SlideShare ist ein Scribd-Unternehmen logo
1 von 19
Downloaden Sie, um offline zu lesen
TMRA 2009
Construction of Authority Information for
 Personal Names Focused on the Former
  Japanese Nobility using a Topic Map
    p             y     g     p     p




               2009/11/12, Leipzig, Germany
                          ,   p g,          y
                       Norio Togiya
              (togiya.norio@iii.u-tokyo.ac.jp)
                    University of Tokyo
           Motomu Naito (motom@green.ocn.ne.jp)
                  Knowledge Synergy Inc.
Table of Contents
1. Introduction
2. Target of investigation
       g            g
3. Constructing Authority Information
4. Demo (authority topic map)
5. Issues and Discussion
5.1 Person s
5 1 Person’s name problem
5.2 Diversity of Information Items
5.3
5 3 Problems of Centralized Topic Map
6. Future work:
   Toward Distributed and Linked Topic Maps
7. Conclusion
1. Introduction
Background
・ There are many variant p
                 y        personal names for the same Japanese
                                                           p
  historical individual
・ When handling historical data it is desirable to control them
・ But there i no database providing such information in Japan at
       h is       d b           idi      hi f       i i
  the present
・ There is a need to construct the authority information for personal
  names structured in a standardized data description language

Purpose
・ To investigate and analyze persons who played significant social
  and cultural role
・ To construct the authority information of them to support
  historical and cultural study
2. Target information
・ In the first stage, we are constructing a topic map of the authority
  information relatively small scale and limited area
・ We are focusing on the former Japanese nobility
・ Japanese aristocracy is existing from after Meiji Restoration in
  1869 until after the end of WWⅡ i 1947
           til ft th      d f          in
・ They played significant social and cultural roles in the
   pre WWⅡ
   pre-WWⅡ period
・ They often changed their name and had many alias names
・ Meanwhile different persons often had the same name
3. Constructing Authority Information

We constructed our first topic map for the Authority
Information according to the following process
I f      i        di       h f ll i
 - Categorizing authority information
 -O l
   Ontology making
               ki
 - Topic map making
 - A li i making
   Application ki
3.1 Categorizing authority information
・ We collected and analyzed information items
・ We categorized those items and mapped them to information items
  of Topic Maps
・ The following table shows the categories and TM correspondence
   table: Categories of personal name source data (1/3)
Categories of personal name authority information                 Correspondence in Topic Maps
Name                   Kanji (family name/personal name)          Topic name

(multiple responses    Reading (family name/personal name)        Variant and/or Internal occurrence
possible)              Romanization (family name/personal name)   Variant and/or Internal occurrence

                       Type of names (alternatives or childhood   Variant and/or Internal occurrence
                       names) (multiple responses possible)
Nationality (multiple responses possible)                         Linked by association to other topics
Gender (multiple responses possible)                              Linked by association to other topics
Rank (multiple responses possible)                                Linked by association to other topics

Profession (multiple response possible)                           Linked by association to other topics
Person ID                                                         Subject ID
table: Categories of personal name source data (2/3)
Categories of personal name authority information                   Correspondence in Topic Maps

Related URL/URI          Person URI                                 External occurrence

                         Related URL (multiple response possible)   External occurrence
Dates of birth and       DOB (Western calendar only)                External occurrence
death                    (multiple responses possible)
                         DOD (Western calendar only)                External occurrence
                         (multiple responses possible)
Brief biography      Japanese biography                             Internal occurrence
                     English biography                              Internal occurrence
Place of birth (multiple responses possible)
Pl     f bi th ( lti l                 ibl )                        Linked by
                                                                    Li k d b association t other t i
                                                                                  i ti to th topics
Place of residence (multiple responses possible)                    Linked by association to other topics
table: Categories of personal name source data (3/3)
Categories of personal name authority information                       Correspondence in Topic Maps

Administrative data      Date of input (multiple responses possible)    Internal occurrence

                         Last update                                    Internal occurrence
                         Type                                           Internal occurrence

