SlideShare uma empresa Scribd logo
1 de 14
Knowledge Representation and
        Mangement
   Technologies for extended minds
Knowledge Representation Aspects
• How do we represent what we know?
   – Expressiveness can conflict with computability
• What aspects of what we know and their relationships
  are important?
   – Every KR is an explicit answer to this question
   – Every KR is a fragmented of full reasoning
      • The subset useful to the problem at hand in tractable limits
   – The choice of KR limits
      •   What can be captured/expressed
      •   What sorts of questions may be tractably answered
      •   Usefulness for human exploration and learning
      •   Usefulness for computational exploration and learning
KR Desired Properties
• Coverage
    – Sufficient breath and depth
• Understandable by humans
    – If for human use anyway. Useful for debugging in any
      case
•   Consistency
•   Efficient
•   Easy of modification
•   Supports the applications / functions the KR was
    desired for
Historical Attempts
• 70s and early 80s
     • Heuristic question-answering, neural networks,
       theorem proving, expert systems. (Mycin)
     • Cyc starting is late 80s.
          – Naïve physics, time notions, causality, motivation, common
            objects and classes of objects
• 90s to now
     •   Computational linquistics
     •   KR Programming languages
     •   SGML -> HTML -> XML
     •   Semantic Web
Uniting Information Sources
Semantic Web

• KR of web content
   – Machine readable web content or description of content
   – Integration across different content, applications, systems
      • Enterprise Information Systems
   – Semantic publishing
      • Documents with semantic markup
          – RDF is most used currently
   – Two Approaches
      • Information as data objects using semantic language (RDF, OWL)
      • Embed formal metadata within documents with new markup
          – RDFa, Microformats
Some ontologies and vocabularies
• Dublin Core
   – Resources, materials, media, text, web pages
• SKOS
   – Thesauri, taxonomies, classification schemes
• FOAF
   – Friend of a friend. Social network ontology
• SIOC
   – Interconnection of discussions, blogs, forums, mailing lists
• RSS
   – Syndication. Updates of blogs, news headlines, audio, video
• DOAP
   – Description of a project. 43000 OS projects in Freshmeat
• SPE
   – Scientific publishing experiment
Open Source Tools and Services
• Ambra Project
   – Publish open access journal with RDF.
• Semantic MediaWiki
   – Mediawiki extension for semantic annotation and RDF publishing
• Swoogle
   – Search engine for ontologies and instance data a
• Ufeed
   – Publishes RDF resources and feeds
• D2R Server
   – Publishes relational database on the web als Linked Data and SPARQL
     endpoints
• BigBlogZoo
   – Crawls and reaggregates 60000 XML sources under semantic URLs
• Utopia
   – Interactive documents
Resource Description Framework
• RDF basics
   – Subject predicate object
       • Typically all three are URIs to keep identity clear
       • Graphed as subject node, object node, predicate as labeled directed edge
            – Basically a lightweight binary relationship
            – Note similarity to Prolog entries
   – Structured information broken in two set of RDF triplets
   – Nodes, at least objects, can be containers of URIs
       • Containers are unbound bags
       • Collections are closed / complete
• RDF Schema (RDFS)
   – Defines types and classes of URIs and expected associations or information
     about types.
       • IS-A and HAS-A relationships
       • Meaning details for types
       • Properties of classes
Web Ontology Language (OWL)
• Components
    •   Classes
    •   Instances
    •   Properties
    •   Datatype properties
    •   Object properties
    •   operators
Topic Maps
• Components
    – Topics
    – Associations
    – Occurrences
•   Similar to concept maps and mind maps
•   Higher level of semantic abstraction than OWL and RDFS
•   Fully supports merging of topic maps
•   APIs
    – TMAPI
• Query
    – TMQL
• Constraint specification (unfinished)
    – TMCL

Mais conteúdo relacionado

Mais procurados

Taxonomy, ontology, folksonomies & SKOS.
Taxonomy, ontology, folksonomies & SKOS.Taxonomy, ontology, folksonomies & SKOS.
Taxonomy, ontology, folksonomies & SKOS.Janet Leu
 
Large-Scale Semantic Search
Large-Scale Semantic SearchLarge-Scale Semantic Search
Large-Scale Semantic SearchRoi Blanco
 
2013 RBMS Premodern manuscript application profile presentation
2013 RBMS Premodern manuscript application profile presentation2013 RBMS Premodern manuscript application profile presentation
2013 RBMS Premodern manuscript application profile presentationssteuer
 
