SlideShare a Scribd company logo
Using
 Web Data Provenance
           for
  Quality Assessment
Olaf Hartig*
Jun Zhao˚




*Humboldt-Universität zu Berlin ˚University of Oxford
Information Quality (IQ)
 ●   Common definition: fitness for use of information
 ●   Multidimensional concept
     Category*                            Criteria / Dimensions
     Intrinsic                            Accuracy, Believability, Objectivity, ...
     Contextual                           Completeness, Relevance, Timeliness, ...
     Representational                     Conciseness, Understandability, ...
     Accessibility                        Availability, Security, ...
                                                                 *Classification by Wang and Strong, 1996

 ●   IQ criteria not independent of each other
 ●   Relevancy of criteria determined by task and preferences

Olaf Hartig - Using Web Data Provenance for Quality Assessment                                              2
IQ Assessment

 ●   Assigning numerical values (IQ scores) to IQ criteria
 ●   It is difficult!
     ●   Precision vs. Practicality



               Manual methods                               Semi-automatic methods
               ●   Questionnaires                           ●    Rating-based
                                                            ●    Reputation-based



Olaf Hartig - Using Web Data Provenance for Quality Assessment                       3
Automated IQ Assessment
 ●   Literature only outlines ideas for automatic methods
 ●   Content analysis
     ●   Comparison (e.g. outlier detection)
     ●   Application of information retrieval methods
     ●   Analysis of results from data cleansing
     ●   Sampling techniques
 ●   Context analysis
     ●   Analysis of metadata
     ●   Utilization of domain knowledge



Olaf Hartig - Using Web Data Provenance for Quality Assessment   4
Our Goal:
                             Methods to automatically assess
                                 IQ criteria of Web data



 Primary means:
                                 Provenance of assessed data




Olaf Hartig - Using Web Data Provenance for Quality Assessment   5
Outline



           1. Web Data Provenance

           2. General Assessment Approach

           3. Development of Assessment Methods




Olaf Hartig - Using Web Data Provenance for Quality Assessment   6
Existing Provenance Research
 ●   Main research areas: (scientific) workflows, DBMSs
 ●   General focus:
           data creation




Olaf Hartig - Using Web Data Provenance for Quality Assessment   7
Provenance of Web Data




Olaf Hartig - Using Web Data Provenance for Quality Assessment   8
Provenance of Web Data



                      Web data provenance
                           comprises
                        two dimensions:
        Data Creation • Data Access


Olaf Hartig - Using Web Data Provenance for Quality Assessment   9
Model of Web Data Provenance
 ●   Provenance graph describes provenance of a data item
     ●   Nodes: provenance elements – pieces of provenance info
     ●   Edges: relate provenance elements to each other
     ●   Subgraphs for related data items possible




Olaf Hartig - Using Web Data Provenance for Quality Assessment    10
Model of Web Data Provenance
 ●   Provenance model defines:                                   Actors
     ●   Types of provenance elements
                                                                 Executions
     ●   Relationships
                                                                 Artifacts




Olaf Hartig - Using Web Data Provenance for Quality Assessment                11
Data Access Dimension
                                                                                       Data Item
                 Data Accessor
                  (Non-Human)
                                                                                           contains
                                      performs               retrieved by   Document

                       Execution Time
                                                     Data Access
                                 accessed

                       Data Providing Service
                              (Non-Human)
                                                         controls
         uses
                                              Service Provider
       Data Publisher
           (Human)

         Relation to
  the provided Information
         Resource




Olaf Hartig - Using Web Data Provenance for Quality Assessment                                        12
Data Access Dimension cont.

