SlideShare una empresa de Scribd logo
1 de 27
Descargar para leer sin conexión
Pradeep Pillai and Michael Kandefer Department of Computer Science and Engineering University at Buffalo  Buffalo, NY, 14260 {pbpillai,mwk3}@cse.buffalo.edu Schema Matching and Ontology Mapping: A Comparison
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Introduction
[object Object],[object Object],[object Object],[object Object],[object Object],AGENDA
[object Object],[object Object],[object Object],[object Object],Schema Matching Definition
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Schema matching topology
[object Object],[object Object],[object Object],[object Object],[object Object],Element-based: String mappings
Element-based: String mappings - Prefix(3) - 3-Gram(2) - Edit distance(5) PurchaseOrder DeliverTo InvoiceTo Items Address Address Item Street City City Street ItemCount ItemNumber Quantity UnitOfMeasure PO POShipTo POBillTo POLines Item Street City City Street Count Line Qty UoM
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Element-based: Language mappings
Element-based: Language mappings POBillTo InvoiceTo <PO,Bill,To> <Invoice,To> Tokenize: <PO,Bill> <Invoice> Elimination: Expansion: <Purchase,Order,Bill> <Invoice> <Purchase,Order,Bill> <Bill> Related form: PurchaseOrder DeliverTo InvoiceTo Items Address Address Item Street City City Street ItemCount ItemNumber Quantity UnitOfMeasure PO POShipTo POBillTo POLines Item Street City City Street Count Line Qty UoM
[object Object],[object Object],[object Object],[object Object],[object Object],Structure-based: Graph/tree mappings
[object Object],[object Object],[object Object],[object Object],[object Object],Ontology Mapping Problem
[object Object],[object Object],[object Object],[object Object],Ontology Mapping Research
[object Object],[object Object],[object Object],[object Object],Survey : State of the Art
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],GLUE
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],PROMPT
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],IR Approaches
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],QOM
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Schemas and Ontologies
[object Object],[object Object],[object Object],Similarities
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Differences
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Consequences of Differences
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Schema -> Ontology
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Schema Matching Algorithm
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Tree Matcher
Cupid Mappings - High  lsim (A1) - High  wsim (A2) - Matches PurchaseOrder DeliverTo InvoiceTo Items Address Address Item Street City City Street ItemCount ItemNumber Quantity UnitOfMeasure PO POShipTo POBillTo POLines Item Street City City Street Count Line Qty UoM
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Conclusions
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],References

Más contenido relacionado

La actualidad más candente

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 BASED DATA ACCESS
ONTOLOGY BASED DATA ACCESSONTOLOGY BASED DATA ACCESS
ONTOLOGY BASED DATA ACCESSKishan Patel
 
Semantic Web, Ontology, and Ontology Learning: Introduction
Semantic Web, Ontology, and Ontology Learning: IntroductionSemantic Web, Ontology, and Ontology Learning: Introduction
Semantic Web, Ontology, and Ontology Learning: IntroductionKent State University
 
The Standardization of Semantic Web Ontology
The Standardization of Semantic Web OntologyThe Standardization of Semantic Web Ontology
The Standardization of Semantic Web OntologyMyungjin Lee
 
Lect6-An introduction to ontologies and ontology development
Lect6-An introduction to ontologies and ontology developmentLect6-An introduction to ontologies and ontology development
Lect6-An introduction to ontologies and ontology developmentAntonio Moreno
 
Using Text Comprehension Model for Learning Concepts, Context, and Topic of...
Using Text Comprehension Model for  Learning Concepts, Context, and Topic  of...Using Text Comprehension Model for  Learning Concepts, Context, and Topic  of...
Using Text Comprehension Model for Learning Concepts, Context, and Topic of...Kent State University
 
ONTOLOGICAL MODEL FOR CHARACTER RECOGNITION BASED ON SPATIAL RELATIONS
ONTOLOGICAL MODEL FOR CHARACTER RECOGNITION BASED ON SPATIAL RELATIONSONTOLOGICAL MODEL FOR CHARACTER RECOGNITION BASED ON SPATIAL RELATIONS
ONTOLOGICAL MODEL FOR CHARACTER RECOGNITION BASED ON SPATIAL RELATIONSsipij
 