Lotus: Linked Open Text UnleaShed - ISWC COLD '15
Lotus: Linked Open Text UnleaShed - ISWC COLD '15Lotus: Linked Open Text UnleaShed - ISWC COLD '15
Lotus: Linked Open Text UnleaShed - ISWC COLD '15Filip Ilievski
 
Sparql a simple knowledge query
Sparql  a simple knowledge querySparql  a simple knowledge query
Sparql a simple knowledge queryStanley Wang
 
LOTUS: Adaptive Text Search for Big Linked Data
LOTUS: Adaptive Text Search for Big Linked DataLOTUS: Adaptive Text Search for Big Linked Data
LOTUS: Adaptive Text Search for Big Linked DataFilip Ilievski
 
Ontologies and semantic web
Ontologies and semantic webOntologies and semantic web
Ontologies and semantic webStanley Wang
 
Rdf And Rdf Schema For Ontology Specification
Rdf And Rdf Schema For Ontology SpecificationRdf And Rdf Schema For Ontology Specification
Rdf And Rdf Schema For Ontology Specificationchenjennan
 
UVA MDST 3703 Marking-Up a Text 2012-09-13
UVA MDST 3703 Marking-Up a Text 2012-09-13UVA MDST 3703 Marking-Up a Text 2012-09-13
UVA MDST 3703 Marking-Up a Text 2012-09-13Rafael Alvarado
 

Mais procurados (11)

Demystifying RDF
Demystifying RDFDemystifying RDF
Demystifying RDF
 
Taxonomy, ontology, folksonomies & SKOS.
Taxonomy, ontology, folksonomies & SKOS.Taxonomy, ontology, folksonomies & SKOS.
Taxonomy, ontology, folksonomies & SKOS.
 
Large-Scale Semantic Search
Large-Scale Semantic SearchLarge-Scale Semantic Search
Large-Scale Semantic Search
 
2013 RBMS Premodern manuscript application profile presentation
2013 RBMS Premodern manuscript application profile presentation2013 RBMS Premodern manuscript application profile presentation
2013 RBMS Premodern manuscript application profile presentation
 
Lotus: Linked Open Text UnleaShed - ISWC COLD '15
Lotus: Linked Open Text UnleaShed - ISWC COLD '15Lotus: Linked Open Text UnleaShed - ISWC COLD '15
Lotus: Linked Open Text UnleaShed - ISWC COLD '15
 
Sparql a simple knowledge query
Sparql  a simple knowledge querySparql  a simple knowledge query
Sparql a simple knowledge query
 
LOTUS: Adaptive Text Search for Big Linked Data
LOTUS: Adaptive Text Search for Big Linked DataLOTUS: Adaptive Text Search for Big Linked Data
LOTUS: Adaptive Text Search for Big Linked Data
 
Ontologies and semantic web
Ontologies and semantic webOntologies and semantic web
Ontologies and semantic web
 
Rdf And Rdf Schema For Ontology Specification
Rdf And Rdf Schema For Ontology SpecificationRdf And Rdf Schema For Ontology Specification
Rdf And Rdf Schema For Ontology Specification
 
UVA MDST 3703 Marking-Up a Text 2012-09-13
UVA MDST 3703 Marking-Up a Text 2012-09-13UVA MDST 3703 Marking-Up a Text 2012-09-13
UVA MDST 3703 Marking-Up a Text 2012-09-13
 
Semantic Web in Action
Semantic Web in ActionSemantic Web in Action
Semantic Web in Action
 

Destaque

100 Project Management-Success Factor
100 Project Management-Success Factor100 Project Management-Success Factor
100 Project Management-Success FactorDr Fereidoun Dejahang
 
Importance of Business Ethics
Importance of Business EthicsImportance of Business Ethics
Importance of Business EthicsAjilal
 
Industrial Economics(Elective Course)
Industrial Economics(Elective Course)Industrial Economics(Elective Course)
Industrial Economics(Elective Course)DESH D YADAV
 
Advanced financial accounting mcom
Advanced financial accounting mcomAdvanced financial accounting mcom
Advanced financial accounting mcompillai college
 
Introduction of business ethics
Introduction of business ethicsIntroduction of business ethics
Introduction of business ethicsneha16sept
 
Business Ethics
Business EthicsBusiness Ethics
Business Ethicstutor2u
 
Financial statement analysis
Financial statement analysisFinancial statement analysis
Financial statement analysiskiran bala sahoo
 
