SlideShare a Scribd company logo
1 of 1
Download to read offline
Step 1: Link PredictionStep 1: Link Prediction
UWN's Multilingual GraphUWN's Multilingual Graph
• Goal: Richer, Less Sparse Features
• How: Model Synonymy, Polysemy,
Semantic Relatedness, Taxonomy.
(within and across languages)
UWN: A Large Multilingual
Lexical Knowledge Base
Gerard de Melo and Gerhard Weikum
ICSI Berkeley / Max Planck Institute for Informatics
Better NLP Features using Lexical SemanticsBetter NLP Features using Lexical Semantics
More Information:
www.lexvo.org/gdm/
• Downloadable API
available
• Web User Interface
EntityEntitypor: “entidade”por: “entidade”
cmn: “ 制度”cmn: “ 制度” InstitutionInstitution
Educational
institution
Educational
institution
UniversityUniversity
heb: “‫ישות‬.”heb: “‫ישות‬.”
deu: “Bildungs-
einrichtung”
deu: “Bildungs-
einrichtung”
srp:
“универзитете”
srp:
“универзитете”
...
University of
California, Berkeley
University of
California, Berkeley
eng: “Berkeley ”eng: “Berkeley ”
ara:
“‫كينونة‬ ،‫”وجود‬
ara:
“‫كينونة‬ ،‫”وجود‬
tha: “ สถาบัน”tha: “ สถาบัน”
fin: “oppilaitos”fin: “oppilaitos”
fin: “yliopisto”fin: “yliopisto”
cmn:
“ 柏克萊加州大學”
cmn:
“ 柏克萊加州大學”
Berkeley, CABerkeley, CA
George BerkeleyGeorge Berkeley
deu: “Schulgebäude”deu: “Schulgebäude”
school
(group of fish)
school
(group of fish)
school
(institution)
school
(institution)
school
(building)
school
(building)
deu: “Schulhaus”deu: “Schulhaus”
deu: “Fischschwarm”deu: “Fischschwarm”
ces: “hejno”ces: “hejno”
fra: “banc”fra: “banc”
chv: “шкул”chv: “шкул”
jpn: “ 学校”jpn: “ 学校”
kor: “ 학교”kor: “ 학교”
lao: “ໂຮງຮຽນ”lao: “ໂຮງຮຽນ”
kat: “სკოლა”kat: “სკოლა”
• Over 16 million words
and names in over 200
languages semantically
connected
• Ambiguity and
synonymy captured
eng: “UC Berkeley”eng: “UC Berkeley” eng: “Cal”eng: “Cal”
CityCity
Geopolitical
Entity
Geopolitical
Entity
ChuvashChuvash
GeorgianGeorgian
Lexvo.org
Language
Descriptions:
Languages
Scripts
Characters
Countries
Cyrllic
(Script)
Cyrllic
(Script)
Russia
(Country)
Russia
(Country)
UWN: Meaning Distinctions
Ontological
Taxonomy
Encyclopedic
Knowledge,
Pictures,
Video,
Sounds, Maps
Etymological and
other word
relationships
Millions of
Named Entities
(People, Places,
Proteins,
Asteroids,
Companies, etc.)
200+ languages
Step 2: Entity IntegrationStep 2: Entity Integration
Step 3: Taxonomy InductionStep 3: Taxonomy Induction ExtrasExtras
• Markov Chain to rank taxonomic parents
• 270 Wikipedia taxonomies integrated with
WordNet's hypernym hierarchy
es: Televisores: Televisor
es: Televisiónes: Televisión
ru: Телевизорru: Телевизор
hi: दूरदर्शनhi: दूरदर्शन
ja: テレビja: テレビ
en: Televisionen: Television
en:
Television
set
en:
Television
set
zh: 电视机zh: 电视机
ja: テレビ受像機ja: テレビ受像機
en: TV seten: TV set
en: T.V.en: T.V.
V1 ,u
V1 ,u
V1 ,v
V1 ,v
• LP for constraint-based computation of
equivalence classes of entities
• Region Growing approximation algorithm
• Link multilingual
words to WordNet
• Connect Wikipedia
with WordNet
(equivalence and
taxonomic links)
• FrameNet Linking
• Common-Sense
Knowledge Extraction
• Multilingual Roget's
Thesaurus