                         Language code (multiple responses possible)    Internal occurrence

                         Character code                                 Internal occurrence

                         Source confirmation                            Internal occurrence
                         Input by (multiple responses possible)         Internal occurrence

Relationship (multiple   Teacher, student, acquaintance, father, mother, Association
responses possible       elder brother, elder sister, younger brother,
                         younger sister, husband, wife, child
3.2 Ontology making
 We made ontology according to the categorized items (subjects)
and relationships between them




                                Ontology diagram of the topic map
                                - Squares represent Topic types
                                - Lines represent Association types
3.3 Topic map making
- The topic map was generated using DB2TM which is
  included in Ontopia
                    p
- Ontology definition file and XML configuration file are needed
  for DB2TM
- Ontology definition file defines the following:
   - Topic types
   - Name types
   - Association types
                       yp
   - Association role types
   - Occurrence types
- XML configuration file defines the mapping rule from EXCEL
  (CSV f format) i
               ) into the ontology d fi i i
                       h      l    definition
3.4 Application making
 We developed the application using Ontopia Navigator Framework

 The f
 Th feature of the web application
             f h     b    li i
- Displaying instance list of each
                                        J2EE Web Server
topic type                                e.g. Tomcat
- Displaying instance detail                                              http
(names, occurrences and assciations)                      JSP Page

- N i i topic map
  Navigating     i                          topic
- Character string search                   map
                                                           Taglibs
- Tolog query interface
- Graphical representation                                                       <HTML>
                                                                                  pages
                                                        Query engine




                                                     server                      client

                     (Source: Ontopia, “The Ontopia Navigator Framework Developer’s Guide” )
4. Demo
The b
Th web application for personal authority topic map
          li i f              l h i          i




           Screen shots of the application
5. Issues and discussion
 5.1 Person’s name problem
- Many names for one person
      y                p
- The same name for many persons
- Three notations for each name
  Kanji name
  Reading (Katakana or Hiragana name)
         g(                  g        )
  Roman name
- How to describe them as topic name
                             p
- Content model is showed as follows:
name = element name { typicalName, aliasName* }
typicalName = element typicalName { kanjiName, katakanaName, romanName }
aliasName = element aliasName { kanjiName, katakanaName, romanName }
                                   j
5. Issues and discussion
5.2 Diversity of Information Items
5 2 Di    it f I f      ti It
(1) Two kind of information items
  ・ Fundamental information items
        d        li f      i i
    They are good candidate for PSI and PSD
    ex: typical name alias nationality gender, orders,
                name, alias, nationality, gender orders
        date of birth and death, born and lived place, etc.
  ・ Specific information items
      p
    They change according to individual domain and view
    ex: biographical outline, achievement, personal connection,
         position, expertise, etc.
            ii           i
(2) Items not depend on person
     ex: place country organization, occupation, etc.
         place, country, organization occupation etc
  ・ We cannot make exhaustive list for them if we pick up them
    by occurrence basis. But if we make those list once, we can
      y
    share them among many application
5. Issues and discussion
5.3 Problems of Centralized Topic Map
・ Authority information consists of diverse items and many
  independent items
・ It is very difficult and troublesome to integrate those items into
  one centralized topic map
・ Such topic map become complicated, hard to understand and
  difficult to maintain
・ Moreover there are different relations depending on domains
  and ranges and they change according to the point of views
・ It is desirable that we can filter out specific relation and link
  from others flexibly
6. Future work:
    Toward Distributed and Linked Topic Maps
Instead of centralized topic map, distributed and linked topic maps
are preferable
・ Those topic maps are specialized and relatively simple and small
・CCurrently a large amount of person’s information is inherited by
         tl l               t f       ’ i f      ti i i h it d b
  many libraries, museums, research institutes, etc. separately.
・ We think it is natural those organization continue to manage them
・ We are making topic maps about information owned by them
  - Author information owned by National Diet Library:
    800,000 records
  - Historical person information owned by National Institute of
    Japanese Literat re: 50,000 records
              Literature: 50 000
・ Next we plan to create topic maps for places, countries,
  organizations, occupations, etc individually
・ Then we will make effort to link them
Toward Distributed and Linked Topic Maps
We
W are planning to use the mechanism of TMRAP, Subj3ct,
        l i              h      h i      f TMRAP S bj3
Ontopedia to realize the Distributed and Linked Topic Maps
7. Conclusion
・ As the first stage, we created the topic map for personal name
  authority information focused on the former Japanese nobilities
          y                                        p
・ It made clear the genealogies, the network of the marriage
  and other interrelationships between them
・ We believe our authority information is very useful for
  researchers to study persons and their network related social,
                                                           social
  cultural and historical affair
・ There are strong needs to personal authority from various domain
・ The data structure, Topic Maps, and the system structure we
  propose have generality scalability and flexibility
                  generality,
・ Thus, those are adaptable for various fields in the future
Thank you!