Knowledge Management Presentation
Knowledge Management PresentationKnowledge Management Presentation
Knowledge Management Presentationkreaume
 
Business ethics, powerpoint
Business ethics, powerpointBusiness ethics, powerpoint
Business ethics, powerpointCSU Chico
 
Introduction to Knowledge Management
Introduction to Knowledge ManagementIntroduction to Knowledge Management
Introduction to Knowledge ManagementMiera Idayu
 
Importance of-business-ethics
Importance of-business-ethicsImportance of-business-ethics
Importance of-business-ethicsSyed Arslan
 
Analysis of financial statements
Analysis of financial statementsAnalysis of financial statements
Analysis of financial statementsAdil Shaikh
 
Financial Accounting
Financial AccountingFinancial Accounting
Financial Accountingashu1983
 

Destaque (20)

Knowledge Mangement
Knowledge MangementKnowledge Mangement
Knowledge Mangement
 
100 Project Management-Success Factor
100 Project Management-Success Factor100 Project Management-Success Factor
100 Project Management-Success Factor
 
Importance of Business Ethics
Importance of Business EthicsImportance of Business Ethics
Importance of Business Ethics
 
Industrial Economics(Elective Course)
Industrial Economics(Elective Course)Industrial Economics(Elective Course)
Industrial Economics(Elective Course)
 
Advanced financial accounting mcom
Advanced financial accounting mcomAdvanced financial accounting mcom
Advanced financial accounting mcom
 
Industrial economics
Industrial economicsIndustrial economics
Industrial economics
 
Introduction of business ethics
Introduction of business ethicsIntroduction of business ethics
Introduction of business ethics
 
Business Ethics
Business EthicsBusiness Ethics
Business Ethics
 
Financial statement analysis
Financial statement analysisFinancial statement analysis
Financial statement analysis
 
Business Ethics
Business EthicsBusiness Ethics
Business Ethics
 
Business ethics
Business  ethicsBusiness  ethics
Business ethics
 
Knowledge Management Presentation
Knowledge Management PresentationKnowledge Management Presentation
Knowledge Management Presentation
 
Business ethics, powerpoint
Business ethics, powerpointBusiness ethics, powerpoint
Business ethics, powerpoint
 
Introduction to Knowledge Management
Introduction to Knowledge ManagementIntroduction to Knowledge Management
Introduction to Knowledge Management
 
Research methodology notes
Research methodology notesResearch methodology notes
Research methodology notes
 
Importance of-business-ethics
Importance of-business-ethicsImportance of-business-ethics
Importance of-business-ethics
 
Business ethics ethical theory
Business ethics   ethical theoryBusiness ethics   ethical theory
Business ethics ethical theory
 
Analysis of financial statements
Analysis of financial statementsAnalysis of financial statements
Analysis of financial statements
 
Business ethics
Business ethicsBusiness ethics
Business ethics
 
Financial Accounting
Financial AccountingFinancial Accounting
Financial Accounting
 

Semelhante a Knowledge mangement

First Steps in Semantic Data Modelling and Search & Analytics in the Cloud
First Steps in Semantic Data Modelling and Search & Analytics in the CloudFirst Steps in Semantic Data Modelling and Search & Analytics in the Cloud
First Steps in Semantic Data Modelling and Search & Analytics in the CloudOntotext
 
Infromation Reprentation, Structured Data and Semantics
Infromation Reprentation,Structured Data and SemanticsInfromation Reprentation,Structured Data and Semantics
Infromation Reprentation, Structured Data and SemanticsYogendra Tamang
 
RDF Seminar Presentation
RDF Seminar PresentationRDF Seminar Presentation
RDF Seminar PresentationMuntazir Mehdi
 
Beyond the catalogue : BibFrame, Linked Data and Ending the Invisible Library
Beyond the catalogue : BibFrame, Linked Data and Ending the 	Invisible LibraryBeyond the catalogue : BibFrame, Linked Data and Ending the 	Invisible Library
Beyond the catalogue : BibFrame, Linked Data and Ending the Invisible LibraryKsenija Mincic Obradovic
 
A review of the state of the art in Machine Learning on the Semantic Web
A review of the state of the art in Machine Learning on the Semantic WebA review of the state of the art in Machine Learning on the Semantic Web
A review of the state of the art in Machine Learning on the Semantic WebSimon Price
 
ontology.ppt
ontology.pptontology.ppt
ontology.pptPrerak10
 
ISWC GoodRelations Tutorial Part 2
ISWC GoodRelations Tutorial Part 2ISWC GoodRelations Tutorial Part 2
ISWC GoodRelations Tutorial Part 2Martin Hepp
 