                                    (Verified)
                                     Artifact




                                                 Integrity Verification


            Verification Result
                                          {incomplete}
                                                                          Signer


                                                 Signature Verification      Relation to
                                                                          the signed Data

                      Signature Method




Olaf Hartig - Using Web Data Provenance for Quality Assessment                              13
Data Creation Dimension
                                                                        Provenance
                                                                        Information

                                                                                 Source Data
                                             Execution Time                                                 Provenance
                                                                                                            Information

                                                                                               Creation Guidelines
                    Data Creator
                                                                 Data Creation
               (Human or Non-human)

   {complete,disjoint}


                                                  Data Creating Device
                                                        (e.g. Sensor)                           Data Item

                          Data Creating Service
                            (e.g. Software Agent)                                          part of
                                 responsible for responsible for                                      Provenance
   Data Creating Entity                                                                               Information
 (e.g. Person, Group, Orga.)                                                            (Encompassing)
                                                                                          Data Item
         Relation to
      the created Data
Olaf Hartig - Using Web Data Provenance for Quality Assessment                                                            14
Outline



           1. Web Data Provenance

           2. General Assessment Approach

           3. Development of Assessment Methods




Olaf Hartig - Using Web Data Provenance for Quality Assessment   15
A General Approach

 ●   Blueprint for actual assessment methods that
     ●   Address specific scenario
     ●   Focus on specific IQ criterion
 ●   Provenance elements have an influence on IQ
 ●   Impact values represent these influences
 ●   Assessment is affected by knowing about the influences
 ●   Calculation of the IQ score with an assessment function
                                 that combines all impact values



Olaf Hartig - Using Web Data Provenance for Quality Assessment   16
General Assessment Procedure




 Step 1 – Generate a provenance graph for the data item

 Step 2 – Annotate the provenance graph with impact values

 Step 3 – Execute the assessment function




Olaf Hartig - Using Web Data Provenance for Quality Assessment   17
Outline



           1. Web Data Provenance

           2. General Assessment Approach

           3. Development of Assessment Methods




Olaf Hartig - Using Web Data Provenance for Quality Assessment   18
Designing Assessment Methods
 ●   Developing the general approach into an actual method
 ●   Fundamental design question:

     For which IQ criterion do we want to apply the method?




Olaf Hartig - Using Web Data Provenance for Quality Assessment   19
Designing Assessment Methods
 ●   Developing the general approach into an actual method
 ●   Fundamental design question:

         For which IQ criterion do we want to apply the method?



 ●   Timeliness: degree to which the data item is up-to-date
                 with respect to the task at hand
 ●   Representation* as an absolute measure in [0,1]
     ●   1 – meeting the most strict timeliness standards
     ●   0 – unacceptable

                                        *Following Ballou et al., 1998
Olaf Hartig - Using Web Data Provenance for Quality Assessment           20
1 Generate the Provenance Graph

 What types of provenance elements are necessary?
     What level of detail (i.e. granularity) is necessary?



 Where and how do we get provenance information?
 ●   Two complementary options:
     ●   Recording
     ●   Analyzing metadata



Olaf Hartig - Using Web Data Provenance for Quality Assessment   21
1 Generate the Provenance Graph
 Example:
 ●   Sensors (e.g. sensor1) hourly take measurement (e.g. msr)
 ●   All msr stored in a Web-accessible storage device (store)
 ●   Our system (sys) accesses them for further processing
 ●   sys assesses the timeliness of all msr




Olaf Hartig - Using Web Data Provenance for Quality Assessment   22
1 Generate the Provenance Graph
 Example:
 ●   Sensors (e.g. sensor1) hourly take measurement (e.g. msr)
 ●   All msr stored in a Web-accessible storage device (store)
 ●   Our system (sys) accesses them for further processing
 ●   sys assesses the timeliness of all msr
           msr                  created by                             performed by                  sensor1
     type: Data Item                                      cExc                                   type: Data Creator
                                                   type: Data Creation

       contained by                                                       Execution Time: 10:00

              doc                retrieved by                                                         store
        type: Document                                                                    type: Data Providing Service
                                                          aExc                accessed
                                                   type: Data Access
              sys                    performed by
      type: Data Accessor                                                Execution Time: 10:13
Olaf Hartig - Using Web Data Provenance for Quality Assessment                                                        23
2 Annotation with Impact Values

                                              How might each provenance
                                         element influence the IQ criterion?
 ●   Systematically analyze each type of provenance elements


                        What kind of impact values are necessary?
How do we represent the influences by impact values?
 ●   Impact values not necessarily numerical
 ●   Depends on the assessment function in step 3


                                   How do we determine impact values?