Weitere ähnliche Inhalte

Was ist angesagt?

An introduction to Semantic Web and Linked Data
An introduction to Semantic  Web and Linked DataAn introduction to Semantic  Web and Linked Data
An introduction to Semantic Web and Linked Data
Gabriela Agustini
 
A Semantic Importing Approach to Knowledge Reuse from Multiple Ontologies
A Semantic Importing Approach to Knowledge Reuse from Multiple OntologiesA Semantic Importing Approach to Knowledge Reuse from Multiple Ontologies
A Semantic Importing Approach to Knowledge Reuse from Multiple Ontologies
Jie Bao
 

Was ist angesagt? (19)

CLDR: What’s in a Personal Name?
CLDR: What’s in a Personal Name?CLDR: What’s in a Personal Name?
CLDR: What’s in a Personal Name?
 
Semantics and Computational Semantics
Semantics and Computational SemanticsSemantics and Computational Semantics
Semantics and Computational Semantics
 
Modeling Ontologies with Natural Language
Modeling Ontologies with Natural LanguageModeling Ontologies with Natural Language
Modeling Ontologies with Natural Language
 
Phd_cristian_lai presentation
Phd_cristian_lai presentationPhd_cristian_lai presentation
Phd_cristian_lai presentation
 
Lecture 2: Computational Semantics
Lecture 2: Computational SemanticsLecture 2: Computational Semantics
Lecture 2: Computational Semantics
 
New Concepts: Nomens and Appellations
New Concepts: Nomens and AppellationsNew Concepts: Nomens and Appellations
New Concepts: Nomens and Appellations
 
NLTK
NLTKNLTK
NLTK
 
An introduction to Semantic Web and Linked Data
An introduction to Semantic  Web and Linked DataAn introduction to Semantic  Web and Linked Data
An introduction to Semantic Web and Linked Data
 
Corpora, Blogs and Linguistic Variation (Paderborn)
Corpora, Blogs and Linguistic Variation (Paderborn)Corpora, Blogs and Linguistic Variation (Paderborn)
Corpora, Blogs and Linguistic Variation (Paderborn)
 
A Semantic Importing Approach to Knowledge Reuse from Multiple Ontologies
A Semantic Importing Approach to Knowledge Reuse from Multiple OntologiesA Semantic Importing Approach to Knowledge Reuse from Multiple Ontologies
A Semantic Importing Approach to Knowledge Reuse from Multiple Ontologies
 
Lecture 9 - Machine Learning and Support Vector Machines (SVM)
Lecture 9 - Machine Learning and Support Vector Machines (SVM)Lecture 9 - Machine Learning and Support Vector Machines (SVM)
Lecture 9 - Machine Learning and Support Vector Machines (SVM)
 
Natural Language Processing glossary for Coders
Natural Language Processing glossary for CodersNatural Language Processing glossary for Coders
Natural Language Processing glossary for Coders
 
SPARQL and the Open Linked Data initiative
SPARQL and the Open Linked Data initiativeSPARQL and the Open Linked Data initiative
SPARQL and the Open Linked Data initiative
 
