
 OWL DL: subset of features supporting
description-logic reasoning (e.g. useful for
ontology construction)
17
OWL documents
Published:
• Requirements document
• OWL Guide (language walkthrough)
• OWL Feature synopsis
• OWL Reference
• OWL Semantics
• OWL Test cases
In preparation:
• UML and XML presentation syntax
18
Moving to the future of the web
Semantic Web LayerCake (Berners-Lee, 99;Swartz-Hendler, 2001)
19
Web services require ontologies
Source: the Web (can’t find it anymore)
20
Use semantics for
service composition
Translate my symptoms from
French and find me a pharmacy
that has the necessary medicine
(then compute how to get there
and print the directions)
Print the directions to a pharmacy
which has a medicine that cures
the symptoms that I will tell you
(in French)
21
Services need web logics
22
Will the Semantic Web succeed?
 One big plus: there is a growing need for
semantic search of information
 Availability of large amounts of semantic
content is essential
• There is a lot of content already out there.
 First applications are likely to be in area of
large virtual collections
• E.g., cultural heritage, medicine
 Web services will not work without ontologies

Mais conteúdo relacionado

Mais procurados

Introduction to the Semantic Web
Introduction to the Semantic WebIntroduction to the Semantic Web
Introduction to the Semantic Web
Tomek Pluskiewicz
 

Mais procurados (20)

The Semantic Web: It's for Real
The Semantic Web: It's for RealThe Semantic Web: It's for Real
The Semantic Web: It's for Real
 
What can linked data do for digital libraries
What can linked data do for digital librariesWhat can linked data do for digital libraries
What can linked data do for digital libraries
 
Linked Open Govt Data - Sem Tech East
Linked Open Govt Data - Sem Tech EastLinked Open Govt Data - Sem Tech East
Linked Open Govt Data - Sem Tech East
 
Introduction to the Semantic Web
Introduction to the Semantic WebIntroduction to the Semantic Web
Introduction to the Semantic Web
 
PragmaticWeb 4.0 - Towards an active and interactive Semantic Media Web
PragmaticWeb 4.0 - Towards an active and interactive Semantic Media WebPragmaticWeb 4.0 - Towards an active and interactive Semantic Media Web
PragmaticWeb 4.0 - Towards an active and interactive Semantic Media Web
 
Intro to the Semantic Web Landscape - 2011
Intro to the Semantic Web Landscape - 2011Intro to the Semantic Web Landscape - 2011
Intro to the Semantic Web Landscape - 2011
 
Towards digitizing scholarly communication
Towards digitizing scholarly communicationTowards digitizing scholarly communication
Towards digitizing scholarly communication
 
Brief State of the Art - Semantic Web technologies for geospatial data - Mode...
Brief State of the Art - Semantic Web technologies for geospatial data - Mode...Brief State of the Art - Semantic Web technologies for geospatial data - Mode...
Brief State of the Art - Semantic Web technologies for geospatial data - Mode...
 
NetIKX Semantic Search Presentation
NetIKX Semantic Search PresentationNetIKX Semantic Search Presentation
NetIKX Semantic Search Presentation
 
Semantic web
Semantic web Semantic web
Semantic web
 
Linking Big Data to Rich Process Descriptions
Linking Big Data to Rich Process DescriptionsLinking Big Data to Rich Process Descriptions
Linking Big Data to Rich Process Descriptions
 
Data Segmenting in Anzo
Data Segmenting in AnzoData Segmenting in Anzo
Data Segmenting in Anzo
 
Cooking up the Semantic Web
Cooking up the Semantic WebCooking up the Semantic Web
Cooking up the Semantic Web
 
Semantics and Web 3.0
Semantics and Web 3.0Semantics and Web 3.0
Semantics and Web 3.0
 
Introduction to the Semantic Web
Introduction to the Semantic WebIntroduction to the Semantic Web
Introduction to the Semantic Web
 
