SlideShare uma empresa Scribd logo
1 de 23
Baixar para ler offline
1DCMI Metadata Provenance
Metadata Provenance
Two motivating scenarios for metametadata
Kai Eckert
Mannheim University Library
Michael Panzer
OCLC
DCMI Metadata Provenance
F2F Meeting and Workshop
October 20th, 2010
Pittsburgh, PA, USA
2DCMI Metadata Provenance
Metametadata
 Provenance information outside of existing data models
 „Transparent“
  Potential use­cases:
 Whenever you have lots of legacy data in a model that does 
not support provenance.
 Whenever new applications require information that can not 
be expressed in the existing data model.
3DCMI Metadata Provenance
Need for Metametadata
 Metadata are also data, so we need additional data 
about them.                  Metametadata
 Metadata about a whole metadata record, not for single 
statements:
 Who created this metadata record?
 When was this record created?
 …
  Metadata Provenance
4DCMI Metadata Provenance
Statements about (single)
statements
 Often proposed, but only vague instructions how to 
implement it.
 Needed, if metadata records are created by the 
combination of single statements from different 
sources.
 Needed for the storage of arbitrary additional 
information for single statements, that can not be 
represented in the metadata format easily.
5DCMI Metadata Provenance
Metametadata vs. Model
based provenance
 Simple statement:
 Peter knows Paul.
 Provenance information:
 This statement is made by Mary.
Peter Paul
Mary
Knows
says
Metalevel
6DCMI Metadata Provenance
Data model extension
Peter
Paul
Mary
Has Relation
Relation
Has Object
Has Creator
Knows Relation
Has Type
 Simple statement:
 Peter knows Paul.
 Provenance information:
 This statement is made by Mary.
7DCMI Metadata Provenance
Peter
Paul
Mary
hasRelation
Relation
Has Object
Has Creator
Knows Relation
Has Type
Peter Paul
Mary
Knows
says
Metalevel
8DCMI Metadata Provenance
Implementation in RDF
 This should not be limited to RDF!
 But it is a good example and RDF has a currently a 
high impact.
 RDF provides no satisfying answer how to express 
provenance information.
 Different possible implementation, e.g.:
 Reification
 Named Graphs
 Extended data models
 ...
9DCMI Metadata Provenance
RDF Reification
 RDF supports statements about statements by means of 
Reification, literally „objectification“ (actually a 
“subjectification”...).
 “The book is written by Goethe“ is said by Kai.
How is it done in RDF:
ex:someID rdf:type rdf:Statement .
ex:someID rdf:subject “The book”.
ex:someID rdf:predicate ex:isWrittenBy .
ex:someID rdf:object "Goethe" .
ex:someID ex:isSaidBy “Kai” .
Subject Predicate Object
10DCMI Metadata Provenance
S u b j e c t P r e d i c a t e O b j e c t
1 e x : p 1 2 3 r d f : t y p e e x : p e r s o n
2 e x : p 1 2 3 e x : h a s N a m e “ K a i E c k e r t ”
3 e x : p 1 2 3 e x : w o r k s F o r e x : u n i m a
E x a m p l e 1 : A s i m p l e R D F e x a m p l e
Simplified Presentation
 Based on Notation 3 (RDF/N3)
 Identification of statements by the line number:
4 #1 dc:creator ''Kai Eckert''
The subject of a statement is a reference to another statement.
With this notation, we imply a reification.
11DCMI Metadata Provenance
Scenario 1: Crosswalks
 Crosswalks define rules, how metadata from one 
schema are represented in a different schema.
 Problems: 
 Loss of information
 Erroneous Crosswalks
MARC field Dublin Core element
260$c (Date of publication, distribution, etc.) → Date.Created
522 (Geographic Coverage Note) → Coverage.Spatial
300$a (Physical Description) → Format.Extent
12DCMI Metadata Provenance
Possibilities for
Metametadata
 Storage of additional information, which would be lost 
in the target format.
 Identification of Crosswalks with version and the 
specific rule for every generated statement.
Which statements are generated by a specific rule?
Which rule is responsible for a specific (erroneous) statement?
Which data in the originating format was used to generate a 
specific statement?
13DCMI Metadata Provenance
Example 1: Crosswalk Data
S u b j e c t P r e d i c a t e O b j e c t
1 e x : d o c b a s e / d o c 1 d c : t i t l e “ E x a m p l e t i t l e ”
2 # 1 e x : r u l e 1 6
3 # 1 e x : c r o s s w a l k 3
4 # 1 e x : o r i g i n M A R C : 2 4 5
5 e x : d o c b a s e / d o c 2 d c : t i t l e “ A b o u t f i n d i n g a t i t l e ”
6 # 5 e x : r u l e 1 6
7 # 5 e x : c r o s s w a l k 3
8 # 5 e x : o r i g i n M A R C : 2 4 5
9 e x : d o c b a s e / d o c 3 d c : t i t l e “ L o r e m i p s u m d o l o r ”
1 0 # 9 e x : r u l e 1 8
1 1 # 9 e x : c r o s s w a l k 3
1 2 # 9 e x : o r i g i n M A R C : 2 4 5
1 3 # 9 e x : o r i g i n M A R C : 2 4 6
1 4 e x : d o c b a s e / d o c 4 d c : t i t l e “ C o n s e t e t u r S a d i p s c i n g ”
1 5 # 1 4 e x : r u l e 1 9
1 6 # 1 4 e x : c r o s s w a l k 6
1 7 # 1 4 e x : o r i g i n x m l : / r e c o r d / d e s c r i p t i o n