Enriching the semantic web tutorial session 1
Enriching the semantic web tutorial session 1Enriching the semantic web tutorial session 1
Enriching the semantic web tutorial session 1
 
Resource description framework
Resource description frameworkResource description framework
Resource description framework
 
11 terms in Corpus Linguistics1 (2)
11 terms in Corpus Linguistics1 (2)11 terms in Corpus Linguistics1 (2)
11 terms in Corpus Linguistics1 (2)
 
OpenNLP demo
OpenNLP demoOpenNLP demo
OpenNLP demo
 
Introduction to Application Profiles
Introduction to Application ProfilesIntroduction to Application Profiles
Introduction to Application Profiles
 
SYNTACTIC ANALYSIS BASED ON MORPHOLOGICAL CHARACTERISTIC FEATURES OF THE ROMA...
SYNTACTIC ANALYSIS BASED ON MORPHOLOGICAL CHARACTERISTIC FEATURES OF THE ROMA...SYNTACTIC ANALYSIS BASED ON MORPHOLOGICAL CHARACTERISTIC FEATURES OF THE ROMA...
SYNTACTIC ANALYSIS BASED ON MORPHOLOGICAL CHARACTERISTIC FEATURES OF THE ROMA...
 

Andere mochten auch

Andere mochten auch (8)

topicmapslab.de - a Topic Maps community portal
topicmapslab.de - a Topic Maps community portaltopicmapslab.de - a Topic Maps community portal
topicmapslab.de - a Topic Maps community portal
 
GTMalpha - Towards a Graphical Notation for Topic Maps
GTMalpha - Towards a Graphical Notation for Topic MapsGTMalpha - Towards a Graphical Notation for Topic Maps
GTMalpha - Towards a Graphical Notation for Topic Maps
 
Virtual File System on top of Topic Maps
Virtual File System on top of Topic MapsVirtual File System on top of Topic Maps
Virtual File System on top of Topic Maps
 
Norwegian National Broadcasting Use Case
Norwegian National Broadcasting Use CaseNorwegian National Broadcasting Use Case
Norwegian National Broadcasting Use Case
 
TMAPI 2.0 tutorial
TMAPI 2.0 tutorialTMAPI 2.0 tutorial
TMAPI 2.0 tutorial
 
A Topic map-based ontology IR system versus Clustering-based IR System: A Com...
A Topic map-based ontology IR system versus Clustering-based IR System: A Com...A Topic map-based ontology IR system versus Clustering-based IR System: A Com...
A Topic map-based ontology IR system versus Clustering-based IR System: A Com...
 
Topic Maps - Human-oriented semantics?
Topic Maps - Human-oriented semantics?Topic Maps - Human-oriented semantics?
Topic Maps - Human-oriented semantics?
 
TMAPI 2.0
TMAPI 2.0TMAPI 2.0
TMAPI 2.0
 

Ähnlich wie Construction of Authority Information for Personal Names Focused on the Former Japanese Nobility Using Topic Map

l2r.cs.uiuc.edu
l2r.cs.uiuc.edul2r.cs.uiuc.edu
l2r.cs.uiuc.edu
butest
 
Introduction
IntroductionIntroduction
Introduction
sriniefs
 

Ähnlich wie Construction of Authority Information for Personal Names Focused on the Former Japanese Nobility Using Topic Map (20)

Some thoughts about the gaps across languages and domains through the experi...
Some thoughts about the gaps across languages and domains through the experi...Some thoughts about the gaps across languages and domains through the experi...
Some thoughts about the gaps across languages and domains through the experi...
 