More Related Content

Similar to UWN: A Large Multilingual Lexical Knowledge Base

Assessing, Creating and Using Knowledge Graph Restrictions
Assessing, Creating and Using Knowledge Graph RestrictionsAssessing, Creating and Using Knowledge Graph Restrictions
Assessing, Creating and Using Knowledge Graph RestrictionsSven Lieber
 
(Deep) Neural Networks在 NLP 和 Text Mining 总结
(Deep) Neural Networks在 NLP 和 Text Mining 总结(Deep) Neural Networks在 NLP 和 Text Mining 总结
(Deep) Neural Networks在 NLP 和 Text Mining 总结君 廖
 
Ontologies for multimedia: the Semantic Culture Web
Ontologies for multimedia: the Semantic Culture WebOntologies for multimedia: the Semantic Culture Web
Ontologies for multimedia: the Semantic Culture WebGuus Schreiber
 
20140506 edrene athens_winer
20140506 edrene athens_winer20140506 edrene athens_winer
20140506 edrene athens_winerDov Winer
 
Sausages, coffee, chicken and the web: Establishing new trust metrics for sch...
Sausages, coffee, chicken and the web: Establishing new trust metrics for sch...Sausages, coffee, chicken and the web: Establishing new trust metrics for sch...
Sausages, coffee, chicken and the web: Establishing new trust metrics for sch...Eduserv Foundation
 
Media literacy search
Media literacy searchMedia literacy search
Media literacy searchdwee90034
 
The OU's Digital Humanities seminar series: the Pelagios project
The OU's Digital Humanities seminar series: the Pelagios projectThe OU's Digital Humanities seminar series: the Pelagios project
The OU's Digital Humanities seminar series: the Pelagios projectLiz FitzGerald
 
Text-mining and Automation
Text-mining and AutomationText-mining and Automation
Text-mining and Automationbenosteen
 
Future of the article C Mavergames March 2013
Future of the article C Mavergames March 2013Future of the article C Mavergames March 2013
Future of the article C Mavergames March 2013Cochrane.Collaboration
 
Archives Hub - Data in :: Data out
Archives Hub - Data in :: Data outArchives Hub - Data in :: Data out
Archives Hub - Data in :: Data outJane Stevenson
 
How to Do Things with Triples
How to Do Things with TriplesHow to Do Things with Triples
How to Do Things with TriplesSteffen Staab
 
Europeana Network Association AGM 2016 - 9 November - Speaker Shawn Averkamp
Europeana Network Association AGM 2016 - 9 November - Speaker Shawn Averkamp Europeana Network Association AGM 2016 - 9 November - Speaker Shawn Averkamp
Europeana Network Association AGM 2016 - 9 November - Speaker Shawn Averkamp Europeana
 
Structure Function Fsi Wignall
Structure Function Fsi WignallStructure Function Fsi Wignall
Structure Function Fsi WignallEric Wignall
 
Creating a PLE
Creating a PLECreating a PLE
Creating a PLEwfperry
 
Medium, Messages, and Mashups: Integrating Learning Exemplars into Curriculu...
Medium, Messages, and Mashups:  Integrating Learning Exemplars into Curriculu...Medium, Messages, and Mashups:  Integrating Learning Exemplars into Curriculu...
Medium, Messages, and Mashups: Integrating Learning Exemplars into Curriculu...Anna van Someren
 
Phyloinformatics and the Semantic Web
Phyloinformatics and the Semantic WebPhyloinformatics and the Semantic Web
Phyloinformatics and the Semantic WebRutger Vos
 

Similar to UWN: A Large Multilingual Lexical Knowledge Base (20)