E x a m p l e 4 : R e s u l t i n g R D F s t a t e m e n t s w i t h a d d i t i o n a l M e t a m e t a d a t a
14DCMI Metadata Provenance
Crosswalk Updates
 Which statements are generated by a given rule and 
need to be regenerated after an update?
SELECT ?document ?field ?value WHERE {
?t rdf:subject ?document .
?t rdf:predicate ?field .
?t rdf:object ?value .
?t ex:rule 16 .
?t ex:crosswalk 3 .
}
document field value
ex:docbase/doc1 http://www.example.org/dc#title "Example title"
ex:docbase/doc2 http://www.example.org/dc#title "About ding a title"
document field value
ex:docbase/doc1 http://www.example.org/dc#title "Example title"
ex:docbase/doc2 http://www.example.org/dc#title "About ding a title"
15DCMI Metadata Provenance
Crosswalk Debugging
 Which rule is responsible for a given statement and 
what was the original data?
SELECT ?crosswalk ?rule ?origin WHERE {
?t rdf:subject <ex:docbase/doc1> .
?t rdf:predicate dc:title .
?t rdf:object "Example title" .
?t ex:rule ?rule .
?t ex:crosswalk ?crosswalk .
?t ex:origin ?origin .
}
crosswalk rule origin
3 16 "MARC:245"
crosswalk rule origin
3 16 "MARC:245"
16DCMI Metadata Provenance
Scenario 2: Different
Sources for Metadata
 Manual indexing is costly.
 Many documents are not indexed at all or not 
searchable:
 Journal Articles
 Externally owned documents 
 Working papers
 Webpages
 New sources for metadata?
17DCMI Metadata Provenance
New ways for document
indexing
 Automatic processes
 Tagging
 (Automatic) mapping of metadata from external 
sources
 Problem: Lack of quality
 How do you integrate these data from different sources without 
compromising the retrieval quality?
18DCMI Metadata Provenance
Possibilities for
Metametadata
 Storage of the source of single statements.
 Storage of further source­specific information:
 Weighting for automatically generated subject headings.
 Number of users who tagged a document with a given tag.
 The original subject heading in case of an automatic 
translation or mapping.
Can we use these additional information to improve document 
retrieval?
19DCMI Metadata Provenance
Example 2: Subject indexing
S u b j e c t P r e d i c a t e O b j e c t
1 e x : d o c b a s e / d o c 1 d c : s u b j e c t e x : t h e s / s u b 2 0
2 # 1 e x : s o u r c e e x : s o u r c e s / a u t o i n d e x 1
3 # 1 e x : r a n k 0 . 5 5
4 e x : d o c b a s e / d o c 1 d c : s u b j e c t e x : t h e s / s u b 3 0
5 # 4 e x : s o u r c e e x : s o u r c e s / a u t o i n d e x 1
6 # 4 e x : r a n k 0 . 8
7 e x : d o c b a s e / d o c 1 d c : s u b j e c t e x : t h e s / s u b 3 0
8 # 7 e x : s o u r c e e x : s o u r c e s / p f e f f e r
9 # 7 e x : r a n k 1 . 0
1 0 e x : d o c b a s e / d o c 1 d c : s u b j e c t e x : t h e s / s u b 4 0
1 1 # 1 0 e x : s o u r c e e x : s o u r c e s / p f e f f e r
1 2 # 1 0 e x : r a n k 1 . 0
1 3 e x : s o u r c e s / a u t o i n d e x 1 e x : t y p e e x : t y p e s / a u t o
1 4 e x : s o u r c e s / p f e f f e r e x : t y p e e x : t y p e s / m a n u a l
E x a m p l e 7 : S u b j e c t a s s i g n m e n t s b y d i f f e r e n t s o u r c e s
20DCMI Metadata Provenance
Backward compatibility
 While there are four assignments for subject headings, 
the statement 
“ex:docbase/doc1 dc:subject
ex:thes/sub30”
is still one statement, regardless of the number of 
times you put it into your RDF store.
 Important for applications, that access the RDF Data, 
but do not handle the RDF reification.
 Your metadata remains valid, in particular there 
are no doublets.
21DCMI Metadata Provenance
Separating the sources
 Which statements are made by a specific source (here: 
Pfeffer)?
SELECT ?document ?value WHERE {
?t rdf:subject ?document .
?t rdf:predicate dc:subject .
?t rdf:object ?value .
?t ex:source <ex:sources/pfeffer> .
}
document subject
ex:docbase/doc1 ex:thes/sub30
ex:docbase/doc1 ex:thes/sub40
document subject
ex:docbase/doc1 ex:thes/sub30
ex:docbase/doc1 ex:thes/sub40
22DCMI Metadata Provenance
Extended queries
 Use all manually created subject headings.
 Use all subject headings with a rank > 0.7.
SELECT DISTINCT ?document ?subject WHERE {
?t rdf:subject ?document .
?t rdf:predicate dc:subject .
?t rdf:object ?subject .
?t ex:source ?source .
?source ex:type ?type .
?t ex:rank ?rank .
FILTER (
?type = <ex:types/manual> || ?rank > 0.7
)
}
document subject
ex:docbase/doc1 ex:thes/sub30
ex:docbase/doc1 ex:thes/sub40
document subject
ex:docbase/doc1 ex:thes/sub30
ex:docbase/doc1 ex:thes/sub40
23DCMI Metadata Provenance
Conclusion
 Many applications of metametadata in the library fields 
can be realized with Metametadata.
 No change on the underlying data models needed.
 But:
 Reification is not well accepted in the community.
 Named graphs are not (yet) part of RDF standard.
 ...
 Existing approaches are usable, but users need more 
guidance how to implement them.
 Metametadata is not always the appropriate solution 
(meta­level complexity vs. data model complexity)