Semantic Web Austin Yahoo
Semantic Web Austin YahooSemantic Web Austin Yahoo
Semantic Web Austin Yahoo
 
Year of the Monkey: Lessons from the first year of SearchMonkey
Year of the Monkey: Lessons from the first year of SearchMonkeyYear of the Monkey: Lessons from the first year of SearchMonkey
Year of the Monkey: Lessons from the first year of SearchMonkey
 
FRSAD Functional Requirements for Subject Authority Data model
FRSAD Functional Requirements for Subject Authority Data modelFRSAD Functional Requirements for Subject Authority Data model
FRSAD Functional Requirements for Subject Authority Data model
 
2015 07-tuto2-clus type
2015 07-tuto2-clus type2015 07-tuto2-clus type
2015 07-tuto2-clus type
 
Publishing data on the Semantic Web
Publishing data on the Semantic WebPublishing data on the Semantic Web
Publishing data on the Semantic Web
 
l2r.cs.uiuc.edu
l2r.cs.uiuc.edul2r.cs.uiuc.edu
l2r.cs.uiuc.edu
 
Perspectives on mining knowledge graphs from text
Perspectives on mining knowledge graphs from textPerspectives on mining knowledge graphs from text
Perspectives on mining knowledge graphs from text
 
Large-Scale Semantic Search
Large-Scale Semantic SearchLarge-Scale Semantic Search
Large-Scale Semantic Search
 
Topical_Facets
Topical_FacetsTopical_Facets
Topical_Facets
 
Introduction to RDF
Introduction to RDFIntroduction to RDF
Introduction to RDF
 
PARCC-ELA
PARCC-ELAPARCC-ELA
PARCC-ELA
 
Deploying Semantic Technologies for Digital Publishing: A Case Study from Log...
Deploying Semantic Technologies for Digital Publishing: A Case Study from Log...Deploying Semantic Technologies for Digital Publishing: A Case Study from Log...
Deploying Semantic Technologies for Digital Publishing: A Case Study from Log...
 
TOPIC BASED ANALYSIS OF TEXT CORPORA
TOPIC BASED ANALYSIS OF TEXT CORPORATOPIC BASED ANALYSIS OF TEXT CORPORA
TOPIC BASED ANALYSIS OF TEXT CORPORA
 
Two Approaches to Factor Time into Word and Entity Representations Learned fr...
Two Approaches to Factor Time into Word and Entity Representations Learned fr...Two Approaches to Factor Time into Word and Entity Representations Learned fr...
Two Approaches to Factor Time into Word and Entity Representations Learned fr...
 
semantic web & natural language
semantic web & natural languagesemantic web & natural language
semantic web & natural language
 
Leveraging Semantic Parsing for Relation Linking over Knowledge Bases
Leveraging Semantic Parsing for Relation Linking over Knowledge BasesLeveraging Semantic Parsing for Relation Linking over Knowledge Bases
Leveraging Semantic Parsing for Relation Linking over Knowledge Bases
 
Introduction
IntroductionIntroduction
Introduction
 
Material Cultures2010 Alexandre Monnin
Material Cultures2010 Alexandre MonninMaterial Cultures2010 Alexandre Monnin
Material Cultures2010 Alexandre Monnin
 
LP&IIS2013.Chinese Named Entity Recognition with Conditional Random Fields in...
LP&IIS2013.Chinese Named Entity Recognition with Conditional Random Fields in...LP&IIS2013.Chinese Named Entity Recognition with Conditional Random Fields in...
LP&IIS2013.Chinese Named Entity Recognition with Conditional Random Fields in...
 

Mehr von tmra

Weber 2010 brn
Weber 2010 brnWeber 2010 brn
Weber 2010 brn
tmra
 
Designing a gui_description_language_with_topic_maps
Designing a gui_description_language_with_topic_mapsDesigning a gui_description_language_with_topic_maps
Designing a gui_description_language_with_topic_maps
tmra
 
Tmra2010 matsuuraposter
Tmra2010 matsuuraposterTmra2010 matsuuraposter
Tmra2010 matsuuraposter
tmra
 
Putting topic maps to rest.tmra2010
Putting topic maps to rest.tmra2010Putting topic maps to rest.tmra2010
Putting topic maps to rest.tmra2010
tmra
 
Presentation final
Presentation finalPresentation final
Presentation final
tmra
 
Mappe1
Mappe1Mappe1
Mappe1
tmra
 

Mehr von tmra (20)

Topic Maps for improved access to and use of content in relational databases ...
Topic Maps for improved access to and use of content in relational databases ...Topic Maps for improved access to and use of content in relational databases ...
Topic Maps for improved access to and use of content in relational databases ...
 
