SlideShare une entreprise Scribd logo
1  sur  10
Knowledge Engineering Course (SCOM7348)
                                                                         University of Birzeit, Palestine
                                                                                       December, 2012




                                   Synthesis Paper Talk


                            Ontology-Based
                            Data Integration
                                 Ali Ahmad Al Jadaa
                              Master of Computing, Birzeit University
                                         Ali.ps@live.com



This is a student talk, at the Knowledge Engineering course, each student is is
                    asked to present his/her synthesis paper.
      Course Page: http://jarrar-courses.blogspot.com/2011/09/knowledgeengineering-fall2011.html


                                                                                                        1
Content


•   Abstract
•   What is data integration
•   What is Semantic
•   What is Ontology
•   Heterogeneity conflicts
•   References




                               2
Abstract

Many applications required integration of data
from different sources, such as data mining
and data / information fusion, etc., and the
problem facing any project like this is that
data structure different way and the terms and
their meanings different from each other, and
in this paper we will discuss the most
important problems and how solve it using
ontology.


                                             3
What is data integration

• Data coming from different sources
  and providing users with a unified view
  of these data .




                                            4
What is Semantic

• Understand the meaning .
• Relation between signifiers .
• Difference with other

                         ≠

                                  5
What is Ontology

• Set of concepts within a domain, and the
  relationships between pairs of concepts. It
  can be used to model a domain and support
  reasoning about entities .
• Dictionary Computers can be understand
• List of things that exist
• Description of the kinds of entities there are
  and how they are related


                                              6
Quick Review

• Now we know About semantic and
  ontology and data integration .
• We see if we make an Ontology of data
  integration ,so we will Collide of
  different heterogeneity of data source .
• So we must know about Heterogeneity
  conflicts



                                             7
Heterogeneity conflicts

• Syntactic heterogeneity : differences between
  data models (entity-relationship, relational,
  object oriented) .

• Structural heterogeneity (schematic
  heterogeneity) : different information systems
  store their data in different structures.

• Semantic heterogeneity :the meaning of the
  information that is interchanged must be
  understood across the systems

                                                   8
References

•   Ontology-Based Integration of Data Sources Michel Gagnon Defence
    R&D Canada – Valcartier Department National Defence Québec,
    Canada Michel.Gagnon@drdc-rddc.g

• Ontology-Based Data Integration Methods: A Framework for
  Comparison Agustina Buccella*, Alejandra Cechich* and Nieves R.
  Brisaboa
• Wikipedia, the free encyclopedia
  en.wikipedia.org/wiki/Data_integration




                                                                    9
Thank You




            10

Contenu connexe

Tendances

Using linguistic analysis to translate
Using linguistic analysis to translateUsing linguistic analysis to translate
Using linguistic analysis to translateIJwest
 
Application of Ontology in Semantic Information Retrieval by Prof Shahrul Azm...
Application of Ontology in Semantic Information Retrieval by Prof Shahrul Azm...Application of Ontology in Semantic Information Retrieval by Prof Shahrul Azm...
Application of Ontology in Semantic Information Retrieval by Prof Shahrul Azm...Khirulnizam Abd Rahman
 
Ontology Mapping
Ontology MappingOntology Mapping
Ontology Mappingsamhati27
 
Ekaw ontology learning for cost effective large-scale semantic annotation
Ekaw ontology learning for cost effective large-scale semantic annotationEkaw ontology learning for cost effective large-scale semantic annotation
Ekaw ontology learning for cost effective large-scale semantic annotationShahab Mokarizadeh
 
ONTOLOGY BASED DATA ACCESS
ONTOLOGY BASED DATA ACCESSONTOLOGY BASED DATA ACCESS
ONTOLOGY BASED DATA ACCESSKishan Patel
 
The Statement of Conjunctive and Disjunctive Queries in Object Oriented Datab...
The Statement of Conjunctive and Disjunctive Queries in Object Oriented Datab...The Statement of Conjunctive and Disjunctive Queries in Object Oriented Datab...
The Statement of Conjunctive and Disjunctive Queries in Object Oriented Datab...Editor IJCATR
 