Mais conteúdo relacionado

Semelhante a Metadata Provenance

Understanding the Standards Gap
Understanding the Standards GapUnderstanding the Standards Gap
Understanding the Standards GapDan Brickley
 
Explainable AI - making ML and DL models more interpretable
Explainable AI - making ML and DL models more interpretableExplainable AI - making ML and DL models more interpretable
Explainable AI - making ML and DL models more interpretableAditya Bhattacharya
 
Ks2008 Semanticweb In Action
Ks2008 Semanticweb In ActionKs2008 Semanticweb In Action
Ks2008 Semanticweb In ActionRinke Hoekstra
 
Querying data on the Web – client or server?
Querying data on the Web – client or server?Querying data on the Web – client or server?
Querying data on the Web – client or server?Ruben Verborgh
 
Interlinking Standardized OpenStreetMap Data and Citizen Science Data in the ...
Interlinking Standardized OpenStreetMap Data and Citizen Science Data in the ...Interlinking Standardized OpenStreetMap Data and Citizen Science Data in the ...
Interlinking Standardized OpenStreetMap Data and Citizen Science Data in the ...Werner Leyh
 
Data Modelling at Scale
Data Modelling at ScaleData Modelling at Scale
Data Modelling at ScaleDavid Simons
 
Dataset Catalogs as a Foundation for FAIR* Data
Dataset Catalogs as a Foundation for FAIR* DataDataset Catalogs as a Foundation for FAIR* Data
Dataset Catalogs as a Foundation for FAIR* DataTom Plasterer
 
Modern Association Rule Mining Methods
Modern Association Rule Mining MethodsModern Association Rule Mining Methods
Modern Association Rule Mining Methodsijcsity
 
Port Clearance Rules in PSOA RuleML: From Controlled-English Regulation to Ob...
Port Clearance Rules in PSOA RuleML: From Controlled-English Regulation to Ob...Port Clearance Rules in PSOA RuleML: From Controlled-English Regulation to Ob...
Port Clearance Rules in PSOA RuleML: From Controlled-English Regulation to Ob...RuleML
 
Propagation of Policies in Rich Data Flows
Propagation of Policies in Rich Data FlowsPropagation of Policies in Rich Data Flows
Propagation of Policies in Rich Data FlowsEnrico Daga
 
Awesome Traefik - Ingress Controller for Kubernetes - Swapnasagar Pradhan
Awesome Traefik - Ingress Controller for Kubernetes - Swapnasagar PradhanAwesome Traefik - Ingress Controller for Kubernetes - Swapnasagar Pradhan
Awesome Traefik - Ingress Controller for Kubernetes - Swapnasagar PradhanAjeet Singh Raina
 
Object Oriented Software Development revision slide
Object Oriented Software Development revision slide Object Oriented Software Development revision slide
Object Oriented Software Development revision slide fauza jali
 
Ark in Glass v3 Driving the Instance
Ark in Glass v3 Driving the InstanceArk in Glass v3 Driving the Instance
Ark in Glass v3 Driving the InstanceBrij Consulting, LLC
 
Modern association rule mining methods
Modern association rule mining methodsModern association rule mining methods
Modern association rule mining methodsijcsity
 
Profiling Web Archives IIPC GA 2015
Profiling Web Archives IIPC GA 2015Profiling Web Archives IIPC GA 2015
Profiling Web Archives IIPC GA 2015Sawood Alam
 
Semantic SEO in the post Hummingbird Era and WordLift
Semantic SEO in the post Hummingbird Era and WordLiftSemantic SEO in the post Hummingbird Era and WordLift
Semantic SEO in the post Hummingbird Era and WordLiftAndrea Volpini
 
Declarative Multilingual Information Extraction with SystemT
Declarative Multilingual Information Extraction with SystemTDeclarative Multilingual Information Extraction with SystemT
Declarative Multilingual Information Extraction with SystemTLaura Chiticariu
 
Speculating on the Future of the Metadata Standards Landscape
Speculating on the Future of the Metadata Standards LandscapeSpeculating on the Future of the Metadata Standards Landscape
Speculating on the Future of the Metadata Standards LandscapeJenn Riley
 
Data.dcs: Converting Legacy Data into Linked Data
Data.dcs: Converting Legacy Data into Linked DataData.dcs: Converting Legacy Data into Linked Data
Data.dcs: Converting Legacy Data into Linked DataMatthew Rowe
 

Semelhante a Metadata Provenance (20)

Understanding the Standards Gap
Understanding the Standards GapUnderstanding the Standards Gap
Understanding the Standards Gap
 
Explainable AI - making ML and DL models more interpretable
Explainable AI - making ML and DL models more interpretableExplainable AI - making ML and DL models more interpretable
Explainable AI - making ML and DL models more interpretable
 
Ks2008 Semanticweb In Action
Ks2008 Semanticweb In ActionKs2008 Semanticweb In Action
Ks2008 Semanticweb In Action
 
Querying data on the Web – client or server?
Querying data on the Web – client or server?Querying data on the Web – client or server?
Querying data on the Web – client or server?
 