4 semantic web and ontology
4 semantic web and ontology4 semantic web and ontology
4 semantic web and ontologySanthosh Kannan
 
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
 
Ontology Engineering for Big Data
Ontology Engineering for Big DataOntology Engineering for Big Data
Ontology Engineering for Big DataKouji Kozaki
 
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
 
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
 
Introduction to Ontology Concepts and Terminology
Introduction to Ontology Concepts and TerminologyIntroduction to Ontology Concepts and Terminology
Introduction to Ontology Concepts and TerminologySteven Miller
 
NE7012- SOCIAL NETWORK ANALYSIS
NE7012- SOCIAL NETWORK ANALYSISNE7012- SOCIAL NETWORK ANALYSIS
NE7012- SOCIAL NETWORK ANALYSISrathnaarul
 

La actualidad más candente (20)

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
OntologyOntology
Ontology
 
ONTOLOGY BASED DATA ACCESS
ONTOLOGY BASED DATA ACCESSONTOLOGY BASED DATA ACCESS
ONTOLOGY BASED DATA ACCESS
 
Ontology
Ontology Ontology
Ontology
 
Semantic Web, Ontology, and Ontology Learning: Introduction
Semantic Web, Ontology, and Ontology Learning: IntroductionSemantic Web, Ontology, and Ontology Learning: Introduction
Semantic Web, Ontology, and Ontology Learning: Introduction
 
The Standardization of Semantic Web Ontology
The Standardization of Semantic Web OntologyThe Standardization of Semantic Web Ontology
The Standardization of Semantic Web Ontology
 
Lect6-An introduction to ontologies and ontology development
Lect6-An introduction to ontologies and ontology developmentLect6-An introduction to ontologies and ontology development
Lect6-An introduction to ontologies and ontology development
 
Using Text Comprehension Model for Learning Concepts, Context, and Topic of...
Using Text Comprehension Model for  Learning Concepts, Context, and Topic  of...Using Text Comprehension Model for  Learning Concepts, Context, and Topic  of...
Using Text Comprehension Model for Learning Concepts, Context, and Topic of...
 
ONTOLOGICAL MODEL FOR CHARACTER RECOGNITION BASED ON SPATIAL RELATIONS
ONTOLOGICAL MODEL FOR CHARACTER RECOGNITION BASED ON SPATIAL RELATIONSONTOLOGICAL MODEL FOR CHARACTER RECOGNITION BASED ON SPATIAL RELATIONS
ONTOLOGICAL MODEL FOR CHARACTER RECOGNITION BASED ON SPATIAL RELATIONS
 
Ijetcas14 624
Ijetcas14 624Ijetcas14 624
Ijetcas14 624
 
Ijetcas14 639
Ijetcas14 639Ijetcas14 639
Ijetcas14 639
 
4 semantic web and ontology
4 semantic web and ontology4 semantic web and ontology
4 semantic web and ontology
 
Ontology-based Classification and Faceted Search Interface for APIs
Ontology-based Classification and Faceted Search Interface for APIsOntology-based Classification and Faceted Search Interface for APIs
Ontology-based Classification and Faceted Search Interface for APIs
 
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
 
Ontology Engineering for Big Data
Ontology Engineering for Big DataOntology Engineering for Big Data
Ontology Engineering for Big Data
 
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
 
Ontology
OntologyOntology
Ontology
 
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
 
Introduction to Ontology Concepts and Terminology
Introduction to Ontology Concepts and TerminologyIntroduction to Ontology Concepts and Terminology
Introduction to Ontology Concepts and Terminology
 
NE7012- SOCIAL NETWORK ANALYSIS
NE7012- SOCIAL NETWORK ANALYSISNE7012- SOCIAL NETWORK ANALYSIS
NE7012- SOCIAL NETWORK ANALYSIS
 

Similar a Data Integration Ontology Mapping

SEMANTIC INTEGRATION FOR AUTOMATIC ONTOLOGY MAPPING
SEMANTIC INTEGRATION FOR AUTOMATIC ONTOLOGY MAPPING SEMANTIC INTEGRATION FOR AUTOMATIC ONTOLOGY MAPPING
SEMANTIC INTEGRATION FOR AUTOMATIC ONTOLOGY MAPPING cscpconf
 