GoodRelations Tutorial Part 2
GoodRelations Tutorial Part 2GoodRelations Tutorial Part 2
GoodRelations Tutorial Part 2guestecacad2
 
Getting Started with Knowledge Graphs
Getting Started with Knowledge GraphsGetting Started with Knowledge Graphs
Getting Started with Knowledge GraphsPeter Haase
 
Intro to the semantic web (for libraries)
Intro to the semantic web (for libraries) Intro to the semantic web (for libraries)
Intro to the semantic web (for libraries) robin fay
 
Bio ontologies and semantic technologies
Bio ontologies and semantic technologiesBio ontologies and semantic technologies
Bio ontologies and semantic technologiesProf. Wim Van Criekinge
 
Tutorial on Semantic Digital Libraries (WWW'2007)
Tutorial on Semantic Digital Libraries (WWW'2007)Tutorial on Semantic Digital Libraries (WWW'2007)
Tutorial on Semantic Digital Libraries (WWW'2007)Sebastian Ryszard Kruk
 
An Introduction to NOSQL, Graph Databases and Neo4j
An Introduction to NOSQL, Graph Databases and Neo4jAn Introduction to NOSQL, Graph Databases and Neo4j
An Introduction to NOSQL, Graph Databases and Neo4jDebanjan Mahata
 

Semelhante a Knowledge mangement (20)

sw owl
 sw owl sw owl
sw owl
 
First Steps in Semantic Data Modelling and Search & Analytics in the Cloud
First Steps in Semantic Data Modelling and Search & Analytics in the CloudFirst Steps in Semantic Data Modelling and Search & Analytics in the Cloud
First Steps in Semantic Data Modelling and Search & Analytics in the Cloud
 
Infromation Reprentation, Structured Data and Semantics
Infromation Reprentation,Structured Data and SemanticsInfromation Reprentation,Structured Data and Semantics
Infromation Reprentation, Structured Data and Semantics
 
RDF Seminar Presentation
RDF Seminar PresentationRDF Seminar Presentation
RDF Seminar Presentation
 
Semantic web
Semantic webSemantic web
Semantic web
 
Introduction to RDF
Introduction to RDFIntroduction to RDF
Introduction to RDF
 
Beyond the catalogue : BibFrame, Linked Data and Ending the Invisible Library
Beyond the catalogue : BibFrame, Linked Data and Ending the 	Invisible LibraryBeyond the catalogue : BibFrame, Linked Data and Ending the 	Invisible Library
Beyond the catalogue : BibFrame, Linked Data and Ending the Invisible Library
 
Analysis on semantic web layer cake entities
Analysis on semantic web layer cake entitiesAnalysis on semantic web layer cake entities
Analysis on semantic web layer cake entities
 
A review of the state of the art in Machine Learning on the Semantic Web
A review of the state of the art in Machine Learning on the Semantic WebA review of the state of the art in Machine Learning on the Semantic Web
A review of the state of the art in Machine Learning on the Semantic Web
 
semantic web & natural language
semantic web & natural languagesemantic web & natural language
semantic web & natural language
 
ontology.ppt
ontology.pptontology.ppt
ontology.ppt
 
ISWC GoodRelations Tutorial Part 2
ISWC GoodRelations Tutorial Part 2ISWC GoodRelations Tutorial Part 2
ISWC GoodRelations Tutorial Part 2
 
GoodRelations Tutorial Part 2
GoodRelations Tutorial Part 2GoodRelations Tutorial Part 2
GoodRelations Tutorial Part 2
 
Getting Started with Knowledge Graphs
Getting Started with Knowledge GraphsGetting Started with Knowledge Graphs
Getting Started with Knowledge Graphs
 
Intro to the semantic web (for libraries)
Intro to the semantic web (for libraries) Intro to the semantic web (for libraries)
Intro to the semantic web (for libraries)
 
A theory of Metadata enriching & filtering
A theory of  Metadata enriching & filteringA theory of  Metadata enriching & filtering
A theory of Metadata enriching & filtering
 
Bio ontologies and semantic technologies
Bio ontologies and semantic technologiesBio ontologies and semantic technologies
Bio ontologies and semantic technologies
 