SENCER_panel.ppt
SENCER_panel.pptSENCER_panel.ppt
SENCER_panel.ppt
 
Interlinking Standardized OpenStreetMap Data and Citizen Science Data in the ...
Interlinking Standardized OpenStreetMap Data and Citizen Science Data in the ...Interlinking Standardized OpenStreetMap Data and Citizen Science Data in the ...
Interlinking Standardized OpenStreetMap Data and Citizen Science Data in the ...
 
Data Modelling at Scale
Data Modelling at ScaleData Modelling at Scale
Data Modelling at Scale
 
Dataset Catalogs as a Foundation for FAIR* Data
Dataset Catalogs as a Foundation for FAIR* DataDataset Catalogs as a Foundation for FAIR* Data
Dataset Catalogs as a Foundation for FAIR* Data
 
Modern Association Rule Mining Methods
Modern Association Rule Mining MethodsModern Association Rule Mining Methods
Modern Association Rule Mining Methods
 
Port Clearance Rules in PSOA RuleML: From Controlled-English Regulation to Ob...
Port Clearance Rules in PSOA RuleML: From Controlled-English Regulation to Ob...Port Clearance Rules in PSOA RuleML: From Controlled-English Regulation to Ob...
Port Clearance Rules in PSOA RuleML: From Controlled-English Regulation to Ob...
 
Propagation of Policies in Rich Data Flows
Propagation of Policies in Rich Data FlowsPropagation of Policies in Rich Data Flows
Propagation of Policies in Rich Data Flows
 
Awesome Traefik - Ingress Controller for Kubernetes - Swapnasagar Pradhan
Awesome Traefik - Ingress Controller for Kubernetes - Swapnasagar PradhanAwesome Traefik - Ingress Controller for Kubernetes - Swapnasagar Pradhan
Awesome Traefik - Ingress Controller for Kubernetes - Swapnasagar Pradhan
 
Object Oriented Software Development revision slide
Object Oriented Software Development revision slide Object Oriented Software Development revision slide
Object Oriented Software Development revision slide
 
Ark in Glass v3 Driving the Instance
Ark in Glass v3 Driving the InstanceArk in Glass v3 Driving the Instance
Ark in Glass v3 Driving the Instance
 
Modern association rule mining methods
Modern association rule mining methodsModern association rule mining methods
Modern association rule mining methods
 
Profiling Web Archives IIPC GA 2015
Profiling Web Archives IIPC GA 2015Profiling Web Archives IIPC GA 2015
Profiling Web Archives IIPC GA 2015
 
Semantic SEO in the post Hummingbird Era and WordLift
Semantic SEO in the post Hummingbird Era and WordLiftSemantic SEO in the post Hummingbird Era and WordLift
Semantic SEO in the post Hummingbird Era and WordLift
 
Declarative Multilingual Information Extraction with SystemT
Declarative Multilingual Information Extraction with SystemTDeclarative Multilingual Information Extraction with SystemT
Declarative Multilingual Information Extraction with SystemT
 
Speculating on the Future of the Metadata Standards Landscape
Speculating on the Future of the Metadata Standards LandscapeSpeculating on the Future of the Metadata Standards Landscape
Speculating on the Future of the Metadata Standards Landscape
 
Data.dcs: Converting Legacy Data into Linked Data
Data.dcs: Converting Legacy Data into Linked DataData.dcs: Converting Legacy Data into Linked Data
Data.dcs: Converting Legacy Data into Linked Data
 

Mais de Kai Eckert

Judaica link und der FID Jüdische Studien
Judaica link und der FID Jüdische StudienJudaica link und der FID Jüdische Studien
Judaica link und der FID Jüdische StudienKai Eckert
 
Linked Open Citation Database (LOC-DB)
Linked Open Citation Database (LOC-DB)Linked Open Citation Database (LOC-DB)
Linked Open Citation Database (LOC-DB)Kai Eckert
 
JudaicaLink: Linked Data in the Jewish Studies FID
JudaicaLink: Linked Data in the Jewish Studies FIDJudaicaLink: Linked Data in the Jewish Studies FID
JudaicaLink: Linked Data in the Jewish Studies FIDKai Eckert
 
Linked Data nach dem Hype
Linked Data nach dem HypeLinked Data nach dem Hype
Linked Data nach dem HypeKai Eckert
 
Guidance, Please! Towards a Framework for RDF-based Constraint Languages.
Guidance, Please! Towards a Framework for RDF-based Constraint Languages.Guidance, Please! Towards a Framework for RDF-based Constraint Languages.
Guidance, Please! Towards a Framework for RDF-based Constraint Languages.Kai Eckert
 
JudaicaLink: Linked Data from Jewish Encyclopediae
JudaicaLink: Linked Data from Jewish EncyclopediaeJudaicaLink: Linked Data from Jewish Encyclopediae
JudaicaLink: Linked Data from Jewish EncyclopediaeKai Eckert
 
RDF Application Profiles
RDF Application ProfilesRDF Application Profiles
RDF Application ProfilesKai Eckert
 
Specialising the EDM for Digitised Manuscript (SWIB13)
Specialising the EDM for Digitised Manuscript (SWIB13)Specialising the EDM for Digitised Manuscript (SWIB13)
Specialising the EDM for Digitised Manuscript (SWIB13)Kai Eckert
 
Metadata Provenance Tutorial at SWIB 13, Part 1
Metadata Provenance Tutorial at SWIB 13, Part 1Metadata Provenance Tutorial at SWIB 13, Part 1
Metadata Provenance Tutorial at SWIB 13, Part 1Kai Eckert
 