External Schema for Topic Map Database
External Schema for Topic Map DatabaseExternal Schema for Topic Map Database
External Schema for Topic Map Database
 
Weber 2010 brn
Weber 2010 brnWeber 2010 brn
Weber 2010 brn
 
Subject Headings make information to be topic maps
Subject Headings make information to be topic mapsSubject Headings make information to be topic maps
Subject Headings make information to be topic maps
 
Inquiry Optimization Technique for a Topic Map Database
Inquiry Optimization Technique for a Topic Map DatabaseInquiry Optimization Technique for a Topic Map Database
Inquiry Optimization Technique for a Topic Map Database
 
Topic Merge Scenarios for Knowledge Federation
Topic Merge Scenarios for Knowledge FederationTopic Merge Scenarios for Knowledge Federation
Topic Merge Scenarios for Knowledge Federation
 
JavaScript Topic Maps in server environments
JavaScript Topic Maps in server environmentsJavaScript Topic Maps in server environments
JavaScript Topic Maps in server environments
 
Modelling IMS QTI with Topic Maps
Modelling IMS QTI with Topic MapsModelling IMS QTI with Topic Maps
Modelling IMS QTI with Topic Maps
 
Hatana - Virtual Topic Map Merging
Hatana - Virtual Topic Map MergingHatana - Virtual Topic Map Merging
Hatana - Virtual Topic Map Merging
 
Designing a gui_description_language_with_topic_maps
Designing a gui_description_language_with_topic_mapsDesigning a gui_description_language_with_topic_maps
Designing a gui_description_language_with_topic_maps
 
Maiana - The social Topic Maps explorer
Maiana - The social Topic Maps explorerMaiana - The social Topic Maps explorer
Maiana - The social Topic Maps explorer
 
Tmra2010 matsuuraposter
Tmra2010 matsuuraposterTmra2010 matsuuraposter
Tmra2010 matsuuraposter
 
Automatic semantic interpretation of unstructured data for knowledge management
Automatic semantic interpretation of unstructured data for knowledge managementAutomatic semantic interpretation of unstructured data for knowledge management
Automatic semantic interpretation of unstructured data for knowledge management
 
Putting topic maps to rest.tmra2010
Putting topic maps to rest.tmra2010Putting topic maps to rest.tmra2010
Putting topic maps to rest.tmra2010
 
Presentation final
Presentation finalPresentation final
Presentation final
 
Evaluation of Instances Asset in a Topic Maps-Based Ontology
Evaluation of Instances Asset in a Topic Maps-Based OntologyEvaluation of Instances Asset in a Topic Maps-Based Ontology
Evaluation of Instances Asset in a Topic Maps-Based Ontology
 
Defining Domain-Specific Facets for Topic Maps With TMQL Path Expressions
Defining Domain-Specific Facets for Topic Maps With TMQL Path ExpressionsDefining Domain-Specific Facets for Topic Maps With TMQL Path Expressions
Defining Domain-Specific Facets for Topic Maps With TMQL Path Expressions
 
Mappe1
Mappe1Mappe1
Mappe1
 
Et Tu, Brute? Topic Maps and Discourse Semantics
Et Tu, Brute? Topic Maps and Discourse SemanticsEt Tu, Brute? Topic Maps and Discourse Semantics
Et Tu, Brute? Topic Maps and Discourse Semantics
 
A PHP library for Ontopia-CMS Integration
A PHP library for Ontopia-CMS IntegrationA PHP library for Ontopia-CMS Integration
A PHP library for Ontopia-CMS Integration
 

Kürzlich hochgeladen

Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Victor Rentea
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
panagenda
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
?#DUbAI#??##{{(☎️+971_581248768%)**%*]'#abortion pills for sale in dubai@
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
 

Kürzlich hochgeladen (20)

Corporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptxCorporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptx
 
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
 
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
WSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering DevelopersWSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering Developers
 