Tools for Ontology Building from Texts: Analysis and Improvement of the Resul...
Tools for Ontology Building from Texts: Analysis and Improvement of the Resul...Tools for Ontology Building from Texts: Analysis and Improvement of the Resul...
Tools for Ontology Building from Texts: Analysis and Improvement of the Resul...IOSR Journals
 
Improve information retrieval and e learning using
Improve information retrieval and e learning usingImprove information retrieval and e learning using
Improve information retrieval and e learning usingIJwest
 
Are Data Models Superfluous Nov2003
Are Data Models Superfluous Nov2003Are Data Models Superfluous Nov2003
Are Data Models Superfluous Nov2003Andries_vanRenssen
 
Ontologies for big data
Ontologies for big dataOntologies for big data
Ontologies for big dataYu Lin
 
ONTOLOGY VISUALIZATION PROTÉGÉ TOOLS – A REVIEW
ONTOLOGY VISUALIZATION PROTÉGÉ TOOLS – A REVIEW ONTOLOGY VISUALIZATION PROTÉGÉ TOOLS – A REVIEW
ONTOLOGY VISUALIZATION PROTÉGÉ TOOLS – A REVIEW ijait
 
Ontology Mapping
Ontology MappingOntology Mapping
Ontology Mappingbutest
 
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : ...
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL  FOR HEALTHCARE INFORMATION SYSTEM :   ...ONTOLOGY-DRIVEN INFORMATION RETRIEVAL  FOR HEALTHCARE INFORMATION SYSTEM :   ...
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : ...IJNSA Journal
 
Ontology learning techniques and applications computer science thesis writing...
Ontology learning techniques and applications computer science thesis writing...Ontology learning techniques and applications computer science thesis writing...
Ontology learning techniques and applications computer science thesis writing...Tutors India
 
Swoogle: Showcasing the Significance of Semantic Search
Swoogle: Showcasing the Significance of Semantic SearchSwoogle: Showcasing the Significance of Semantic Search
Swoogle: Showcasing the Significance of Semantic SearchIDES Editor
 
Ontology Building and its Application using Hozo
Ontology Building and its Application using HozoOntology Building and its Application using Hozo
Ontology Building and its Application using HozoKouji Kozaki
 
TRANSFORMATION RULES FOR BUILDING OWL ONTOLOGIES FROM RELATIONAL DATABASES
TRANSFORMATION RULES FOR BUILDING OWL ONTOLOGIES FROM RELATIONAL DATABASESTRANSFORMATION RULES FOR BUILDING OWL ONTOLOGIES FROM RELATIONAL DATABASES
TRANSFORMATION RULES FOR BUILDING OWL ONTOLOGIES FROM RELATIONAL DATABASEScsandit
 

Tendances (20)

Using linguistic analysis to translate
Using linguistic analysis to translateUsing linguistic analysis to translate
Using linguistic analysis to translate
 
Application of Ontology in Semantic Information Retrieval by Prof Shahrul Azm...
Application of Ontology in Semantic Information Retrieval by Prof Shahrul Azm...Application of Ontology in Semantic Information Retrieval by Prof Shahrul Azm...
Application of Ontology in Semantic Information Retrieval by Prof Shahrul Azm...
 
Ontology Mapping
Ontology MappingOntology Mapping
Ontology Mapping
 
Ekaw ontology learning for cost effective large-scale semantic annotation
Ekaw ontology learning for cost effective large-scale semantic annotationEkaw ontology learning for cost effective large-scale semantic annotation
Ekaw ontology learning for cost effective large-scale semantic annotation
 
ONTOLOGY BASED DATA ACCESS
ONTOLOGY BASED DATA ACCESSONTOLOGY BASED DATA ACCESS
ONTOLOGY BASED DATA ACCESS
 
The Statement of Conjunctive and Disjunctive Queries in Object Oriented Datab...
The Statement of Conjunctive and Disjunctive Queries in Object Oriented Datab...The Statement of Conjunctive and Disjunctive Queries in Object Oriented Datab...
The Statement of Conjunctive and Disjunctive Queries in Object Oriented Datab...
 
Tools for Ontology Building from Texts: Analysis and Improvement of the Resul...
Tools for Ontology Building from Texts: Analysis and Improvement of the Resul...Tools for Ontology Building from Texts: Analysis and Improvement of the Resul...
Tools for Ontology Building from Texts: Analysis and Improvement of the Resul...
 