The DM2E Data Model and the DM2E Ingestion Infrastructure
The DM2E Data Model and the DM2E Ingestion InfrastructureThe DM2E Data Model and the DM2E Ingestion Infrastructure
The DM2E Data Model and the DM2E Ingestion InfrastructureKai Eckert
 
LOHAI: Providing a baseline for KOS based automatic indexing
LOHAI: Providing a baseline for KOS based automatic indexingLOHAI: Providing a baseline for KOS based automatic indexing
LOHAI: Providing a baseline for KOS based automatic indexingKai Eckert
 
Extending DCAM for Metadata Provenance
Extending DCAM for Metadata ProvenanceExtending DCAM for Metadata Provenance
Extending DCAM for Metadata ProvenanceKai Eckert
 
Bibliotheken und Linked Open Data - Erfahrungen und Ideen aus der UB Mannheim
Bibliotheken und Linked Open Data - Erfahrungen und Ideen aus der UB Mannheim Bibliotheken und Linked Open Data - Erfahrungen und Ideen aus der UB Mannheim
Bibliotheken und Linked Open Data - Erfahrungen und Ideen aus der UB Mannheim Kai Eckert
 
Thesaurusvisualisierung mit ICE-Map und SEMTINEL
Thesaurusvisualisierung mit ICE-Map und SEMTINELThesaurusvisualisierung mit ICE-Map und SEMTINEL
Thesaurusvisualisierung mit ICE-Map und SEMTINELKai Eckert
 
SWIB 2010: Linked Open Projects
SWIB 2010: Linked Open ProjectsSWIB 2010: Linked Open Projects
SWIB 2010: Linked Open ProjectsKai Eckert
 
Towards Interoperable Metadata Provenance
Towards Interoperable Metadata ProvenanceTowards Interoperable Metadata Provenance
Towards Interoperable Metadata ProvenanceKai Eckert
 
Linked Open Projects (DCMI Library Community)
Linked Open Projects (DCMI Library Community)Linked Open Projects (DCMI Library Community)
Linked Open Projects (DCMI Library Community)Kai Eckert
 
Linked Open Projects (DGI-Konferenz)
Linked Open Projects (DGI-Konferenz)Linked Open Projects (DGI-Konferenz)
Linked Open Projects (DGI-Konferenz)Kai Eckert
 
Linked Open Projects
Linked Open ProjectsLinked Open Projects
Linked Open ProjectsKai Eckert
 
Crowdsourcing the Assembly of Concept Hierarchies
Crowdsourcing the Assembly of Concept HierarchiesCrowdsourcing the Assembly of Concept Hierarchies
Crowdsourcing the Assembly of Concept HierarchiesKai Eckert
 

Mais de Kai Eckert (20)

Judaica link und der FID Jüdische Studien
Judaica link und der FID Jüdische StudienJudaica link und der FID Jüdische Studien
Judaica link und der FID Jüdische Studien
 
Linked Open Citation Database (LOC-DB)
Linked Open Citation Database (LOC-DB)Linked Open Citation Database (LOC-DB)
Linked Open Citation Database (LOC-DB)
 
JudaicaLink: Linked Data in the Jewish Studies FID
JudaicaLink: Linked Data in the Jewish Studies FIDJudaicaLink: Linked Data in the Jewish Studies FID
JudaicaLink: Linked Data in the Jewish Studies FID
 
Linked Data nach dem Hype
Linked Data nach dem HypeLinked Data nach dem Hype
Linked Data nach dem Hype
 
Guidance, Please! Towards a Framework for RDF-based Constraint Languages.
Guidance, Please! Towards a Framework for RDF-based Constraint Languages.Guidance, Please! Towards a Framework for RDF-based Constraint Languages.
Guidance, Please! Towards a Framework for RDF-based Constraint Languages.
 
JudaicaLink: Linked Data from Jewish Encyclopediae
JudaicaLink: Linked Data from Jewish EncyclopediaeJudaicaLink: Linked Data from Jewish Encyclopediae
JudaicaLink: Linked Data from Jewish Encyclopediae
 
RDF Application Profiles
RDF Application ProfilesRDF Application Profiles
RDF Application Profiles
 
Specialising the EDM for Digitised Manuscript (SWIB13)
Specialising the EDM for Digitised Manuscript (SWIB13)Specialising the EDM for Digitised Manuscript (SWIB13)
Specialising the EDM for Digitised Manuscript (SWIB13)
 
Metadata Provenance Tutorial at SWIB 13, Part 1
Metadata Provenance Tutorial at SWIB 13, Part 1Metadata Provenance Tutorial at SWIB 13, Part 1
Metadata Provenance Tutorial at SWIB 13, Part 1
 
The DM2E Data Model and the DM2E Ingestion Infrastructure
The DM2E Data Model and the DM2E Ingestion InfrastructureThe DM2E Data Model and the DM2E Ingestion Infrastructure
The DM2E Data Model and the DM2E Ingestion Infrastructure
 
LOHAI: Providing a baseline for KOS based automatic indexing
LOHAI: Providing a baseline for KOS based automatic indexingLOHAI: Providing a baseline for KOS based automatic indexing
LOHAI: Providing a baseline for KOS based automatic indexing
 
Extending DCAM for Metadata Provenance
Extending DCAM for Metadata ProvenanceExtending DCAM for Metadata Provenance
Extending DCAM for Metadata Provenance
 