Assessing, Creating and Using Knowledge Graph Restrictions
Assessing, Creating and Using Knowledge Graph RestrictionsAssessing, Creating and Using Knowledge Graph Restrictions
Assessing, Creating and Using Knowledge Graph Restrictions
 
(Deep) Neural Networks在 NLP 和 Text Mining 总结
(Deep) Neural Networks在 NLP 和 Text Mining 总结(Deep) Neural Networks在 NLP 和 Text Mining 总结
(Deep) Neural Networks在 NLP 和 Text Mining 总结
 
EDS for JIBS
EDS for JIBSEDS for JIBS
EDS for JIBS
 
Ontologies for multimedia: the Semantic Culture Web
Ontologies for multimedia: the Semantic Culture WebOntologies for multimedia: the Semantic Culture Web
Ontologies for multimedia: the Semantic Culture Web
 
20140506 edrene athens_winer
20140506 edrene athens_winer20140506 edrene athens_winer
20140506 edrene athens_winer
 
Web2.0 lac2013a
Web2.0 lac2013aWeb2.0 lac2013a
Web2.0 lac2013a
 
Sausages, coffee, chicken and the web: Establishing new trust metrics for sch...
Sausages, coffee, chicken and the web: Establishing new trust metrics for sch...Sausages, coffee, chicken and the web: Establishing new trust metrics for sch...
Sausages, coffee, chicken and the web: Establishing new trust metrics for sch...
 
Media literacy search
Media literacy searchMedia literacy search
Media literacy search
 
The OU's Digital Humanities seminar series: the Pelagios project
The OU's Digital Humanities seminar series: the Pelagios projectThe OU's Digital Humanities seminar series: the Pelagios project
The OU's Digital Humanities seminar series: the Pelagios project
 
Text-mining and Automation
Text-mining and AutomationText-mining and Automation
Text-mining and Automation
 
Future of the article C Mavergames March 2013
Future of the article C Mavergames March 2013Future of the article C Mavergames March 2013
Future of the article C Mavergames March 2013
 
Archives Hub - Data in :: Data out
Archives Hub - Data in :: Data outArchives Hub - Data in :: Data out
Archives Hub - Data in :: Data out
 
The Blossoming of the Semantic Web
The Blossoming of the Semantic WebThe Blossoming of the Semantic Web
The Blossoming of the Semantic Web
 
How to Do Things with Triples
How to Do Things with TriplesHow to Do Things with Triples
How to Do Things with Triples
 
Europeana Network Association AGM 2016 - 9 November - Speaker Shawn Averkamp
Europeana Network Association AGM 2016 - 9 November - Speaker Shawn Averkamp Europeana Network Association AGM 2016 - 9 November - Speaker Shawn Averkamp
Europeana Network Association AGM 2016 - 9 November - Speaker Shawn Averkamp
 
Structure Function Fsi Wignall
Structure Function Fsi WignallStructure Function Fsi Wignall
Structure Function Fsi Wignall
 
Creating a PLE
Creating a PLECreating a PLE
Creating a PLE
 
Medium, Messages, and Mashups: Integrating Learning Exemplars into Curriculu...
Medium, Messages, and Mashups:  Integrating Learning Exemplars into Curriculu...Medium, Messages, and Mashups:  Integrating Learning Exemplars into Curriculu...
Medium, Messages, and Mashups: Integrating Learning Exemplars into Curriculu...
 