Olaf Hartig - Using Web Data Provenance for Quality Assessment                 24
Determining Impact Values
 ●   From the provenance information
 ●   From user input
     ●   Configuration options
     ●   Rating-based, Reputation-based
 ●   By content analysis
     ●   Comparison (e.g. outlier detection)
     ●   Adoption of information retrieval methods
     ●   Adoption of data cleansing techniques
 ●   By context analysis
     ●   Further metadata
     ●   Domain knowledge
Olaf Hartig - Using Web Data Provenance for Quality Assessment   25
2 Annotation with Impact Values

                                              How might each provenance
                                         element influence the IQ criterion?




 Data Creation Dimension:

      Prov. Element Type                          Impact Values
      Data Creation                               ●  creation time
                                                  ● weights


      Creation Guidelines                          -
      (Source) Data Item                          ●    expiry time
      Data Creator                                 -
Olaf Hartig - Using Web Data Provenance for Quality Assessment                 26
2 Annotation with Impact Values
           msr                  created by                                performed by                 sensor1
     type: Data Item                                       cExc                                    type: Data Creator
                                                   type: Data Creation

        contained by                                                         Execution Time: 10:00

              doc                 retrieved by                                                          store
        type: Document                                                                       type: Data Providing Service
                                                           aExc                 accessed
                                                      type: Data Access
              sys                     performed by
      type: Data Accessor                                                  Execution Time: 10:13


      Prov. Element Type                          Impact Values
      Data Creation                               ●  creation time
                                                  ● weights


      Creation Guidelines                          -
      (Source) Data Item                          ●    expiry time
      Data Creator                                 -
Olaf Hartig - Using Web Data Provenance for Quality Assessment                                                          27
2 Annotation with Impact Values
           msr                  created by                                performed by                 sensor1
     type: Data Item                                       cExc                                    type: Data Creator
                                                   type: Data Creation
                                           creation time
        contained by                          10:00                          Execution Time: 10:00

              doc                 retrieved by                                                          store
        type: Document                                                                       type: Data Providing Service
                                                           aExc                 accessed
                                                      type: Data Access
              sys                     performed by
      type: Data Accessor                                                  Execution Time: 10:13


      Prov. Element Type                          Impact Values
      Data Creation                               ●  creation time
                                                  ● weights


      Creation Guidelines                          -
      (Source) Data Item                          ●    expiry time
      Data Creator                                 -
Olaf Hartig - Using Web Data Provenance for Quality Assessment                                                          28
2 Annotation with Impact Values
           msr                created by                       performed by                sensor1
     type: Data Item                               cExc                                type: Data Creator
                   expiry time              type: Data Creation
                     11:00           creation time
       contained by                      10:00                    Execution Time: 10:00

              doc                 retrieved by                                                       store
        type: Document                                                                     type: Data Providing Service
                                                           aExc                accessed
                                                      type: Data Access
              sys                     performed by
      type: Data Accessor                                                 Execution Time: 10:13


      Prov. Element Type                          Impact Values
      Data Creation                               ●  creation time
                                                  ● weights


      Creation Guidelines                          -
      (Source) Data Item                          ●    expiry time
      Data Creator                                 -
Olaf Hartig - Using Web Data Provenance for Quality Assessment                                                        29
3 Assessment Function

     How do we represent the IQ criterion by an IQ score?


                 What does the assessment function look like?
 ●   Develop the function together with the impact values
 ●   Take incompleteness into consideration
     ●   Provenance graphs could be fragmentary
     ●   Annotations could be missing




Olaf Hartig - Using Web Data Provenance for Quality Assessment   30
Step 3 – Assessment Function




Olaf Hartig - Using Web Data Provenance for Quality Assessment   31
Step 3 – Assessment Function




           msr                created by                       performed by                sensor1
     type: Data Item                               cExc                                type: Data Creator
                   expiry time              type: Data Creation
                     11:00           creation time
       contained by                      10:00                    Execution Time: 10:00

              doc                retrieved by                                                      store
        type: Document                                                                   type: Data Providing Service
                                                          aExc               accessed
                                                    type: Data Access
              sys                    performed by
      type: Data Accessor                                               Execution Time: 10:13