Bibliotheken und Linked Open Data - Erfahrungen und Ideen aus der UB Mannheim
Bibliotheken und Linked Open Data - Erfahrungen und Ideen aus der UB Mannheim Bibliotheken und Linked Open Data - Erfahrungen und Ideen aus der UB Mannheim
Bibliotheken und Linked Open Data - Erfahrungen und Ideen aus der UB Mannheim
 
Thesaurusvisualisierung mit ICE-Map und SEMTINEL
Thesaurusvisualisierung mit ICE-Map und SEMTINELThesaurusvisualisierung mit ICE-Map und SEMTINEL
Thesaurusvisualisierung mit ICE-Map und SEMTINEL
 
SWIB 2010: Linked Open Projects
SWIB 2010: Linked Open ProjectsSWIB 2010: Linked Open Projects
SWIB 2010: Linked Open Projects
 
Towards Interoperable Metadata Provenance
Towards Interoperable Metadata ProvenanceTowards Interoperable Metadata Provenance
Towards Interoperable Metadata Provenance
 
Linked Open Projects (DCMI Library Community)
Linked Open Projects (DCMI Library Community)Linked Open Projects (DCMI Library Community)
Linked Open Projects (DCMI Library Community)
 
Linked Open Projects (DGI-Konferenz)
Linked Open Projects (DGI-Konferenz)Linked Open Projects (DGI-Konferenz)
Linked Open Projects (DGI-Konferenz)
 
Linked Open Projects
Linked Open ProjectsLinked Open Projects
Linked Open Projects
 
Crowdsourcing the Assembly of Concept Hierarchies
Crowdsourcing the Assembly of Concept HierarchiesCrowdsourcing the Assembly of Concept Hierarchies
Crowdsourcing the Assembly of Concept Hierarchies
 

Último

Alper Gobel In Media Res Media Component
Alper Gobel In Media Res Media ComponentAlper Gobel In Media Res Media Component
Alper Gobel In Media Res Media ComponentInMediaRes1
 
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions  for the students and aspirants of Chemistry12th.pptxOrganic Name Reactions  for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions for the students and aspirants of Chemistry12th.pptxVS Mahajan Coaching Centre
 
How to Make a Pirate ship Primary Education.pptx
How to Make a Pirate ship Primary Education.pptxHow to Make a Pirate ship Primary Education.pptx
How to Make a Pirate ship Primary Education.pptxmanuelaromero2013
 
Hybridoma Technology ( Production , Purification , and Application )
Hybridoma Technology  ( Production , Purification , and Application  ) Hybridoma Technology  ( Production , Purification , and Application  )
Hybridoma Technology ( Production , Purification , and Application ) Sakshi Ghasle
 
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Sapana Sha
 
Introduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxIntroduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxpboyjonauth
 
URLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website AppURLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website AppCeline George
 
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17Celine George
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxheathfieldcps1
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeThiyagu K
 
Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityGeoBlogs
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...EduSkills OECD
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxiammrhaywood
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactdawncurless
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)eniolaolutunde
 
Arihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfArihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfchloefrazer622
 
Concept of Vouching. B.Com(Hons) /B.Compdf
Concept of Vouching. B.Com(Hons) /B.CompdfConcept of Vouching. B.Com(Hons) /B.Compdf
Concept of Vouching. B.Com(Hons) /B.CompdfUmakantAnnand
 
APM Welcome, APM North West Network Conference, Synergies Across Sectors
APM Welcome, APM North West Network Conference, Synergies Across SectorsAPM Welcome, APM North West Network Conference, Synergies Across Sectors
APM Welcome, APM North West Network Conference, Synergies Across SectorsAssociation for Project Management
 

Último (20)

Alper Gobel In Media Res Media Component
Alper Gobel In Media Res Media ComponentAlper Gobel In Media Res Media Component
Alper Gobel In Media Res Media Component
 
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions  for the students and aspirants of Chemistry12th.pptxOrganic Name Reactions  for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
 
How to Make a Pirate ship Primary Education.pptx
How to Make a Pirate ship Primary Education.pptxHow to Make a Pirate ship Primary Education.pptx
How to Make a Pirate ship Primary Education.pptx
 
Hybridoma Technology ( Production , Purification , and Application )
Hybridoma Technology  ( Production , Purification , and Application  ) Hybridoma Technology  ( Production , Purification , and Application  )
Hybridoma Technology ( Production , Purification , and Application )
 
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
 
Model Call Girl in Bikash Puri Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in Bikash Puri  Delhi reach out to us at 🔝9953056974🔝Model Call Girl in Bikash Puri  Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in Bikash Puri Delhi reach out to us at 🔝9953056974🔝
 
Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1
 
Introduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxIntroduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptx
 
URLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website AppURLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website App
 
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and Mode
 
Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activity
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impact
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)
 
Arihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfArihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdf
 
Concept of Vouching. B.Com(Hons) /B.Compdf
Concept of Vouching. B.Com(Hons) /B.CompdfConcept of Vouching. B.Com(Hons) /B.Compdf
Concept of Vouching. B.Com(Hons) /B.Compdf
 
APM Welcome, APM North West Network Conference, Synergies Across Sectors
APM Welcome, APM North West Network Conference, Synergies Across SectorsAPM Welcome, APM North West Network Conference, Synergies Across Sectors
APM Welcome, APM North West Network Conference, Synergies Across Sectors
 