Phyloinformatics and the Semantic Web
Phyloinformatics and the Semantic WebPhyloinformatics and the Semantic Web
Phyloinformatics and the Semantic Web
 
Ljc
LjcLjc
Ljc
 

More from Gerard de Melo

SEMAC Graph Node Embeddings for Link Prediction
SEMAC Graph Node Embeddings for Link PredictionSEMAC Graph Node Embeddings for Link Prediction
SEMAC Graph Node Embeddings for Link PredictionGerard de Melo
 
How to Manage your Research
How to Manage your ResearchHow to Manage your Research
How to Manage your ResearchGerard de Melo
 
Knowlywood: Mining Activity Knowledge from Hollywood Narratives
Knowlywood: Mining Activity Knowledge from Hollywood NarrativesKnowlywood: Mining Activity Knowledge from Hollywood Narratives
Knowlywood: Mining Activity Knowledge from Hollywood NarrativesGerard de Melo
 
Learning Multilingual Semantics from Big Data on the Web
Learning Multilingual Semantics from Big Data on the WebLearning Multilingual Semantics from Big Data on the Web
Learning Multilingual Semantics from Big Data on the WebGerard de Melo
 
From Big Data to Valuable Knowledge
From Big Data to Valuable KnowledgeFrom Big Data to Valuable Knowledge
From Big Data to Valuable KnowledgeGerard de Melo
 
Scalable Learning Technologies for Big Data Mining
Scalable Learning Technologies for Big Data MiningScalable Learning Technologies for Big Data Mining
Scalable Learning Technologies for Big Data MiningGerard de Melo
 
Searching the Web of Data (Tutorial)
Searching the Web of Data (Tutorial)Searching the Web of Data (Tutorial)
Searching the Web of Data (Tutorial)Gerard de Melo
 
From Linked Data to Tightly Integrated Data
From Linked Data to Tightly Integrated DataFrom Linked Data to Tightly Integrated Data
From Linked Data to Tightly Integrated DataGerard de Melo
 
Information Extraction from Web-Scale N-Gram Data
Information Extraction from Web-Scale N-Gram DataInformation Extraction from Web-Scale N-Gram Data
Information Extraction from Web-Scale N-Gram DataGerard de Melo
 
Multilingual Text Classification using Ontologies
Multilingual Text Classification using OntologiesMultilingual Text Classification using Ontologies
Multilingual Text Classification using OntologiesGerard de Melo
 
Extracting Sense-Disambiguated Example Sentences From Parallel Corpora
Extracting Sense-Disambiguated Example Sentences From Parallel CorporaExtracting Sense-Disambiguated Example Sentences From Parallel Corpora
Extracting Sense-Disambiguated Example Sentences From Parallel CorporaGerard de Melo
 
Towards a Universal Wordnet by Learning from Combined Evidence
Towards a Universal Wordnet by Learning from Combined EvidenceTowards a Universal Wordnet by Learning from Combined Evidence
Towards a Universal Wordnet by Learning from Combined EvidenceGerard de Melo
 
Not Quite the Same: Identity Constraints for the Web of Linked Data
Not Quite the Same: Identity Constraints for the Web of Linked DataNot Quite the Same: Identity Constraints for the Web of Linked Data
Not Quite the Same: Identity Constraints for the Web of Linked DataGerard de Melo
 
Good, Great, Excellent: Global Inference of Semantic Intensities
Good, Great, Excellent: Global Inference of Semantic IntensitiesGood, Great, Excellent: Global Inference of Semantic Intensities
Good, Great, Excellent: Global Inference of Semantic IntensitiesGerard de Melo
 
YAGO-SUMO: Integrating YAGO into the Suggested Upper Merged Ontology
YAGO-SUMO: Integrating YAGO into the Suggested Upper Merged OntologyYAGO-SUMO: Integrating YAGO into the Suggested Upper Merged Ontology
YAGO-SUMO: Integrating YAGO into the Suggested Upper Merged OntologyGerard de Melo
 

More from Gerard de Melo (15)

SEMAC Graph Node Embeddings for Link Prediction
SEMAC Graph Node Embeddings for Link PredictionSEMAC Graph Node Embeddings for Link Prediction
SEMAC Graph Node Embeddings for Link Prediction
 
How to Manage your Research
How to Manage your ResearchHow to Manage your Research
How to Manage your Research
 
Knowlywood: Mining Activity Knowledge from Hollywood Narratives
Knowlywood: Mining Activity Knowledge from Hollywood NarrativesKnowlywood: Mining Activity Knowledge from Hollywood Narratives
Knowlywood: Mining Activity Knowledge from Hollywood Narratives
 