Introduction of Knowledge Graphs
Introduction of Knowledge GraphsIntroduction of Knowledge Graphs
Introduction of Knowledge Graphs
 
Build Narratives, Connect Artifacts: Linked Open Data for Cultural Heritage
Build Narratives, Connect Artifacts: Linked Open Data for Cultural HeritageBuild Narratives, Connect Artifacts: Linked Open Data for Cultural Heritage
Build Narratives, Connect Artifacts: Linked Open Data for Cultural Heritage
 
Interlinking Data and Knowledge in Enterprises, Research and Society with Lin...
Interlinking Data and Knowledge in Enterprises, Research and Society with Lin...Interlinking Data and Knowledge in Enterprises, Research and Society with Lin...
Interlinking Data and Knowledge in Enterprises, Research and Society with Lin...
 
Taking Advantage of Semantic Web
Taking Advantage of Semantic WebTaking Advantage of Semantic Web
Taking Advantage of Semantic Web
 
An Introduction to Semantic Web Technology
An Introduction to Semantic Web TechnologyAn Introduction to Semantic Web Technology
An Introduction to Semantic Web Technology
 

Semelhante a The Semantic Web: status and prospects

Robust Module based data management system
Robust Module based data management systemRobust Module based data management system
Robust Module based data management system
Rahul Roi
 
Toward The Semantic Deep Web
Toward The Semantic Deep WebToward The Semantic Deep Web
Toward The Semantic Deep Web
Samiul Hoque
 
A Comparative Study Ontology Building Tools for Semantic Web Applications
A Comparative Study Ontology Building Tools for Semantic Web Applications A Comparative Study Ontology Building Tools for Semantic Web Applications
A Comparative Study Ontology Building Tools for Semantic Web Applications
dannyijwest
 
A Comparative Study of Ontology building Tools in Semantic Web Applications
A Comparative Study of Ontology building Tools in Semantic Web Applications A Comparative Study of Ontology building Tools in Semantic Web Applications
A Comparative Study of Ontology building Tools in Semantic Web Applications
dannyijwest
 
A Comparative Study Ontology Building Tools for Semantic Web Applications
A Comparative Study Ontology Building Tools for Semantic Web Applications A Comparative Study Ontology Building Tools for Semantic Web Applications
A Comparative Study Ontology Building Tools for Semantic Web Applications
IJwest
 

Semelhante a The Semantic Web: status and prospects (20)

Semantic Web Nature
Semantic Web NatureSemantic Web Nature
Semantic Web Nature
 
Reasoning on the Semantic Web
Reasoning on the Semantic WebReasoning on the Semantic Web
Reasoning on the Semantic Web
 
Development of Semantic Web based Disaster Management System
Development of Semantic Web based Disaster Management SystemDevelopment of Semantic Web based Disaster Management System
Development of Semantic Web based Disaster Management System
 
Robust Module based data management system
Robust Module based data management systemRobust Module based data management system
Robust Module based data management system
 
An Annotation Framework For The Semantic Web
An Annotation Framework For The Semantic WebAn Annotation Framework For The Semantic Web
An Annotation Framework For The Semantic Web
 
A category theoretic model of rdf ontology
A category theoretic model of rdf ontologyA category theoretic model of rdf ontology
A category theoretic model of rdf ontology
 
Semantic Web: Technolgies and Applications for Real-World
Semantic Web: Technolgies and Applications for Real-WorldSemantic Web: Technolgies and Applications for Real-World
Semantic Web: Technolgies and Applications for Real-World
 
Corrib.org - OpenSource and Research
Corrib.org - OpenSource and ResearchCorrib.org - OpenSource and Research
Corrib.org - OpenSource and Research
 
Toward The Semantic Deep Web
Toward The Semantic Deep WebToward The Semantic Deep Web
Toward The Semantic Deep Web
 