Barzilay & Lapata 2008 presentation
Barzilay & Lapata 2008 presentationBarzilay & Lapata 2008 presentation
Barzilay & Lapata 2008 presentationRichard Littauer
 
SWSN UNIT-3.pptx we can information about swsn professional
SWSN UNIT-3.pptx we can information about swsn professionalSWSN UNIT-3.pptx we can information about swsn professional
SWSN UNIT-3.pptx we can information about swsn professionalgowthamnaidu0986
 
X Som Graduation Presentation
X Som   Graduation PresentationX Som   Graduation Presentation
X Som Graduation PresentationGiorgio Orsi
 
Conceptual similarity measurement algorithm for domain specific ontology[
Conceptual similarity measurement algorithm for domain specific ontology[Conceptual similarity measurement algorithm for domain specific ontology[
Conceptual similarity measurement algorithm for domain specific ontology[Zac Darcy
 
Conceptual Similarity Measurement Algorithm For Domain Specific Ontology
Conceptual Similarity Measurement Algorithm For Domain Specific OntologyConceptual Similarity Measurement Algorithm For Domain Specific Ontology
Conceptual Similarity Measurement Algorithm For Domain Specific OntologyZac Darcy
 
Interactive Analysis of Word Vector Embeddings
Interactive Analysis of Word Vector EmbeddingsInteractive Analysis of Word Vector Embeddings
Interactive Analysis of Word Vector Embeddingsgleicher
 
A NAIVE METHOD FOR ONTOLOGY CONSTRUCTION
A NAIVE METHOD FOR ONTOLOGY CONSTRUCTIONA NAIVE METHOD FOR ONTOLOGY CONSTRUCTION
A NAIVE METHOD FOR ONTOLOGY CONSTRUCTIONijscai
 
A Naive Method For Ontology Construction
A Naive Method For Ontology Construction A Naive Method For Ontology Construction
A Naive Method For Ontology Construction IJSCAI Journal
 
A NAIVE METHOD FOR ONTOLOGY CONSTRUCTION
A NAIVE METHOD FOR ONTOLOGY CONSTRUCTIONA NAIVE METHOD FOR ONTOLOGY CONSTRUCTION
A NAIVE METHOD FOR ONTOLOGY CONSTRUCTIONijscai
 
Dexa2007 Orsi V1.5
Dexa2007 Orsi V1.5Dexa2007 Orsi V1.5
Dexa2007 Orsi V1.5Giorgio Orsi
 
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
 
Ontology Matching Based on hypernym, hyponym, holonym, and meronym Sets in Wo...
Ontology Matching Based on hypernym, hyponym, holonym, and meronym Sets in Wo...Ontology Matching Based on hypernym, hyponym, holonym, and meronym Sets in Wo...
Ontology Matching Based on hypernym, hyponym, holonym, and meronym Sets in Wo...dannyijwest
 
{Ontology: Resource} x {Matching : Mapping} x {Schema : Instance} :: Compone...
{Ontology: Resource} x {Matching : Mapping} x {Schema : Instance} :: Compone...{Ontology: Resource} x {Matching : Mapping} x {Schema : Instance} :: Compone...
{Ontology: Resource} x {Matching : Mapping} x {Schema : Instance} :: Compone...Amit Sheth
 
TEXT PLAGIARISM CHECKER USING FRIENDSHIP GRAPHS
TEXT PLAGIARISM CHECKER USING FRIENDSHIP GRAPHSTEXT PLAGIARISM CHECKER USING FRIENDSHIP GRAPHS
TEXT PLAGIARISM CHECKER USING FRIENDSHIP GRAPHSijcsit
 
IDENTIFYING THE SEMANTIC RELATIONS ON UNSTRUCTURED DATA
IDENTIFYING THE SEMANTIC RELATIONS ON UNSTRUCTURED DATAIDENTIFYING THE SEMANTIC RELATIONS ON UNSTRUCTURED DATA
IDENTIFYING THE SEMANTIC RELATIONS ON UNSTRUCTURED DATAijistjournal
 
Identifying the semantic relations on
Identifying the semantic relations onIdentifying the semantic relations on
Identifying the semantic relations onijistjournal
 
Image-Based Literal Node Matching for Linked Data Integration
Image-Based Literal Node Matching for Linked Data IntegrationImage-Based Literal Node Matching for Linked Data Integration
Image-Based Literal Node Matching for Linked Data IntegrationIJwest
 