Tutorial on Semantic Digital Libraries (WWW'2007)
Tutorial on Semantic Digital Libraries (WWW'2007)Tutorial on Semantic Digital Libraries (WWW'2007)
Tutorial on Semantic Digital Libraries (WWW'2007)
 
An Introduction to NOSQL, Graph Databases and Neo4j
An Introduction to NOSQL, Graph Databases and Neo4jAn Introduction to NOSQL, Graph Databases and Neo4j
An Introduction to NOSQL, Graph Databases and Neo4j
 
DL-architecture.ppt
DL-architecture.pptDL-architecture.ppt
DL-architecture.ppt
 

Mais de Serendipity Seraph (20)

Device etc090212
Device etc090212Device etc090212
Device etc090212
 
Space090912
Space090912Space090912
Space090912
 
Economy future
Economy futureEconomy future
Economy future
 
Devices gadgets open
Devices gadgets openDevices gadgets open
Devices gadgets open
 
Ss2012 redux
Ss2012 reduxSs2012 redux
Ss2012 redux
 
Devices123012
Devices123012Devices123012
Devices123012
 
Space010613
Space010613Space010613
Space010613
 
Robot012013
Robot012013Robot012013
Robot012013
 
Device comp012713
Device comp012713Device comp012713
Device comp012713
 
Space02102013
Space02102013Space02102013
Space02102013
 
What is transhumanism
What is transhumanismWhat is transhumanism
What is transhumanism
 
Medical0302
Medical0302Medical0302
Medical0302
 
Intellectual property revisited
Intellectual property revisitedIntellectual property revisited
Intellectual property revisited
 
Space news 031713
Space news 031713Space news 031713
Space news 031713
 
Device news 031013
Device news 031013Device news 031013
Device news 031013
 
Abundance 061712
Abundance 061712Abundance 061712
Abundance 061712
 
Water070812
Water070812Water070812
Water070812
 
Curiousity space
Curiousity spaceCuriousity space
Curiousity space
 
Space0818
Space0818Space0818
Space0818
 
Robots0812
Robots0812Robots0812
Robots0812
 

Último

Mythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITWMythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITWQuiz Club NITW
 
4.9.24 School Desegregation in Boston.pptx
4.9.24 School Desegregation in Boston.pptx4.9.24 School Desegregation in Boston.pptx
4.9.24 School Desegregation in Boston.pptxmary850239
 
How to Manage Buy 3 Get 1 Free in Odoo 17
How to Manage Buy 3 Get 1 Free in Odoo 17How to Manage Buy 3 Get 1 Free in Odoo 17
How to Manage Buy 3 Get 1 Free in Odoo 17Celine George
 
How to Fix XML SyntaxError in Odoo the 17
How to Fix XML SyntaxError in Odoo the 17How to Fix XML SyntaxError in Odoo the 17
How to Fix XML SyntaxError in Odoo the 17Celine George
 
DIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptx
DIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptxDIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptx
DIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptxMichelleTuguinay1
 
Expanded definition: technical and operational
Expanded definition: technical and operationalExpanded definition: technical and operational
Expanded definition: technical and operationalssuser3e220a
 
4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptx4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptxmary850239
 
Active Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfActive Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfPatidar M
 
Textual Evidence in Reading and Writing of SHS
Textual Evidence in Reading and Writing of SHSTextual Evidence in Reading and Writing of SHS
Textual Evidence in Reading and Writing of SHSMae Pangan
 
CLASSIFICATION OF ANTI - CANCER DRUGS.pptx
CLASSIFICATION OF ANTI - CANCER DRUGS.pptxCLASSIFICATION OF ANTI - CANCER DRUGS.pptx
CLASSIFICATION OF ANTI - CANCER DRUGS.pptxAnupam32727
 
Concurrency Control in Database Management system
Concurrency Control in Database Management systemConcurrency Control in Database Management system
Concurrency Control in Database Management systemChristalin Nelson
 
4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptxmary850239
 
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdfGrade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdfJemuel Francisco
 
Scientific Writing :Research Discourse
Scientific  Writing :Research  DiscourseScientific  Writing :Research  Discourse
Scientific Writing :Research DiscourseAnita GoswamiGiri
 
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...DhatriParmar
 
Transaction Management in Database Management System
Transaction Management in Database Management SystemTransaction Management in Database Management System
Transaction Management in Database Management SystemChristalin Nelson
 
Indexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdfIndexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdfChristalin Nelson
 