Artificial Intelligence of the Web through Domain Ontologies
Artificial Intelligence of the Web through Domain OntologiesArtificial Intelligence of the Web through Domain Ontologies
Artificial Intelligence of the Web through Domain Ontologies
 
mlss
mlssmlss
mlss
 
Improve information retrieval and e learning using
Improve information retrieval and e learning usingImprove information retrieval and e learning using
Improve information retrieval and e learning using
 
Are Data Models Superfluous Nov2003
Are Data Models Superfluous Nov2003Are Data Models Superfluous Nov2003
Are Data Models Superfluous Nov2003
 
Ontologies for big data
Ontologies for big dataOntologies for big data
Ontologies for big data
 
ONTOLOGY VISUALIZATION PROTÉGÉ TOOLS – A REVIEW
ONTOLOGY VISUALIZATION PROTÉGÉ TOOLS – A REVIEW ONTOLOGY VISUALIZATION PROTÉGÉ TOOLS – A REVIEW
ONTOLOGY VISUALIZATION PROTÉGÉ TOOLS – A REVIEW
 
Ontology Mapping
Ontology MappingOntology Mapping
Ontology Mapping
 
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : ...
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL  FOR HEALTHCARE INFORMATION SYSTEM :   ...ONTOLOGY-DRIVEN INFORMATION RETRIEVAL  FOR HEALTHCARE INFORMATION SYSTEM :   ...
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : ...
 
Ontology learning techniques and applications computer science thesis writing...
Ontology learning techniques and applications computer science thesis writing...Ontology learning techniques and applications computer science thesis writing...
Ontology learning techniques and applications computer science thesis writing...
 
Learning ontologies
Learning ontologiesLearning ontologies
Learning ontologies
 
Swoogle: Showcasing the Significance of Semantic Search
Swoogle: Showcasing the Significance of Semantic SearchSwoogle: Showcasing the Significance of Semantic Search
Swoogle: Showcasing the Significance of Semantic Search
 
Ontology Building and its Application using Hozo
Ontology Building and its Application using HozoOntology Building and its Application using Hozo
Ontology Building and its Application using Hozo
 
TRANSFORMATION RULES FOR BUILDING OWL ONTOLOGIES FROM RELATIONAL DATABASES
TRANSFORMATION RULES FOR BUILDING OWL ONTOLOGIES FROM RELATIONAL DATABASESTRANSFORMATION RULES FOR BUILDING OWL ONTOLOGIES FROM RELATIONAL DATABASES
TRANSFORMATION RULES FOR BUILDING OWL ONTOLOGIES FROM RELATIONAL DATABASES
 

En vedette

X Som Graduation Presentation
X Som   Graduation PresentationX Som   Graduation Presentation
X Som Graduation PresentationGiorgio Orsi
 
Horizontal Integration of Big Intelligence Data
Horizontal Integration of Big Intelligence DataHorizontal Integration of Big Intelligence Data
Horizontal Integration of Big Intelligence DataDataTactics
 
8 ontology integration and interoperability (onto i op)
8 ontology integration and interoperability (onto i op)8 ontology integration and interoperability (onto i op)
8 ontology integration and interoperability (onto i op)AEGIS-ACCESSIBLE Projects
 
Enterprise and Data Mining Ontology Integration to Extract Actionable Knowled...
Enterprise and Data Mining Ontology Integration to Extract Actionable Knowled...Enterprise and Data Mining Ontology Integration to Extract Actionable Knowled...
Enterprise and Data Mining Ontology Integration to Extract Actionable Knowled...hamidnazary2002
 
Does That Belong Here? A Facebook Versus LinkedIn Infographic
Does That Belong Here? A Facebook Versus LinkedIn InfographicDoes That Belong Here? A Facebook Versus LinkedIn Infographic
Does That Belong Here? A Facebook Versus LinkedIn InfographicBoston Interactive
 
Venture capital investment trends May 2014
Venture capital investment trends May 2014Venture capital investment trends May 2014
Venture capital investment trends May 2014JLL
 