IRJET- Short-Text Semantic Similarity using Glove Word Embedding
IRJET- Short-Text Semantic Similarity using Glove Word EmbeddingIRJET- Short-Text Semantic Similarity using Glove Word Embedding
IRJET- Short-Text Semantic Similarity using Glove Word EmbeddingIRJET Journal
 

Similar a Data Integration Ontology Mapping (20)

SEMANTIC INTEGRATION FOR AUTOMATIC ONTOLOGY MAPPING
SEMANTIC INTEGRATION FOR AUTOMATIC ONTOLOGY MAPPING SEMANTIC INTEGRATION FOR AUTOMATIC ONTOLOGY MAPPING
SEMANTIC INTEGRATION FOR AUTOMATIC ONTOLOGY MAPPING
 
Barzilay & Lapata 2008 presentation
Barzilay & Lapata 2008 presentationBarzilay & Lapata 2008 presentation
Barzilay & Lapata 2008 presentation
 
SWSN UNIT-3.pptx we can information about swsn professional
SWSN UNIT-3.pptx we can information about swsn professionalSWSN UNIT-3.pptx we can information about swsn professional
SWSN UNIT-3.pptx we can information about swsn professional
 
X Som Graduation Presentation
X Som   Graduation PresentationX Som   Graduation Presentation
X Som Graduation Presentation
 
Conceptual similarity measurement algorithm for domain specific ontology[
Conceptual similarity measurement algorithm for domain specific ontology[Conceptual similarity measurement algorithm for domain specific ontology[
Conceptual similarity measurement algorithm for domain specific ontology[
 
Conceptual Similarity Measurement Algorithm For Domain Specific Ontology
Conceptual Similarity Measurement Algorithm For Domain Specific OntologyConceptual Similarity Measurement Algorithm For Domain Specific Ontology
Conceptual Similarity Measurement Algorithm For Domain Specific Ontology
 
Interactive Analysis of Word Vector Embeddings
Interactive Analysis of Word Vector EmbeddingsInteractive Analysis of Word Vector Embeddings
Interactive Analysis of Word Vector Embeddings
 
A NAIVE METHOD FOR ONTOLOGY CONSTRUCTION
A NAIVE METHOD FOR ONTOLOGY CONSTRUCTIONA NAIVE METHOD FOR ONTOLOGY CONSTRUCTION
A NAIVE METHOD FOR ONTOLOGY CONSTRUCTION
 
A Naive Method For Ontology Construction
A Naive Method For Ontology Construction A Naive Method For Ontology Construction
A Naive Method For Ontology Construction
 
A NAIVE METHOD FOR ONTOLOGY CONSTRUCTION
A NAIVE METHOD FOR ONTOLOGY CONSTRUCTIONA NAIVE METHOD FOR ONTOLOGY CONSTRUCTION
A NAIVE METHOD FOR ONTOLOGY CONSTRUCTION
 
Dexa2007 Orsi V1.5
Dexa2007 Orsi V1.5Dexa2007 Orsi V1.5
Dexa2007 Orsi V1.5
 
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
 
L1803058388
L1803058388L1803058388
L1803058388
 
Ontology Matching Based on hypernym, hyponym, holonym, and meronym Sets in Wo...
Ontology Matching Based on hypernym, hyponym, holonym, and meronym Sets in Wo...Ontology Matching Based on hypernym, hyponym, holonym, and meronym Sets in Wo...
Ontology Matching Based on hypernym, hyponym, holonym, and meronym Sets in Wo...
 
{Ontology: Resource} x {Matching : Mapping} x {Schema : Instance} :: Compone...
{Ontology: Resource} x {Matching : Mapping} x {Schema : Instance} :: Compone...{Ontology: Resource} x {Matching : Mapping} x {Schema : Instance} :: Compone...
{Ontology: Resource} x {Matching : Mapping} x {Schema : Instance} :: Compone...
 