Último (20)

Mythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITWMythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITW
 
4.9.24 School Desegregation in Boston.pptx
4.9.24 School Desegregation in Boston.pptx4.9.24 School Desegregation in Boston.pptx
4.9.24 School Desegregation in Boston.pptx
 
How to Manage Buy 3 Get 1 Free in Odoo 17
How to Manage Buy 3 Get 1 Free in Odoo 17How to Manage Buy 3 Get 1 Free in Odoo 17
How to Manage Buy 3 Get 1 Free in Odoo 17
 
How to Fix XML SyntaxError in Odoo the 17
How to Fix XML SyntaxError in Odoo the 17How to Fix XML SyntaxError in Odoo the 17
How to Fix XML SyntaxError in Odoo the 17
 
DIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptx
DIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptxDIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptx
DIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptx
 
Expanded definition: technical and operational
Expanded definition: technical and operationalExpanded definition: technical and operational
Expanded definition: technical and operational
 
4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptx4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptx
 
Active Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfActive Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdf
 
Mattingly "AI & Prompt Design: Large Language Models"
Mattingly "AI & Prompt Design: Large Language Models"Mattingly "AI & Prompt Design: Large Language Models"
Mattingly "AI & Prompt Design: Large Language Models"
 
Textual Evidence in Reading and Writing of SHS
Textual Evidence in Reading and Writing of SHSTextual Evidence in Reading and Writing of SHS
Textual Evidence in Reading and Writing of SHS
 
CLASSIFICATION OF ANTI - CANCER DRUGS.pptx
CLASSIFICATION OF ANTI - CANCER DRUGS.pptxCLASSIFICATION OF ANTI - CANCER DRUGS.pptx
CLASSIFICATION OF ANTI - CANCER DRUGS.pptx
 
Paradigm shift in nursing research by RS MEHTA
Paradigm shift in nursing research by RS MEHTAParadigm shift in nursing research by RS MEHTA
Paradigm shift in nursing research by RS MEHTA
 
Concurrency Control in Database Management system
Concurrency Control in Database Management systemConcurrency Control in Database Management system
Concurrency Control in Database Management system
 
4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx
 
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdfGrade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
 
Scientific Writing :Research Discourse
Scientific  Writing :Research  DiscourseScientific  Writing :Research  Discourse
Scientific Writing :Research Discourse
 
Faculty Profile prashantha K EEE dept Sri Sairam college of Engineering
Faculty Profile prashantha K EEE dept Sri Sairam college of EngineeringFaculty Profile prashantha K EEE dept Sri Sairam college of Engineering
Faculty Profile prashantha K EEE dept Sri Sairam college of Engineering
 
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
 
Transaction Management in Database Management System
Transaction Management in Database Management SystemTransaction Management in Database Management System
Transaction Management in Database Management System
 
Indexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdfIndexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdf
 