Semantic web technology
Semantic web technologySemantic web technology
Semantic web technology
 
unit 1.pptx
unit 1.pptxunit 1.pptx
unit 1.pptx
 
Intelligent expert systems for location planning
Intelligent expert systems for location planningIntelligent expert systems for location planning
Intelligent expert systems for location planning
 
Semantic Annotation: The Mainstay of Semantic Web
Semantic Annotation: The Mainstay of Semantic WebSemantic Annotation: The Mainstay of Semantic Web
Semantic Annotation: The Mainstay of Semantic Web
 
Semantics
SemanticsSemantics
Semantics
 
A Comparative Study Ontology Building Tools for Semantic Web Applications
A Comparative Study Ontology Building Tools for Semantic Web Applications A Comparative Study Ontology Building Tools for Semantic Web Applications
A Comparative Study Ontology Building Tools for Semantic Web Applications
 
A Comparative Study of Ontology building Tools in Semantic Web Applications
A Comparative Study of Ontology building Tools in Semantic Web Applications A Comparative Study of Ontology building Tools in Semantic Web Applications
A Comparative Study of Ontology building Tools in Semantic Web Applications
 
A Comparative Study Ontology Building Tools for Semantic Web Applications
A Comparative Study Ontology Building Tools for Semantic Web Applications A Comparative Study Ontology Building Tools for Semantic Web Applications
A Comparative Study Ontology Building Tools for Semantic Web Applications
 
Semantic web
Semantic webSemantic web
Semantic web
 
G9_Cognition-Knowledge Rep and Reas_H6
G9_Cognition-Knowledge Rep and Reas_H6G9_Cognition-Knowledge Rep and Reas_H6
G9_Cognition-Knowledge Rep and Reas_H6
 
Semantic technologies for the Internet of Things
Semantic technologies for the Internet of Things Semantic technologies for the Internet of Things
Semantic technologies for the Internet of Things
 

Mais de Guus Schreiber

Mais de Guus Schreiber (20)

How the Semantic Web is transforming information access
How the Semantic Web is transforming information accessHow the Semantic Web is transforming information access
How the Semantic Web is transforming information access
 
Semantics and the Humanities: some lessons from my journey 2000-2012
Semantics and the Humanities: some lessons from my journey 2000-2012Semantics and the Humanities: some lessons from my journey 2000-2012
Semantics and the Humanities: some lessons from my journey 2000-2012
 
Ontologies: vehicles for reuse
Ontologies: vehicles for reuseOntologies: vehicles for reuse
Ontologies: vehicles for reuse
 
Linking historical ship records to a newspaper archive
Linking historical ship records to a newspaper archiveLinking historical ship records to a newspaper archive
Linking historical ship records to a newspaper archive
 
CommonKADS project management
CommonKADS project managementCommonKADS project management
CommonKADS project management
 
UML notations used by CommonKADS
UML notations used by CommonKADSUML notations used by CommonKADS
UML notations used by CommonKADS
 
Advanced knowledge modelling
Advanced knowledge modellingAdvanced knowledge modelling
Advanced knowledge modelling
 
CommonKADS design and implementation
CommonKADS design and implementationCommonKADS design and implementation
CommonKADS design and implementation
 
CommonKADS communication model
CommonKADS communication modelCommonKADS communication model
CommonKADS communication model
 
CommonKADS knowledge modelling process
CommonKADS knowledge modelling processCommonKADS knowledge modelling process
CommonKADS knowledge modelling process
 
CommonKADS knowledge model templates
CommonKADS knowledge model templatesCommonKADS knowledge model templates
CommonKADS knowledge model templates
 
CommonKADS knowledge modelling basics
CommonKADS knowledge modelling basicsCommonKADS knowledge modelling basics
CommonKADS knowledge modelling basics
 
CommonKADS knowledge management
CommonKADS knowledge managementCommonKADS knowledge management
CommonKADS knowledge management
 