Learning Multilingual Semantics from Big Data on the Web
Learning Multilingual Semantics from Big Data on the WebLearning Multilingual Semantics from Big Data on the Web
Learning Multilingual Semantics from Big Data on the Web
 
From Big Data to Valuable Knowledge
From Big Data to Valuable KnowledgeFrom Big Data to Valuable Knowledge
From Big Data to Valuable Knowledge
 
Scalable Learning Technologies for Big Data Mining
Scalable Learning Technologies for Big Data MiningScalable Learning Technologies for Big Data Mining
Scalable Learning Technologies for Big Data Mining
 
Searching the Web of Data (Tutorial)
Searching the Web of Data (Tutorial)Searching the Web of Data (Tutorial)
Searching the Web of Data (Tutorial)
 
From Linked Data to Tightly Integrated Data
From Linked Data to Tightly Integrated DataFrom Linked Data to Tightly Integrated Data
From Linked Data to Tightly Integrated Data
 
Information Extraction from Web-Scale N-Gram Data
Information Extraction from Web-Scale N-Gram DataInformation Extraction from Web-Scale N-Gram Data
Information Extraction from Web-Scale N-Gram Data
 
Multilingual Text Classification using Ontologies
Multilingual Text Classification using OntologiesMultilingual Text Classification using Ontologies
Multilingual Text Classification using Ontologies
 
Extracting Sense-Disambiguated Example Sentences From Parallel Corpora
Extracting Sense-Disambiguated Example Sentences From Parallel CorporaExtracting Sense-Disambiguated Example Sentences From Parallel Corpora
Extracting Sense-Disambiguated Example Sentences From Parallel Corpora
 
Towards a Universal Wordnet by Learning from Combined Evidence
Towards a Universal Wordnet by Learning from Combined EvidenceTowards a Universal Wordnet by Learning from Combined Evidence
Towards a Universal Wordnet by Learning from Combined Evidence
 
Not Quite the Same: Identity Constraints for the Web of Linked Data
Not Quite the Same: Identity Constraints for the Web of Linked DataNot Quite the Same: Identity Constraints for the Web of Linked Data
Not Quite the Same: Identity Constraints for the Web of Linked Data
 
Good, Great, Excellent: Global Inference of Semantic Intensities
Good, Great, Excellent: Global Inference of Semantic IntensitiesGood, Great, Excellent: Global Inference of Semantic Intensities
Good, Great, Excellent: Global Inference of Semantic Intensities
 
YAGO-SUMO: Integrating YAGO into the Suggested Upper Merged Ontology
YAGO-SUMO: Integrating YAGO into the Suggested Upper Merged OntologyYAGO-SUMO: Integrating YAGO into the Suggested Upper Merged Ontology
YAGO-SUMO: Integrating YAGO into the Suggested Upper Merged Ontology
 

Recently uploaded

Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 217djon017
 
Semantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxSemantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxMike Bennett
 
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Boston Institute of Analytics
 
Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...
Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...
Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...ssuserf63bd7
 
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...Boston Institute of Analytics
 
Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Seán Kennedy
 
Business Analytics using Microsoft Excel
Business Analytics using Microsoft ExcelBusiness Analytics using Microsoft Excel
Business Analytics using Microsoft Excelysmaelreyes
 
Advanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsAdvanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsVICTOR MAESTRE RAMIREZ
 
MK KOMUNIKASI DATA (TI)komdat komdat.docx
MK KOMUNIKASI DATA (TI)komdat komdat.docxMK KOMUNIKASI DATA (TI)komdat komdat.docx
MK KOMUNIKASI DATA (TI)komdat komdat.docxUnduhUnggah1
 
IMA MSN - Medical Students Network (2).pptx
IMA MSN - Medical Students Network (2).pptxIMA MSN - Medical Students Network (2).pptx
IMA MSN - Medical Students Network (2).pptxdolaknnilon
 