Knowledge mangement

  • 1. Knowledge Representation and Mangement Technologies for extended minds
  • 2. Knowledge Representation Aspects • How do we represent what we know? – Expressiveness can conflict with computability • What aspects of what we know and their relationships are important? – Every KR is an explicit answer to this question – Every KR is a fragmented of full reasoning • The subset useful to the problem at hand in tractable limits – The choice of KR limits • What can be captured/expressed • What sorts of questions may be tractably answered • Usefulness for human exploration and learning • Usefulness for computational exploration and learning
  • 3. KR Desired Properties • Coverage – Sufficient breath and depth • Understandable by humans – If for human use anyway. Useful for debugging in any case • Consistency • Efficient • Easy of modification • Supports the applications / functions the KR was desired for
  • 4. Historical Attempts • 70s and early 80s • Heuristic question-answering, neural networks, theorem proving, expert systems. (Mycin) • Cyc starting is late 80s. – Naïve physics, time notions, causality, motivation, common objects and classes of objects • 90s to now • Computational linquistics • KR Programming languages • SGML -> HTML -> XML • Semantic Web
  • 6.
  • 7. Semantic Web • KR of web content – Machine readable web content or description of content – Integration across different content, applications, systems • Enterprise Information Systems – Semantic publishing • Documents with semantic markup – RDF is most used currently – Two Approaches • Information as data objects using semantic language (RDF, OWL) • Embed formal metadata within documents with new markup – RDFa, Microformats
  • 8. Some ontologies and vocabularies • Dublin Core – Resources, materials, media, text, web pages • SKOS – Thesauri, taxonomies, classification schemes • FOAF – Friend of a friend. Social network ontology • SIOC – Interconnection of discussions, blogs, forums, mailing lists • RSS – Syndication. Updates of blogs, news headlines, audio, video • DOAP – Description of a project. 43000 OS projects in Freshmeat • SPE – Scientific publishing experiment
  • 9.
  • 10. Open Source Tools and Services • Ambra Project – Publish open access journal with RDF. • Semantic MediaWiki – Mediawiki extension for semantic annotation and RDF publishing • Swoogle – Search engine for ontologies and instance data a • Ufeed – Publishes RDF resources and feeds • D2R Server – Publishes relational database on the web als Linked Data and SPARQL endpoints • BigBlogZoo – Crawls and reaggregates 60000 XML sources under semantic URLs • Utopia – Interactive documents
  • 11. Resource Description Framework • RDF basics – Subject predicate object • Typically all three are URIs to keep identity clear • Graphed as subject node, object node, predicate as labeled directed edge – Basically a lightweight binary relationship – Note similarity to Prolog entries – Structured information broken in two set of RDF triplets – Nodes, at least objects, can be containers of URIs • Containers are unbound bags • Collections are closed / complete • RDF Schema (RDFS) – Defines types and classes of URIs and expected associations or information about types. • IS-A and HAS-A relationships • Meaning details for types • Properties of classes
  • 12. Web Ontology Language (OWL) • Components • Classes • Instances • Properties • Datatype properties • Object properties • operators
  • 13.
  • 14. Topic Maps • Components – Topics – Associations – Occurrences • Similar to concept maps and mind maps • Higher level of semantic abstraction than OWL and RDFS • Fully supports merging of topic maps • APIs – TMAPI • Query – TMQL • Constraint specification (unfinished) – TMCL