CommonKADS context models
CommonKADS context modelsCommonKADS context models
CommonKADS context models
 
Introduction
IntroductionIntroduction
Introduction
 
Web Science: the digital heritage case
Web Science: the digital heritage caseWeb Science: the digital heritage case
Web Science: the digital heritage case
 
Principles and pragmatics of a Semantic Culture Web
 Principles and pragmatics of a Semantic Culture Web Principles and pragmatics of a Semantic Culture Web
Principles and pragmatics of a Semantic Culture Web
 
Semantics for visual resources: use cases from e-culture
Semantics for visual resources: use cases from e-cultureSemantics for visual resources: use cases from e-culture
Semantics for visual resources: use cases from e-culture
 
Semantic Web: From Representations to Applications
Semantic Web: From Representations to ApplicationsSemantic Web: From Representations to Applications
Semantic Web: From Representations to Applications
 
Principles for knowledge engineering on the Web
Principles for knowledge engineering on the WebPrinciples for knowledge engineering on the Web
Principles for knowledge engineering on the Web
 

Último

Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
panagenda
 

Último (20)

Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
 
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
 
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024
 
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ..."I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Ransomware_Q4_2023. The report. [EN].pdf
Ransomware_Q4_2023. The report. [EN].pdfRansomware_Q4_2023. The report. [EN].pdf
Ransomware_Q4_2023. The report. [EN].pdf
 
Corporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptxCorporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptx
 
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWEREMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
 
AXA XL - Insurer Innovation Award Americas 2024
AXA XL - Insurer Innovation Award Americas 2024AXA XL - Insurer Innovation Award Americas 2024
AXA XL - Insurer Innovation Award Americas 2024
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
A Beginners Guide to Building a RAG App Using Open Source Milvus
A Beginners Guide to Building a RAG App Using Open Source MilvusA Beginners Guide to Building a RAG App Using Open Source Milvus
A Beginners Guide to Building a RAG App Using Open Source Milvus
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsMS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
Apidays Singapore 2024 - Modernizing Securities Finance by Madhu Subbu
Apidays Singapore 2024 - Modernizing Securities Finance by Madhu SubbuApidays Singapore 2024 - Modernizing Securities Finance by Madhu Subbu
Apidays Singapore 2024 - Modernizing Securities Finance by Madhu Subbu
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
 