TEXT PLAGIARISM CHECKER USING FRIENDSHIP GRAPHS
TEXT PLAGIARISM CHECKER USING FRIENDSHIP GRAPHSTEXT PLAGIARISM CHECKER USING FRIENDSHIP GRAPHS
TEXT PLAGIARISM CHECKER USING FRIENDSHIP GRAPHS
 
IDENTIFYING THE SEMANTIC RELATIONS ON UNSTRUCTURED DATA
IDENTIFYING THE SEMANTIC RELATIONS ON UNSTRUCTURED DATAIDENTIFYING THE SEMANTIC RELATIONS ON UNSTRUCTURED DATA
IDENTIFYING THE SEMANTIC RELATIONS ON UNSTRUCTURED DATA
 
Identifying the semantic relations on
Identifying the semantic relations onIdentifying the semantic relations on
Identifying the semantic relations on
 
Image-Based Literal Node Matching for Linked Data Integration
Image-Based Literal Node Matching for Linked Data IntegrationImage-Based Literal Node Matching for Linked Data Integration
Image-Based Literal Node Matching for Linked Data Integration
 
IRJET- Short-Text Semantic Similarity using Glove Word Embedding
IRJET- Short-Text Semantic Similarity using Glove Word EmbeddingIRJET- Short-Text Semantic Similarity using Glove Word Embedding
IRJET- Short-Text Semantic Similarity using Glove Word Embedding
 

Último

Scale your database traffic with Read & Write split using MySQL Router
Scale your database traffic with Read & Write split using MySQL RouterScale your database traffic with Read & Write split using MySQL Router
Scale your database traffic with Read & Write split using MySQL RouterMydbops
 
Zeshan Sattar- Assessing the skill requirements and industry expectations for...
Zeshan Sattar- Assessing the skill requirements and industry expectations for...Zeshan Sattar- Assessing the skill requirements and industry expectations for...
Zeshan Sattar- Assessing the skill requirements and industry expectations for...itnewsafrica
 
Emixa Mendix Meetup 11 April 2024 about Mendix Native development
Emixa Mendix Meetup 11 April 2024 about Mendix Native developmentEmixa Mendix Meetup 11 April 2024 about Mendix Native development
Emixa Mendix Meetup 11 April 2024 about Mendix Native developmentPim van der Noll
 
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better StrongerModern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better Strongerpanagenda
 
Varsha Sewlal- Cyber Attacks on Critical Critical Infrastructure
Varsha Sewlal- Cyber Attacks on Critical Critical InfrastructureVarsha Sewlal- Cyber Attacks on Critical Critical Infrastructure
Varsha Sewlal- Cyber Attacks on Critical Critical Infrastructureitnewsafrica
 
So einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdfSo einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdfpanagenda
 
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS:  6 Ways to Automate Your Data IntegrationBridging Between CAD & GIS:  6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integrationmarketing932765
 
TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024Lonnie McRorey
 
A Deep Dive on Passkeys: FIDO Paris Seminar.pptx
A Deep Dive on Passkeys: FIDO Paris Seminar.pptxA Deep Dive on Passkeys: FIDO Paris Seminar.pptx
A Deep Dive on Passkeys: FIDO Paris Seminar.pptxLoriGlavin3
 
TrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data PrivacyTrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data PrivacyTrustArc
 
UiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPathCommunity
 
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxThe Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxLoriGlavin3
 
Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Farhan Tariq
 
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptxThe Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptxLoriGlavin3
 
Generative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdfGenerative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdfIngrid Airi González
 
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Mark Goldstein
 
Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Kaya Weers
 
Moving Beyond Passwords: FIDO Paris Seminar.pdf
Moving Beyond Passwords: FIDO Paris Seminar.pdfMoving Beyond Passwords: FIDO Paris Seminar.pdf
Moving Beyond Passwords: FIDO Paris Seminar.pdfLoriGlavin3
 
2024 April Patch Tuesday
2024 April Patch Tuesday2024 April Patch Tuesday
2024 April Patch TuesdayIvanti
 
Abdul Kader Baba- Managing Cybersecurity Risks and Compliance Requirements i...
Abdul Kader Baba- Managing Cybersecurity Risks  and Compliance Requirements i...Abdul Kader Baba- Managing Cybersecurity Risks  and Compliance Requirements i...
Abdul Kader Baba- Managing Cybersecurity Risks and Compliance Requirements i...itnewsafrica
 

Último (20)

Scale your database traffic with Read & Write split using MySQL Router
Scale your database traffic with Read & Write split using MySQL RouterScale your database traffic with Read & Write split using MySQL Router
Scale your database traffic with Read & Write split using MySQL Router
 
Zeshan Sattar- Assessing the skill requirements and industry expectations for...
Zeshan Sattar- Assessing the skill requirements and industry expectations for...Zeshan Sattar- Assessing the skill requirements and industry expectations for...
Zeshan Sattar- Assessing the skill requirements and industry expectations for...
 