[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf
 
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsMS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In PakistanCNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistan
 
Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWEREMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
 
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
 
Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ..."I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
 

Construction of Authority Information for Personal Names Focused on the Former Japanese Nobility Using Topic Map

  • 1. TMRA 2009 Construction of Authority Information for Personal Names Focused on the Former Japanese Nobility using a Topic Map p y g p p 2009/11/12, Leipzig, Germany , p g, y Norio Togiya (togiya.norio@iii.u-tokyo.ac.jp) University of Tokyo Motomu Naito (motom@green.ocn.ne.jp) Knowledge Synergy Inc.
  • 2. Table of Contents 1. Introduction 2. Target of investigation g g 3. Constructing Authority Information 4. Demo (authority topic map) 5. Issues and Discussion 5.1 Person s 5 1 Person’s name problem 5.2 Diversity of Information Items 5.3 5 3 Problems of Centralized Topic Map 6. Future work: Toward Distributed and Linked Topic Maps 7. Conclusion
  • 3. 1. Introduction Background ・ There are many variant p y personal names for the same Japanese p historical individual ・ When handling historical data it is desirable to control them ・ But there i no database providing such information in Japan at h is d b idi hi f i i the present ・ There is a need to construct the authority information for personal names structured in a standardized data description language Purpose ・ To investigate and analyze persons who played significant social and cultural role ・ To construct the authority information of them to support historical and cultural study
  • 4. 2. Target information ・ In the first stage, we are constructing a topic map of the authority information relatively small scale and limited area ・ We are focusing on the former Japanese nobility ・ Japanese aristocracy is existing from after Meiji Restoration in 1869 until after the end of WWⅡ i 1947 til ft th d f in ・ They played significant social and cultural roles in the pre WWⅡ pre-WWⅡ period ・ They often changed their name and had many alias names ・ Meanwhile different persons often had the same name
  • 5. 3. Constructing Authority Information We constructed our first topic map for the Authority Information according to the following process I f i di h f ll i - Categorizing authority information -O l Ontology making ki - Topic map making - A li i making Application ki
  • 6. 3.1 Categorizing authority information ・ We collected and analyzed information items ・ We categorized those items and mapped them to information items of Topic Maps ・ The following table shows the categories and TM correspondence table: Categories of personal name source data (1/3) Categories of personal name authority information Correspondence in Topic Maps Name Kanji (family name/personal name) Topic name (multiple responses Reading (family name/personal name) Variant and/or Internal occurrence possible) Romanization (family name/personal name) Variant and/or Internal occurrence Type of names (alternatives or childhood Variant and/or Internal occurrence names) (multiple responses possible) Nationality (multiple responses possible) Linked by association to other topics Gender (multiple responses possible) Linked by association to other topics Rank (multiple responses possible) Linked by association to other topics Profession (multiple response possible) Linked by association to other topics Person ID Subject ID
  • 7. table: Categories of personal name source data (2/3) Categories of personal name authority information Correspondence in Topic Maps Related URL/URI Person URI External occurrence Related URL (multiple response possible) External occurrence Dates of birth and DOB (Western calendar only) External occurrence death (multiple responses possible) DOD (Western calendar only) External occurrence (multiple responses possible) Brief biography Japanese biography Internal occurrence English biography Internal occurrence Place of birth (multiple responses possible) Pl f bi th ( lti l ibl ) Linked by Li k d b association t other t i i ti to th topics Place of residence (multiple responses possible) Linked by association to other topics
  • 8. table: Categories of personal name source data (3/3) Categories of personal name authority information Correspondence in Topic Maps Administrative data Date of input (multiple responses possible) Internal occurrence Last update Internal occurrence Type Internal occurrence Language code (multiple responses possible) Internal occurrence Character code Internal occurrence Source confirmation Internal occurrence Input by (multiple responses possible) Internal occurrence Relationship (multiple Teacher, student, acquaintance, father, mother, Association responses possible elder brother, elder sister, younger brother, younger sister, husband, wife, child