The Semantic Web: status and prospects

  • 1. The Semantic Web: Status and Prospects Guus Schreiber University of Amsterdam Co-chair W3C Web Ontology Working Group
  • 2. 2 The Evolving Web Web of Knowledge HyperText Markup Language HyperText Transfer Protocol Resource Description Framework eXtensible Markup Language Self-Describing Documents Foundation of the Current Web Proof, Logic and Ontology Languages Shared terms/terminology Machine-Machine communication 1990 2000 2010 Berners-Lee, Hendler; Nature, 2001 DOCUMENTS DATA/PROGRAMS
  • 3. 3 Semantics for the Web: some challenges  Machine-processable representation of semantic information  Defining semantics in an OPEN environment • Adding semantics to other people’s semantics • Ability for everyone to contribute  Ability to define mappings between semantic representations • Semantic representations are context-dependent, but commonalities can/must be captured  Creating a critical mass of semantic content • In the end, this will be the critical success factor
  • 4. 4 W3C’s view on Web Semantics Semantic Web LayerCake (Berners-Lee, 99;Swartz-Hendler, 2001)
  • 5. Semantic web languages provide “external” referents for XML documents CV name education work private < > < > < > < > < > < Χς > < ναµε> <εδυχατιον> <ωορκ> <πριϖατε> CV name education work private < > < > < > < > < > < Χς > < ναµε> <εδυχατιον> <ωορκ> <πριϖατε> CV name education work private < > < > < > < > < > < Χς > < ναµε> <εδυχατιον> <ωορκ> <πριϖατε> SW languages add mappings And structure.  ωορκ ϖατε εδυχ Χς ΧςΧς Χς  CV name education work private < > < > < > < > < > <  > < > < >  <⇐⇑©∨> CV name education work private < > < > < > < > < > <  > < > < >  <⇐⇑©∨> CV name education work private < > < > < > < > < > <  > < > < >  <⇐⇑©∨> CV name education work private < > < > < > < > < > <  > <  > <  >  < ⁄‹›„ > CV name education work private < > < > < > < > < > <  > < > < >  <⇐ ⇑ © ∨>
  • 6. 6 What is an Ontology?  In philosophy: theory of what exists in the world  In IT: consensual & formal descriptionconsensual & formal description of shared concepts in a domainof shared concepts in a domain – Aid to human communication and shared understanding, by specifying meaning – Machine-processable (e.g., agents use ontologies in communication)  Ontology = key technology inOntology = key technology in semantic information processingsemantic information processing – Applications: knowledge management, e-business, industrial engineering, semantic world-wide web
  • 7. 7 Typical semantic-web use case: image search  A person searches for photos of an “orange ape”  An image collection of animal photographs contains snapshots of orang-utans.  The search engine finds the photos, despite the fact that the words “orange” and “ape” do not appear in annotations
  • 9. 9 RDF annotation about a web resource chimpanzee scratching the head young ape08.jpg active agent posture life stage Species ontology WordNet ICONCLASS
  • 10. 10 Ontologies describes the concepts used great ape grass landsrain forest Africa chimpanzee geographical range subClassOf typical habitat
  • 11. 11 Use of semantic markup in query interfaces
  • 12. 12
  • 13. 13 Annotating with a concept: term disambiguation
  • 14. 14 W3C’s Semantic Web Activity  Started in March 2001 • Follow-up of Metadata activity  RDF Core Working Group • Revision of RDF and RDF Schema  Web Ontology Working Group • Started November 1, 2001 • 50+ members – HP, IBM, Lucent, Daimler Chrysler, Fujitsu, Intel, Sun, EDS, Motorola, Nokia, Philips, Unisys, ….  All proceedings are public • See http://www.w3.org under “Semantic Web”
  • 15. 15 RDF and RDF Schema  RDF • Baseline representation for annotations of web resources • Simple triple format • Already many tools and used in browsers such as Mozilla  RDF Schema • Base-level specification of semantics • Language constructs include: class, property, subclass subproperty • Classes and properties are themselves also resources: enables annotations about annotations
  • 16. 16 The Web Ontology Language OWL  OWL adds expressivity to RDF Schema to enable more powerful semantics: • cardinality restrictions, local range constraints, equality of resources, inverse, symmetric and transitive properties, boolean class combinations, disjointness and completeness  OWL Lite: subset of features that is easy to implement and use  OWL DL: subset of features supporting description-logic reasoning (e.g. useful for ontology construction)
  • 17. 17 OWL documents Published: • Requirements document • OWL Guide (language walkthrough) • OWL Feature synopsis • OWL Reference • OWL Semantics • OWL Test cases In preparation: • UML and XML presentation syntax
  • 18. 18 Moving to the future of the web Semantic Web LayerCake (Berners-Lee, 99;Swartz-Hendler, 2001)
  • 19. 19 Web services require ontologies Source: the Web (can’t find it anymore)
  • 20. 20 Use semantics for service composition Translate my symptoms from French and find me a pharmacy that has the necessary medicine (then compute how to get there and print the directions) Print the directions to a pharmacy which has a medicine that cures the symptoms that I will tell you (in French)
  • 22. 22 Will the Semantic Web succeed?  One big plus: there is a growing need for semantic search of information  Availability of large amounts of semantic content is essential • There is a lot of content already out there.  First applications are likely to be in area of large virtual collections • E.g., cultural heritage, medicine  Web services will not work without ontologies