Startup Turkey 2014 VitalCV Pitch Slides
Startup Turkey 2014 VitalCV Pitch SlidesStartup Turkey 2014 VitalCV Pitch Slides
Startup Turkey 2014 VitalCV Pitch SlidesJoshgun Karimov
 
Dove- Evolution of a brand
Dove- Evolution of a brandDove- Evolution of a brand
Dove- Evolution of a brandSameer Mathur
 
TH TRUE HEAL - Brand Love Key
TH TRUE HEAL - Brand Love KeyTH TRUE HEAL - Brand Love Key
TH TRUE HEAL - Brand Love KeyLong Nguyen
 
What 1 Million Tweets Taught Us About Tweeting Successfully
What 1 Million Tweets Taught Us About Tweeting SuccessfullyWhat 1 Million Tweets Taught Us About Tweeting Successfully
What 1 Million Tweets Taught Us About Tweeting SuccessfullyBuffer
 
The Death of Trial and Error, SMX London 2013 by Sean Malseed of SEMrush.com
The Death of Trial and Error, SMX London 2013 by Sean Malseed of SEMrush.comThe Death of Trial and Error, SMX London 2013 by Sean Malseed of SEMrush.com
The Death of Trial and Error, SMX London 2013 by Sean Malseed of SEMrush.comSemrush
 
10 Inconvenient Truths About Creating Branded Content with Influencers
10 Inconvenient Truths About Creating Branded Content with Influencers10 Inconvenient Truths About Creating Branded Content with Influencers
10 Inconvenient Truths About Creating Branded Content with InfluencersErica Ehm
 
Above the Fold: Web Typography for Print Designers
Above the Fold: Web Typography for Print DesignersAbove the Fold: Web Typography for Print Designers
Above the Fold: Web Typography for Print DesignersBrian Miller
 
Management Gurus
Management GurusManagement Gurus
Management GurusMarcus9000
 
How to write a creative brief
How to write a creative briefHow to write a creative brief
How to write a creative briefMichael Fomichev
 

En vedette (15)

X Som Graduation Presentation
X Som   Graduation PresentationX Som   Graduation Presentation
X Som Graduation Presentation
 
Horizontal Integration of Big Intelligence Data
Horizontal Integration of Big Intelligence DataHorizontal Integration of Big Intelligence Data
Horizontal Integration of Big Intelligence Data
 
8 ontology integration and interoperability (onto i op)
8 ontology integration and interoperability (onto i op)8 ontology integration and interoperability (onto i op)
8 ontology integration and interoperability (onto i op)
 
Enterprise and Data Mining Ontology Integration to Extract Actionable Knowled...
Enterprise and Data Mining Ontology Integration to Extract Actionable Knowled...Enterprise and Data Mining Ontology Integration to Extract Actionable Knowled...
Enterprise and Data Mining Ontology Integration to Extract Actionable Knowled...
 
Does That Belong Here? A Facebook Versus LinkedIn Infographic
Does That Belong Here? A Facebook Versus LinkedIn InfographicDoes That Belong Here? A Facebook Versus LinkedIn Infographic
Does That Belong Here? A Facebook Versus LinkedIn Infographic
 
Venture capital investment trends May 2014
Venture capital investment trends May 2014Venture capital investment trends May 2014
Venture capital investment trends May 2014
 
Startup Turkey 2014 VitalCV Pitch Slides
Startup Turkey 2014 VitalCV Pitch SlidesStartup Turkey 2014 VitalCV Pitch Slides
Startup Turkey 2014 VitalCV Pitch Slides
 
Dove- Evolution of a brand
Dove- Evolution of a brandDove- Evolution of a brand
Dove- Evolution of a brand
 
TH TRUE HEAL - Brand Love Key
TH TRUE HEAL - Brand Love KeyTH TRUE HEAL - Brand Love Key
TH TRUE HEAL - Brand Love Key
 
What 1 Million Tweets Taught Us About Tweeting Successfully
What 1 Million Tweets Taught Us About Tweeting SuccessfullyWhat 1 Million Tweets Taught Us About Tweeting Successfully
What 1 Million Tweets Taught Us About Tweeting Successfully
 