Emixa Mendix Meetup 11 April 2024 about Mendix Native development
Emixa Mendix Meetup 11 April 2024 about Mendix Native developmentEmixa Mendix Meetup 11 April 2024 about Mendix Native development
Emixa Mendix Meetup 11 April 2024 about Mendix Native development
 
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better StrongerModern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
 
Varsha Sewlal- Cyber Attacks on Critical Critical Infrastructure
Varsha Sewlal- Cyber Attacks on Critical Critical InfrastructureVarsha Sewlal- Cyber Attacks on Critical Critical Infrastructure
Varsha Sewlal- Cyber Attacks on Critical Critical Infrastructure
 
So einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdfSo einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdf
 
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS:  6 Ways to Automate Your Data IntegrationBridging Between CAD & GIS:  6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
 
TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024
 
A Deep Dive on Passkeys: FIDO Paris Seminar.pptx
A Deep Dive on Passkeys: FIDO Paris Seminar.pptxA Deep Dive on Passkeys: FIDO Paris Seminar.pptx
A Deep Dive on Passkeys: FIDO Paris Seminar.pptx
 
TrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data PrivacyTrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data Privacy
 
UiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to Hero
 
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxThe Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
 
Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...
 
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptxThe Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
 
Generative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdfGenerative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdf
 
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
 
Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)
 
Moving Beyond Passwords: FIDO Paris Seminar.pdf
Moving Beyond Passwords: FIDO Paris Seminar.pdfMoving Beyond Passwords: FIDO Paris Seminar.pdf
Moving Beyond Passwords: FIDO Paris Seminar.pdf
 
2024 April Patch Tuesday
2024 April Patch Tuesday2024 April Patch Tuesday
2024 April Patch Tuesday
 
Abdul Kader Baba- Managing Cybersecurity Risks and Compliance Requirements i...
Abdul Kader Baba- Managing Cybersecurity Risks  and Compliance Requirements i...Abdul Kader Baba- Managing Cybersecurity Risks  and Compliance Requirements i...
Abdul Kader Baba- Managing Cybersecurity Risks and Compliance Requirements i...
 

Data Integration Ontology Mapping

  • 1. Pradeep Pillai and Michael Kandefer Department of Computer Science and Engineering University at Buffalo Buffalo, NY, 14260 {pbpillai,mwk3}@cse.buffalo.edu Schema Matching and Ontology Mapping: A Comparison
  • 2.
  • 3.
  • 4.
  • 5.
  • 6.
  • 7. Element-based: String mappings - Prefix(3) - 3-Gram(2) - Edit distance(5) PurchaseOrder DeliverTo InvoiceTo Items Address Address Item Street City City Street ItemCount ItemNumber Quantity UnitOfMeasure PO POShipTo POBillTo POLines Item Street City City Street Count Line Qty UoM
  • 8.
  • 9. Element-based: Language mappings POBillTo InvoiceTo <PO,Bill,To> <Invoice,To> Tokenize: <PO,Bill> <Invoice> Elimination: Expansion: <Purchase,Order,Bill> <Invoice> <Purchase,Order,Bill> <Bill> Related form: PurchaseOrder DeliverTo InvoiceTo Items Address Address Item Street City City Street ItemCount ItemNumber Quantity UnitOfMeasure PO POShipTo POBillTo POLines Item Street City City Street Count Line Qty UoM
  • 10.
  • 11.
  • 12.
  • 13.
  • 14.
  • 15.
  • 16.
  • 17.
  • 18.
  • 19.
  • 20.
  • 21.
  • 22.
  • 23.
  • 24.
  • 25. Cupid Mappings - High lsim (A1) - High wsim (A2) - Matches PurchaseOrder DeliverTo InvoiceTo Items Address Address Item Street City City Street ItemCount ItemNumber Quantity UnitOfMeasure PO POShipTo POBillTo POLines Item Street City City Street Count Line Qty UoM
  • 26.
  • 27.