Thiophen Mechanism khhjjjjjjjhhhhhhhhhhh
Thiophen Mechanism khhjjjjjjjhhhhhhhhhhhThiophen Mechanism khhjjjjjjjhhhhhhhhhhh
Thiophen Mechanism khhjjjjjjjhhhhhhhhhhhYasamin16
 
毕业文凭制作#回国入职#diploma#degree美国加州州立大学北岭分校毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#de...
毕业文凭制作#回国入职#diploma#degree美国加州州立大学北岭分校毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#de...毕业文凭制作#回国入职#diploma#degree美国加州州立大学北岭分校毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#de...
毕业文凭制作#回国入职#diploma#degree美国加州州立大学北岭分校毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#de...ttt fff
 
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝DelhiRS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhijennyeacort
 
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Thomas Poetter
 
Identifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population MeanIdentifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population MeanMYRABACSAFRA2
 
Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...
Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...
Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...Boston Institute of Analytics
 
Heart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis ProjectHeart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis ProjectBoston Institute of Analytics
 
How we prevented account sharing with MFA
How we prevented account sharing with MFAHow we prevented account sharing with MFA
How we prevented account sharing with MFAAndrei Kaleshka
 
办理学位证加利福尼亚大学洛杉矶分校毕业证,UCLA成绩单原版一比一
办理学位证加利福尼亚大学洛杉矶分校毕业证,UCLA成绩单原版一比一办理学位证加利福尼亚大学洛杉矶分校毕业证,UCLA成绩单原版一比一
办理学位证加利福尼亚大学洛杉矶分校毕业证,UCLA成绩单原版一比一F sss
 
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort servicejennyeacort
 

Recently uploaded (20)

Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2
 
Semantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxSemantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptx
 
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
 
Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...
Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...
Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...
 
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
 
Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...
 
Business Analytics using Microsoft Excel
Business Analytics using Microsoft ExcelBusiness Analytics using Microsoft Excel
Business Analytics using Microsoft Excel
 
Advanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsAdvanced Machine Learning for Business Professionals
Advanced Machine Learning for Business Professionals
 
MK KOMUNIKASI DATA (TI)komdat komdat.docx
MK KOMUNIKASI DATA (TI)komdat komdat.docxMK KOMUNIKASI DATA (TI)komdat komdat.docx
MK KOMUNIKASI DATA (TI)komdat komdat.docx
 
IMA MSN - Medical Students Network (2).pptx
IMA MSN - Medical Students Network (2).pptxIMA MSN - Medical Students Network (2).pptx
IMA MSN - Medical Students Network (2).pptx
 
Thiophen Mechanism khhjjjjjjjhhhhhhhhhhh
Thiophen Mechanism khhjjjjjjjhhhhhhhhhhhThiophen Mechanism khhjjjjjjjhhhhhhhhhhh
Thiophen Mechanism khhjjjjjjjhhhhhhhhhhh
 
毕业文凭制作#回国入职#diploma#degree美国加州州立大学北岭分校毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#de...
毕业文凭制作#回国入职#diploma#degree美国加州州立大学北岭分校毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#de...毕业文凭制作#回国入职#diploma#degree美国加州州立大学北岭分校毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#de...
毕业文凭制作#回国入职#diploma#degree美国加州州立大学北岭分校毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#de...
 
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝DelhiRS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
 
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
 
Identifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population MeanIdentifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population Mean
 
Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...
Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...
Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...
 