The Death of Trial and Error, SMX London 2013 by Sean Malseed of SEMrush.com
The Death of Trial and Error, SMX London 2013 by Sean Malseed of SEMrush.comThe Death of Trial and Error, SMX London 2013 by Sean Malseed of SEMrush.com
The Death of Trial and Error, SMX London 2013 by Sean Malseed of SEMrush.com
 
10 Inconvenient Truths About Creating Branded Content with Influencers
10 Inconvenient Truths About Creating Branded Content with Influencers10 Inconvenient Truths About Creating Branded Content with Influencers
10 Inconvenient Truths About Creating Branded Content with Influencers
 
Above the Fold: Web Typography for Print Designers
Above the Fold: Web Typography for Print DesignersAbove the Fold: Web Typography for Print Designers
Above the Fold: Web Typography for Print Designers
 
Management Gurus
Management GurusManagement Gurus
Management Gurus
 
How to write a creative brief
How to write a creative briefHow to write a creative brief
How to write a creative brief
 

Similaire à ontology based- data_integration.

ontology based- data_integration.ali_aljadaa.1125048
ontology based- data_integration.ali_aljadaa.1125048ontology based- data_integration.ali_aljadaa.1125048
ontology based- data_integration.ali_aljadaa.1125048AliAlJadaa
 
ontology meets big data: immutability
ontology meets big data:immutabilityontology meets big data:immutability
ontology meets big data: immutabilityChris Partridge
 
Mining knowledge graphs to map heterogeneous relations between the internet o...
Mining knowledge graphs to map heterogeneous relations between the internet o...Mining knowledge graphs to map heterogeneous relations between the internet o...
Mining knowledge graphs to map heterogeneous relations between the internet o...IJECEIAES
 
ICDMWorkshopProposal.doc
ICDMWorkshopProposal.docICDMWorkshopProposal.doc
ICDMWorkshopProposal.docbutest
 
Concept integration using edit distance and n gram match
Concept integration using edit distance and n gram match Concept integration using edit distance and n gram match
Concept integration using edit distance and n gram match ijdms
 
Sci Know Mine 2013: What can we learn from topic modeling on 350M academic do...
Sci Know Mine 2013: What can we learn from topic modeling on 350M academic do...Sci Know Mine 2013: What can we learn from topic modeling on 350M academic do...
Sci Know Mine 2013: What can we learn from topic modeling on 350M academic do...William Gunn
 
Towards Ontology Development Based on Relational Database
Towards Ontology Development Based on Relational DatabaseTowards Ontology Development Based on Relational Database
Towards Ontology Development Based on Relational Databaseijbuiiir1
 
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...ijceronline
 
Research Inventy : International Journal of Engineering and Science
Research Inventy : International Journal of Engineering and ScienceResearch Inventy : International Journal of Engineering and Science
Research Inventy : International Journal of Engineering and Scienceresearchinventy
 
Knowledge Management in the AI Driven Scintific System
Knowledge Management in the AI Driven Scintific SystemKnowledge Management in the AI Driven Scintific System
Knowledge Management in the AI Driven Scintific SystemSubhasis Dasgupta
 
USING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEY
USING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEYUSING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEY
USING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEYcseij
 
Representation of ontology by Classified Interrelated object model
Representation of ontology by Classified Interrelated object modelRepresentation of ontology by Classified Interrelated object model
Representation of ontology by Classified Interrelated object modelMihika Shah
 
2012.10 - Workshop on Semantic Statistics - 1
2012.10 - Workshop on Semantic Statistics - 12012.10 - Workshop on Semantic Statistics - 1
2012.10 - Workshop on Semantic Statistics - 1Dr.-Ing. Thomas Hartmann
 
Tragedy of the (Data) Commons
Tragedy of the (Data) CommonsTragedy of the (Data) Commons
Tragedy of the (Data) CommonsJames Hendler
 
Scientific Knowledge Graphs: an Overview
Scientific Knowledge Graphs: an OverviewScientific Knowledge Graphs: an Overview
Scientific Knowledge Graphs: an OverviewAngelo Salatino
 
Tragedy of the Data Commons (ODSC-East, 2021)
Tragedy of the Data Commons (ODSC-East, 2021)Tragedy of the Data Commons (ODSC-East, 2021)
Tragedy of the Data Commons (ODSC-East, 2021)James Hendler
 