  • 9. 3.2 Ontology making We made ontology according to the categorized items (subjects) and relationships between them Ontology diagram of the topic map - Squares represent Topic types - Lines represent Association types
  • 10. 3.3 Topic map making - The topic map was generated using DB2TM which is included in Ontopia p - Ontology definition file and XML configuration file are needed for DB2TM - Ontology definition file defines the following: - Topic types - Name types - Association types yp - Association role types - Occurrence types - XML configuration file defines the mapping rule from EXCEL (CSV f format) i ) into the ontology d fi i i h l definition
  • 11. 3.4 Application making We developed the application using Ontopia Navigator Framework The f Th feature of the web application f h b li i - Displaying instance list of each J2EE Web Server topic type e.g. Tomcat - Displaying instance detail http (names, occurrences and assciations) JSP Page - N i i topic map Navigating i topic - Character string search map Taglibs - Tolog query interface - Graphical representation <HTML> pages Query engine server client (Source: Ontopia, “The Ontopia Navigator Framework Developer’s Guide” )
  • 12. 4. Demo The b Th web application for personal authority topic map li i f l h i i Screen shots of the application
  • 13. 5. Issues and discussion 5.1 Person’s name problem - Many names for one person y p - The same name for many persons - Three notations for each name Kanji name Reading (Katakana or Hiragana name) g( g ) Roman name - How to describe them as topic name p - Content model is showed as follows: name = element name { typicalName, aliasName* } typicalName = element typicalName { kanjiName, katakanaName, romanName } aliasName = element aliasName { kanjiName, katakanaName, romanName } j
  • 14. 5. Issues and discussion 5.2 Diversity of Information Items 5 2 Di it f I f ti It (1) Two kind of information items ・ Fundamental information items d li f i i They are good candidate for PSI and PSD ex: typical name alias nationality gender, orders, name, alias, nationality, gender orders date of birth and death, born and lived place, etc. ・ Specific information items p They change according to individual domain and view ex: biographical outline, achievement, personal connection, position, expertise, etc. ii i (2) Items not depend on person ex: place country organization, occupation, etc. place, country, organization occupation etc ・ We cannot make exhaustive list for them if we pick up them by occurrence basis. But if we make those list once, we can y share them among many application
  • 15. 5. Issues and discussion 5.3 Problems of Centralized Topic Map ・ Authority information consists of diverse items and many independent items ・ It is very difficult and troublesome to integrate those items into one centralized topic map ・ Such topic map become complicated, hard to understand and difficult to maintain ・ Moreover there are different relations depending on domains and ranges and they change according to the point of views ・ It is desirable that we can filter out specific relation and link from others flexibly
  • 16. 6. Future work: Toward Distributed and Linked Topic Maps Instead of centralized topic map, distributed and linked topic maps are preferable ・ Those topic maps are specialized and relatively simple and small ・CCurrently a large amount of person’s information is inherited by tl l t f ’ i f ti i i h it d b many libraries, museums, research institutes, etc. separately. ・ We think it is natural those organization continue to manage them ・ We are making topic maps about information owned by them - Author information owned by National Diet Library: 800,000 records - Historical person information owned by National Institute of Japanese Literat re: 50,000 records Literature: 50 000 ・ Next we plan to create topic maps for places, countries, organizations, occupations, etc individually ・ Then we will make effort to link them
  • 17. Toward Distributed and Linked Topic Maps We W are planning to use the mechanism of TMRAP, Subj3ct, l i h h i f TMRAP S bj3 Ontopedia to realize the Distributed and Linked Topic Maps
  • 18. 7. Conclusion ・ As the first stage, we created the topic map for personal name authority information focused on the former Japanese nobilities y p ・ It made clear the genealogies, the network of the marriage and other interrelationships between them ・ We believe our authority information is very useful for researchers to study persons and their network related social, social cultural and historical affair ・ There are strong needs to personal authority from various domain ・ The data structure, Topic Maps, and the system structure we propose have generality scalability and flexibility generality, ・ Thus, those are adaptable for various fields in the future