Heart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis ProjectHeart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis Project
 
How we prevented account sharing with MFA
How we prevented account sharing with MFAHow we prevented account sharing with MFA
How we prevented account sharing with MFA
 
办理学位证加利福尼亚大学洛杉矶分校毕业证,UCLA成绩单原版一比一
办理学位证加利福尼亚大学洛杉矶分校毕业证,UCLA成绩单原版一比一办理学位证加利福尼亚大学洛杉矶分校毕业证,UCLA成绩单原版一比一
办理学位证加利福尼亚大学洛杉矶分校毕业证,UCLA成绩单原版一比一
 
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
 

UWN: A Large Multilingual Lexical Knowledge Base

  • 1. Step 1: Link PredictionStep 1: Link Prediction UWN's Multilingual GraphUWN's Multilingual Graph • Goal: Richer, Less Sparse Features • How: Model Synonymy, Polysemy, Semantic Relatedness, Taxonomy. (within and across languages) UWN: A Large Multilingual Lexical Knowledge Base Gerard de Melo and Gerhard Weikum ICSI Berkeley / Max Planck Institute for Informatics Better NLP Features using Lexical SemanticsBetter NLP Features using Lexical Semantics More Information: www.lexvo.org/gdm/ • Downloadable API available • Web User Interface EntityEntitypor: “entidade”por: “entidade” cmn: “ 制度”cmn: “ 制度” InstitutionInstitution Educational institution Educational institution UniversityUniversity heb: “‫ישות‬.”heb: “‫ישות‬.” deu: “Bildungs- einrichtung” deu: “Bildungs- einrichtung” srp: “универзитете” srp: “универзитете” ... University of California, Berkeley University of California, Berkeley eng: “Berkeley ”eng: “Berkeley ” ara: “‫كينونة‬ ،‫”وجود‬ ara: “‫كينونة‬ ،‫”وجود‬ tha: “ สถาบัน”tha: “ สถาบัน” fin: “oppilaitos”fin: “oppilaitos” fin: “yliopisto”fin: “yliopisto” cmn: “ 柏克萊加州大學” cmn: “ 柏克萊加州大學” Berkeley, CABerkeley, CA George BerkeleyGeorge Berkeley deu: “Schulgebäude”deu: “Schulgebäude” school (group of fish) school (group of fish) school (institution) school (institution) school (building) school (building) deu: “Schulhaus”deu: “Schulhaus” deu: “Fischschwarm”deu: “Fischschwarm” ces: “hejno”ces: “hejno” fra: “banc”fra: “banc” chv: “шкул”chv: “шкул” jpn: “ 学校”jpn: “ 学校” kor: “ 학교”kor: “ 학교” lao: “ໂຮງຮຽນ”lao: “ໂຮງຮຽນ” kat: “სკოლა”kat: “სკოლა” • Over 16 million words and names in over 200 languages semantically connected • Ambiguity and synonymy captured eng: “UC Berkeley”eng: “UC Berkeley” eng: “Cal”eng: “Cal” CityCity Geopolitical Entity Geopolitical Entity ChuvashChuvash GeorgianGeorgian Lexvo.org Language Descriptions: Languages Scripts Characters Countries Cyrllic (Script) Cyrllic (Script) Russia (Country) Russia (Country) UWN: Meaning Distinctions Ontological Taxonomy Encyclopedic Knowledge, Pictures, Video, Sounds, Maps Etymological and other word relationships Millions of Named Entities (People, Places, Proteins, Asteroids, Companies, etc.) 200+ languages Step 2: Entity IntegrationStep 2: Entity Integration Step 3: Taxonomy InductionStep 3: Taxonomy Induction ExtrasExtras • Markov Chain to rank taxonomic parents • 270 Wikipedia taxonomies integrated with WordNet's hypernym hierarchy es: Televisores: Televisor es: Televisiónes: Televisión ru: Телевизорru: Телевизор hi: दूरदर्शनhi: दूरदर्शन ja: テレビja: テレビ en: Televisionen: Television en: Television set en: Television set zh: 电视机zh: 电视机 ja: テレビ受像機ja: テレビ受像機 en: TV seten: TV set en: T.V.en: T.V. V1 ,u V1 ,u V1 ,v V1 ,v • LP for constraint-based computation of equivalence classes of entities • Region Growing approximation algorithm • Link multilingual words to WordNet • Connect Wikipedia with WordNet (equivalence and taxonomic links) • FrameNet Linking • Common-Sense Knowledge Extraction • Multilingual Roget's Thesaurus