A study of existing ontologies in the io t domain
A study of existing ontologies in the io t domainA study of existing ontologies in the io t domain
A study of existing ontologies in the io t domainSof Ouni
 

Similaire à ontology based- data_integration. (20)

ontology based- data_integration.ali_aljadaa.1125048
ontology based- data_integration.ali_aljadaa.1125048ontology based- data_integration.ali_aljadaa.1125048
ontology based- data_integration.ali_aljadaa.1125048
 
ontology meets big data: immutability
ontology meets big data:immutabilityontology meets big data:immutability
ontology meets big data: immutability
 
Mining knowledge graphs to map heterogeneous relations between the internet o...
Mining knowledge graphs to map heterogeneous relations between the internet o...Mining knowledge graphs to map heterogeneous relations between the internet o...
Mining knowledge graphs to map heterogeneous relations between the internet o...
 
ICDMWorkshopProposal.doc
ICDMWorkshopProposal.docICDMWorkshopProposal.doc
ICDMWorkshopProposal.doc
 
Concept integration using edit distance and n gram match
Concept integration using edit distance and n gram match Concept integration using edit distance and n gram match
Concept integration using edit distance and n gram match
 
M045067275
M045067275M045067275
M045067275
 
Sci Know Mine 2013: What can we learn from topic modeling on 350M academic do...
Sci Know Mine 2013: What can we learn from topic modeling on 350M academic do...Sci Know Mine 2013: What can we learn from topic modeling on 350M academic do...
Sci Know Mine 2013: What can we learn from topic modeling on 350M academic do...
 
Towards Ontology Development Based on Relational Database
Towards Ontology Development Based on Relational DatabaseTowards Ontology Development Based on Relational Database
Towards Ontology Development Based on Relational Database
 
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
 
119 128
119 128119 128
119 128
 
119 128
119 128119 128
119 128
 
Research Inventy : International Journal of Engineering and Science
Research Inventy : International Journal of Engineering and ScienceResearch Inventy : International Journal of Engineering and Science
Research Inventy : International Journal of Engineering and Science
 
Knowledge Management in the AI Driven Scintific System
Knowledge Management in the AI Driven Scintific SystemKnowledge Management in the AI Driven Scintific System
Knowledge Management in the AI Driven Scintific System
 
USING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEY
USING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEYUSING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEY
USING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEY
 
Representation of ontology by Classified Interrelated object model
Representation of ontology by Classified Interrelated object modelRepresentation of ontology by Classified Interrelated object model
Representation of ontology by Classified Interrelated object model
 
2012.10 - Workshop on Semantic Statistics - 1
2012.10 - Workshop on Semantic Statistics - 12012.10 - Workshop on Semantic Statistics - 1
2012.10 - Workshop on Semantic Statistics - 1
 
Tragedy of the (Data) Commons
Tragedy of the (Data) CommonsTragedy of the (Data) Commons
Tragedy of the (Data) Commons
 
Scientific Knowledge Graphs: an Overview
Scientific Knowledge Graphs: an OverviewScientific Knowledge Graphs: an Overview
Scientific Knowledge Graphs: an Overview
 
Tragedy of the Data Commons (ODSC-East, 2021)
Tragedy of the Data Commons (ODSC-East, 2021)Tragedy of the Data Commons (ODSC-East, 2021)
Tragedy of the Data Commons (ODSC-East, 2021)
 
A study of existing ontologies in the io t domain
A study of existing ontologies in the io t domainA study of existing ontologies in the io t domain
A study of existing ontologies in the io t domain
 

Dernier

Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationSafe Software
 
Artificial intelligence in cctv survelliance.pptx
Artificial intelligence in cctv survelliance.pptxArtificial intelligence in cctv survelliance.pptx
Artificial intelligence in cctv survelliance.pptxhariprasad279825
 
CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):comworks
 
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage CostLeverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage CostZilliz
 
Story boards and shot lists for my a level piece
Story boards and shot lists for my a level pieceStory boards and shot lists for my a level piece
Story boards and shot lists for my a level piececharlottematthew16
 
Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Scott Keck-Warren
 
My Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationMy Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationRidwan Fadjar
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationSlibray Presentation
 