Metadata Provenance

  • 1. 1DCMI Metadata Provenance Metadata Provenance Two motivating scenarios for metametadata Kai Eckert Mannheim University Library Michael Panzer OCLC DCMI Metadata Provenance F2F Meeting and Workshop October 20th, 2010 Pittsburgh, PA, USA
  • 2. 2DCMI Metadata Provenance Metametadata  Provenance information outside of existing data models  „Transparent“   Potential use­cases:  Whenever you have lots of legacy data in a model that does  not support provenance.  Whenever new applications require information that can not  be expressed in the existing data model.
  • 3. 3DCMI Metadata Provenance Need for Metametadata  Metadata are also data, so we need additional data  about them.                  Metametadata  Metadata about a whole metadata record, not for single  statements:  Who created this metadata record?  When was this record created?  …   Metadata Provenance
  • 4. 4DCMI Metadata Provenance Statements about (single) statements  Often proposed, but only vague instructions how to  implement it.  Needed, if metadata records are created by the  combination of single statements from different  sources.  Needed for the storage of arbitrary additional  information for single statements, that can not be  represented in the metadata format easily.
  • 5. 5DCMI Metadata Provenance Metametadata vs. Model based provenance  Simple statement:  Peter knows Paul.  Provenance information:  This statement is made by Mary. Peter Paul Mary Knows says Metalevel
  • 6. 6DCMI Metadata Provenance Data model extension Peter Paul Mary Has Relation Relation Has Object Has Creator Knows Relation Has Type  Simple statement:  Peter knows Paul.  Provenance information:  This statement is made by Mary.
  • 7. 7DCMI Metadata Provenance Peter Paul Mary hasRelation Relation Has Object Has Creator Knows Relation Has Type Peter Paul Mary Knows says Metalevel
  • 8. 8DCMI Metadata Provenance Implementation in RDF  This should not be limited to RDF!  But it is a good example and RDF has a currently a  high impact.  RDF provides no satisfying answer how to express  provenance information.  Different possible implementation, e.g.:  Reification  Named Graphs  Extended data models  ...
  • 9. 9DCMI Metadata Provenance RDF Reification  RDF supports statements about statements by means of  Reification, literally „objectification“ (actually a  “subjectification”...).  “The book is written by Goethe“ is said by Kai. How is it done in RDF: ex:someID rdf:type rdf:Statement . ex:someID rdf:subject “The book”. ex:someID rdf:predicate ex:isWrittenBy . ex:someID rdf:object "Goethe" . ex:someID ex:isSaidBy “Kai” . Subject Predicate Object
  • 10. 10DCMI Metadata Provenance S u b j e c t P r e d i c a t e O b j e c t 1 e x : p 1 2 3 r d f : t y p e e x : p e r s o n 2 e x : p 1 2 3 e x : h a s N a m e “ K a i E c k e r t ” 3 e x : p 1 2 3 e x : w o r k s F o r e x : u n i m a E x a m p l e 1 : A s i m p l e R D F e x a m p l e Simplified Presentation  Based on Notation 3 (RDF/N3)  Identification of statements by the line number: 4 #1 dc:creator ''Kai Eckert'' The subject of a statement is a reference to another statement. With this notation, we imply a reification.
  • 11. 11DCMI Metadata Provenance Scenario 1: Crosswalks  Crosswalks define rules, how metadata from one  schema are represented in a different schema.  Problems:   Loss of information  Erroneous Crosswalks MARC field Dublin Core element 260$c (Date of publication, distribution, etc.) → Date.Created 522 (Geographic Coverage Note) → Coverage.Spatial 300$a (Physical Description) → Format.Extent
  • 12. 12DCMI Metadata Provenance Possibilities for Metametadata  Storage of additional information, which would be lost  in the target format.  Identification of Crosswalks with version and the  specific rule for every generated statement. Which statements are generated by a specific rule? Which rule is responsible for a specific (erroneous) statement? Which data in the originating format was used to generate a  specific statement?
  • 13. 13DCMI Metadata Provenance Example 1: Crosswalk Data S u b j e c t P r e d i c a t e O b j e c t 1 e x : d o c b a s e / d o c 1 d c : t i t l e “ E x a m p l e t i t l e ” 2 # 1 e x : r u l e 1 6 3 # 1 e x : c r o s s w a l k 3 4 # 1 e x : o r i g i n M A R C : 2 4 5 5 e x : d o c b a s e / d o c 2 d c : t i t l e “ A b o u t f i n d i n g a t i t l e ” 6 # 5 e x : r u l e 1 6 7 # 5 e x : c r o s s w a l k 3 8 # 5 e x : o r i g i n M A R C : 2 4 5 9 e x : d o c b a s e / d o c 3 d c : t i t l e “ L o r e m i p s u m d o l o r ” 1 0 # 9 e x : r u l e 1 8 1 1 # 9 e x : c r o s s w a l k 3 1 2 # 9 e x : o r i g i n M A R C : 2 4 5 1 3 # 9 e x : o r i g i n M A R C : 2 4 6 1 4 e x : d o c b a s e / d o c 4 d c : t i t l e “ C o n s e t e t u r S a d i p s c i n g ” 1 5 # 1 4 e x : r u l e 1 9 1 6 # 1 4 e x : c r o s s w a l k 6 1 7 # 1 4 e x : o r i g i n x m l : / r e c o r d / d e s c r i p t i o n E x a m p l e 4 : R e s u l t i n g R D F s t a t e m e n t s w i t h a d d i t i o n a l M e t a m e t a d a t a