Notas do Editor

  1. Knowledge representation (KR) and reasoning' is an area of artificial intelligence whose fundamental goal is to represent knowledge in a manner that facilitates inferencing (i.e. drawing conclusions) from knowledge. It analyzes how to formally think - how to use a symbol system to represent a domain of discourse (that which can be talked about), along with functions that allow inference (formalized reasoning) about the objectsKnowledge Representation is crucial for the systemactic capture and fast access and retrieval of knowledge in Knowledge Management tasks. When we design a knowledge representation (and a knowledge representation system to interpret sentences in the logic in order to derive inferences from them) we have to make choices across a number of design spaces. The single most important decision to be made, is the expressivity of the KR. The more expressive, the easier and more compact it is to "say something”However, more expressive languages are harder to automatically derive inferences from. An example of a less expressive KR would be propositional logic.An example of a more expressive KR would be autoepistemic temporal modal logic. Less expressive KRs may be both complete and consistent (formally less expressive than set theory). More expressive KRs may be neither complete nor consistent.Recent developments in KR have been driven by the Semantic Web, and have included development of XML-based knowledge representation languages and standards, including Resource Description Framework (RDF), RDF Schema, Topic Maps, DARPA Agent Markup Language (DAML), Ontology Inference Layer (OIL), and Web Ontology Language (OWL).
  2. So how do you do general KR, KR that by design is regular enough that KRs for various specific purposes can be combined. How do you make a KR system with such broad applicability that all humanKnowledge can be expressed in it. Such questions have led to the Semantic Web and other efforts.
  3. In computer science, particularly artificial intelligence, a number of representations have been devised to structure information.KR is most commonly used to refer to representations intended for processing by modern computers, and in particular, for representations consisting of explicit objects (the class of all elephants, or Clyde a certain individual), and of assertions or claims about them ('Clyde is an elephant', or 'all elephants are grey'). Representing knowledge in such explicit form enables computers to draw conclusions from knowledge already stored ('Clyde is grey').Computationallinquistics added much knowledge about language itself. One of the better known KR programming languages is Prolog. It was actually developed in 1972 but not popular until roughly 1985. Remember the Fifth Generation Computing hype of the time or heard of it? We thought Japan was going to solve such powerful and even general AI that the US had to put major energy into catching up. Prolog represents propositions and basic logic, and can derive conclusions from known premises. KL-ONE (1980s) is more specifically aimed at knowledge representation itself. In 1995, the Dublin Core standard of metadata was conceived.SGML -> HTML -> XML These facilitated information retrieval and data mining efforts, which have in recent years begun to relate to knowledge representation.
  4. Development of the Semantic Web, has included development of XML-based knowledge representation languages and standards, including RDF, RDF Schema, Topic Maps, DARPA Agent Markup Language (DAML), Ontology Inference Layer (OIL), and Web Ontology Language (OWL).TheSemantic Web is a "web of data" that enables machines to understand the semantics, or meaning, of information on the World Wide WebHumans can do a variety of tasks using the web that machines cannot because humans understand the semantics of those materials. They were designed to sufficiently convey semantics to enable such human use.Machines can’t use the same cues and contexts and are missing our “common sense”. Machine readability allows deep automated processing of the web. For instance cross-linking all content discussing specific aspects of some subject, topic or situation that are of particular types. Find all that support or undermine a particular hypothesis. I have a dream for the Web [in which computers] become capable of analyzing all the data on the Web – the content, links, and transactions between people and computers. A ‘Semantic Web’, which should make this possible, has yet to emerge, but when it does, the day-to-day mechanisms of trade, bureaucracy and our daily lives will be handled by machines talking to machines. The ‘intelligent agents’ people have touted for ages will finally materialize.– Tim Berners-Lee, 1999Researchers could directly self-publish their experiment data in "semantic" format on the web. Semantic search engines could then make these data widely available. For instance the Open Cures project mentioned two weeks ago in the Longevity talk. an ontology is a formal representation of knowledge as a set of concepts within a domain, and the relationships between those concepts. It can be applied to reason about the entities within that domain, and may be used to describe the domain.an ontology is a "formal, explicit specification of a shared conceptualisation
  5. http://en.wikipedia.org/wiki/Dublin_Corehttp://en.wikipedia.org/wiki/SKOShttp://en.wikipedia.org/wiki/FOAF_(software)http://en.wikipedia.org/wiki/SIOChttp://en.wikipedia.org/wiki/RSS_(file_format)http://en.wikipedia.org/wiki/DOAPhttp://esw.w3.org/topic/HCLS/ScientificPublishingTaskForce
  6. The advantages of RDF are that it allows an unlimited amount of information about any subject in a schema independent way. There are common shortcuts in practice and many tools for more efficient editing and viewing. But it is nowhere near as concise for structured data as specifying a schema once and referring to it by data collection type. Note that RDF is pretty much limited to facts about instances. RDFS schema allows ability to define types and a limited set of properties of types.On the other hand OWL is a language for describing ontologies – conceptual mappings of a particular domain. OWL is compatible with RDFS but much more expressive, expressively for reasoning about interrelated types.
  7. A class is a collection of objects. It corresponds to a description logic (DL) concept. A class may contain individuals, instances of the class. A class may have any number of instances. An instance may belong to none, one or more classes.A class may be a subclass of another, inheriting characteristics from its parent superclass. This corresponds to logical subsumption and DL concept inclusion notated .All classes are subclasses of owl:Thing (DL top notated ), the root class.All classes are subclassed by owl:Nothing (DL bottom notated ), the empty class. No instances are members of owl:Nothing. Modelers use owl:Thing and owl:Nothing to assert facts about all or no instances.[37]An instance is an object. It corresponds to a description logic individual.A property is a directed binary relation that specifies class characteristics. It corresponds to a description logic role. They are attributes of instances and sometimes act as data values or link to other instances. Properties may possess logical capabilities such as being transitive, symmetric, inverse and functional. Properties may also have domains and ranges.Datatype properties are relations between instances of classes and RDF literals or XML schema datatypes. For example, modelName (String datatype) is the property of Manufacturer class. They are formulated using owl:DatatypeProperty type.Object properties are relationsbetween instances of two classes. For example, ownedBy may be an object type property of the Vehicle class and may have a range which is the class Person. They are formulated using owl:ObjectProperty.Languages in the OWL family support various operations on classes such as union, intersection and complement. They also allow class enumeration, cardinality, and disjointness.
  8. topics, representing any concept, from people, countries, and organizations to software modules, individual files, and events,associations, representing hypergraph relationships between topics, andoccurrences representing information resources relevant to a particular topic.Topics, associations, occurences can all be typed. The collection of definitions of allowed types forms the ontology of the topic map. topics, representing any concept, from people, countries, and organizations to software modules, individual files, and events,associations, representing hypergraph relationships between topics, andoccurrences representing information resources relevant to a particular topic.http://www.topicmaps.org/http://www.xml.com/pub/a/2002/09/11/topicmaps.htmlhttp://www.isotopicmaps.org/