Training state-of-the-art general text embedding
Training state-of-the-art general text embeddingTraining state-of-the-art general text embedding
Training state-of-the-art general text embeddingZilliz
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenHervé Boutemy
 
Commit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyCommit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyAlfredo García Lavilla
 
Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!Manik S Magar
 
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmaticsKotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmaticscarlostorres15106
 
Vector Databases 101 - An introduction to the world of Vector Databases
Vector Databases 101 - An introduction to the world of Vector DatabasesVector Databases 101 - An introduction to the world of Vector Databases
Vector Databases 101 - An introduction to the world of Vector DatabasesZilliz
 
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr LapshynFwdays
 
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Mark Simos
 
Vertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering TipsVertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering TipsMiki Katsuragi
 
WordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your BrandWordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your Brandgvaughan
 
Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfAlex Barbosa Coqueiro
 

Dernier (20)

Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
 
Artificial intelligence in cctv survelliance.pptx
Artificial intelligence in cctv survelliance.pptxArtificial intelligence in cctv survelliance.pptx
Artificial intelligence in cctv survelliance.pptx
 
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptxE-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
 
CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):
 
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage CostLeverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
 
Story boards and shot lists for my a level piece
Story boards and shot lists for my a level pieceStory boards and shot lists for my a level piece
Story boards and shot lists for my a level piece
 
Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024
 
My Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationMy Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 Presentation
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck Presentation
 
Training state-of-the-art general text embedding
Training state-of-the-art general text embeddingTraining state-of-the-art general text embedding
Training state-of-the-art general text embedding
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache Maven
 
Commit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyCommit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easy
 
Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!
 
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmaticsKotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
 
Vector Databases 101 - An introduction to the world of Vector Databases
Vector Databases 101 - An introduction to the world of Vector DatabasesVector Databases 101 - An introduction to the world of Vector Databases
Vector Databases 101 - An introduction to the world of Vector Databases
 
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
 
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
 
Vertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering TipsVertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering Tips
 
WordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your BrandWordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your Brand
 
Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdf
 

ontology based- data_integration.

  • 1. Knowledge Engineering Course (SCOM7348) University of Birzeit, Palestine December, 2012 Synthesis Paper Talk Ontology-Based Data Integration Ali Ahmad Al Jadaa Master of Computing, Birzeit University Ali.ps@live.com This is a student talk, at the Knowledge Engineering course, each student is is asked to present his/her synthesis paper. Course Page: http://jarrar-courses.blogspot.com/2011/09/knowledgeengineering-fall2011.html 1
  • 2. Content • Abstract • What is data integration • What is Semantic • What is Ontology • Heterogeneity conflicts • References 2
  • 3. Abstract Many applications required integration of data from different sources, such as data mining and data / information fusion, etc., and the problem facing any project like this is that data structure different way and the terms and their meanings different from each other, and in this paper we will discuss the most important problems and how solve it using ontology. 3
  • 4. What is data integration • Data coming from different sources and providing users with a unified view of these data . 4
  • 5. What is Semantic • Understand the meaning . • Relation between signifiers . • Difference with other ≠ 5
  • 6. What is Ontology • Set of concepts within a domain, and the relationships between pairs of concepts. It can be used to model a domain and support reasoning about entities . • Dictionary Computers can be understand • List of things that exist • Description of the kinds of entities there are and how they are related 6
  • 7. Quick Review • Now we know About semantic and ontology and data integration . • We see if we make an Ontology of data integration ,so we will Collide of different heterogeneity of data source . • So we must know about Heterogeneity conflicts 7
  • 8. Heterogeneity conflicts • Syntactic heterogeneity : differences between data models (entity-relationship, relational, object oriented) . • Structural heterogeneity (schematic heterogeneity) : different information systems store their data in different structures. • Semantic heterogeneity :the meaning of the information that is interchanged must be understood across the systems 8
  • 9. References • Ontology-Based Integration of Data Sources Michel Gagnon Defence R&D Canada – Valcartier Department National Defence Québec, Canada Michel.Gagnon@drdc-rddc.g • Ontology-Based Data Integration Methods: A Framework for Comparison Agustina Buccella*, Alejandra Cechich* and Nieves R. Brisaboa • Wikipedia, the free encyclopedia en.wikipedia.org/wiki/Data_integration 9
  • 10. Thank You 10