  • 14. 14DCMI Metadata Provenance Crosswalk Updates  Which statements are generated by a given rule and  need to be regenerated after an update? SELECT ?document ?field ?value WHERE { ?t rdf:subject ?document . ?t rdf:predicate ?field . ?t rdf:object ?value . ?t ex:rule 16 . ?t ex:crosswalk 3 . } document field value ex:docbase/doc1 http://www.example.org/dc#title "Example title" ex:docbase/doc2 http://www.example.org/dc#title "About ding a title" document field value ex:docbase/doc1 http://www.example.org/dc#title "Example title" ex:docbase/doc2 http://www.example.org/dc#title "About ding a title"
  • 15. 15DCMI Metadata Provenance Crosswalk Debugging  Which rule is responsible for a given statement and  what was the original data? SELECT ?crosswalk ?rule ?origin WHERE { ?t rdf:subject <ex:docbase/doc1> . ?t rdf:predicate dc:title . ?t rdf:object "Example title" . ?t ex:rule ?rule . ?t ex:crosswalk ?crosswalk . ?t ex:origin ?origin . } crosswalk rule origin 3 16 "MARC:245" crosswalk rule origin 3 16 "MARC:245"
  • 16. 16DCMI Metadata Provenance Scenario 2: Different Sources for Metadata  Manual indexing is costly.  Many documents are not indexed at all or not  searchable:  Journal Articles  Externally owned documents   Working papers  Webpages  New sources for metadata?
  • 17. 17DCMI Metadata Provenance New ways for document indexing  Automatic processes  Tagging  (Automatic) mapping of metadata from external  sources  Problem: Lack of quality  How do you integrate these data from different sources without  compromising the retrieval quality?
  • 18. 18DCMI Metadata Provenance Possibilities for Metametadata  Storage of the source of single statements.  Storage of further source­specific information:  Weighting for automatically generated subject headings.  Number of users who tagged a document with a given tag.  The original subject heading in case of an automatic  translation or mapping. Can we use these additional information to improve document  retrieval?
  • 19. 19DCMI Metadata Provenance Example 2: Subject indexing S u b j e c t P r e d i c a t e O b j e c t 1 e x : d o c b a s e / d o c 1 d c : s u b j e c t e x : t h e s / s u b 2 0 2 # 1 e x : s o u r c e e x : s o u r c e s / a u t o i n d e x 1 3 # 1 e x : r a n k 0 . 5 5 4 e x : d o c b a s e / d o c 1 d c : s u b j e c t e x : t h e s / s u b 3 0 5 # 4 e x : s o u r c e e x : s o u r c e s / a u t o i n d e x 1 6 # 4 e x : r a n k 0 . 8 7 e x : d o c b a s e / d o c 1 d c : s u b j e c t e x : t h e s / s u b 3 0 8 # 7 e x : s o u r c e e x : s o u r c e s / p f e f f e r 9 # 7 e x : r a n k 1 . 0 1 0 e x : d o c b a s e / d o c 1 d c : s u b j e c t e x : t h e s / s u b 4 0 1 1 # 1 0 e x : s o u r c e e x : s o u r c e s / p f e f f e r 1 2 # 1 0 e x : r a n k 1 . 0 1 3 e x : s o u r c e s / a u t o i n d e x 1 e x : t y p e e x : t y p e s / a u t o 1 4 e x : s o u r c e s / p f e f f e r e x : t y p e e x : t y p e s / m a n u a l E x a m p l e 7 : S u b j e c t a s s i g n m e n t s b y d i f f e r e n t s o u r c e s
  • 20. 20DCMI Metadata Provenance Backward compatibility  While there are four assignments for subject headings,  the statement  “ex:docbase/doc1 dc:subject ex:thes/sub30” is still one statement, regardless of the number of  times you put it into your RDF store.  Important for applications, that access the RDF Data,  but do not handle the RDF reification.  Your metadata remains valid, in particular there  are no doublets.
  • 21. 21DCMI Metadata Provenance Separating the sources  Which statements are made by a specific source (here:  Pfeffer)? SELECT ?document ?value WHERE { ?t rdf:subject ?document . ?t rdf:predicate dc:subject . ?t rdf:object ?value . ?t ex:source <ex:sources/pfeffer> . } document subject ex:docbase/doc1 ex:thes/sub30 ex:docbase/doc1 ex:thes/sub40 document subject ex:docbase/doc1 ex:thes/sub30 ex:docbase/doc1 ex:thes/sub40
  • 22. 22DCMI Metadata Provenance Extended queries  Use all manually created subject headings.  Use all subject headings with a rank > 0.7. SELECT DISTINCT ?document ?subject WHERE { ?t rdf:subject ?document . ?t rdf:predicate dc:subject . ?t rdf:object ?subject . ?t ex:source ?source . ?source ex:type ?type . ?t ex:rank ?rank . FILTER ( ?type = <ex:types/manual> || ?rank > 0.7 ) } document subject ex:docbase/doc1 ex:thes/sub30 ex:docbase/doc1 ex:thes/sub40 document subject ex:docbase/doc1 ex:thes/sub30 ex:docbase/doc1 ex:thes/sub40
  • 23. 23DCMI Metadata Provenance Conclusion  Many applications of metametadata in the library fields  can be realized with Metametadata.  No change on the underlying data models needed.  But:  Reification is not well accepted in the community.  Named graphs are not (yet) part of RDF standard.  ...  Existing approaches are usable, but users need more  guidance how to implement them.  Metametadata is not always the appropriate solution  (meta­level complexity vs. data model complexity)