Olaf Hartig - Using Web Data Provenance for Quality Assessment                                                      32
Step 3 – Assessment Function




           msr                created by                       performed by                sensor1
     type: Data Item                               cExc                                type: Data Creator
                   expiry time              type: Data Creation
                     11:00           creation time
       contained by                      10:00                    Execution Time: 10:00

              doc                retrieved by                                                      store
        type: Document                                                                   type: Data Providing Service
                                                          aExc               accessed
                                                    type: Data Access
              sys                    performed by
      type: Data Accessor                                               Execution Time: 10:13

Olaf Hartig - Using Web Data Provenance for Quality Assessment                                                      33
Step 3 – Assessment Function



                                                        t(msr) = 1 – (10:15 – 10:00) / (11:00 – 10:00)
                                                               =1–           0.25h / 1h
                                                               = 0.75

           msr                created by                       performed by                sensor1
     type: Data Item                               cExc                                type: Data Creator
                   expiry time              type: Data Creation
                     11:00           creation time
       contained by                      10:00                    Execution Time: 10:00

              doc                retrieved by                                                      store
        type: Document                                                                   type: Data Providing Service
                                                          aExc               accessed
                                                    type: Data Access
              sys                    performed by
      type: Data Accessor                                               Execution Time: 10:13

Olaf Hartig - Using Web Data Provenance for Quality Assessment                                                      34
Conclusion
 ●   Web Data Provenance (data creation + data access)
 ●   General approach for provenance-based IQ assessment
     ●   Impact values: influence of provenance elements on IQ
 ●   Design decisions for actual assessment methods
 ●   Application to timeliness (more in the paper)



 ●   Future work:
     ●   How do we deal with incompleteness?
     ●   Application of the approach to other IQ criteria


Olaf Hartig - Using Web Data Provenance for Quality Assessment   35
These slides have been created by
                                            Olaf Hartig
                                                http://olafhartig.de

                              This work is licensed under a
                Creative Commons Attribution-Share Alike 3.0 License
                    (http://creativecommons.org/licenses/by-sa/3.0/)




                             Attribution:
                             ●   http://www.flickr.com/photos/rrrrred/3809362767/
                             ●   http://www.hasslefreeclipart.com




Olaf Hartig - Using Web Data Provenance for Quality Assessment                      36

More Related Content

PDF
PDF
Provenance Information in the Web of Data
PPTX
Advertising
PDF
Provenance Analysis and RDF Query Processing: W3C PROV for Data Quality and T...
PPT
Assessment & adjustment for data quality used in the South African DISTRICT ...
PPT
Data Usability Assessment for Remote Sensing Data: Accuracy of Interactive Da...
PDF
2014 review of data quality assessment methods
PDF
LDIF Lightening Talk
Provenance Information in the Web of Data
Advertising
Provenance Analysis and RDF Query Processing: W3C PROV for Data Quality and T...
Assessment & adjustment for data quality used in the South African DISTRICT ...
Data Usability Assessment for Remote Sensing Data: Accuracy of Interactive Da...
2014 review of data quality assessment methods
LDIF Lightening Talk

Viewers also liked (18)

PPTX
Leveraging DBpedia for Adaptive Crowdsourcing in Linked Data Quality Assessment
PDF
LDQ 2014 DQ Methodology
PPTX
Data quality assessment of OSM datasets of Ringroad, Kathmandu, Nepal
PDF
Mappings Validation
PDF
Provenance and Reuse of Open Data (PILOD 2.0 June 2014)
PDF
Assessing and Refining Mappings to RDF to Improve Dataset Quality
PPTX
METHODS, MATHEMATICAL MODELS, DATA QUALITY ASSESSMENT AND RESULT INTERPRETATI...
PPT
MEASURE Evaluation Data Quality Assessment Methodology and Tools
PPT
Data Quality Rules introduction
PDF
Linked Data Quality Assessment: A Survey
ODP
Data quality overview
PDF
FAIR Data Prototype - Interoperability and FAIRness through a novel combinati...
PDF
Prov-O-Viz: Interactive Provenance Visualization
PPTX
Data Quality Dashboards
PPT
Building a Data Quality Program from Scratch
PPT
Data Quality Definitions
PPTX
Data quality and data profiling
PPT
Data quality architecture
Leveraging DBpedia for Adaptive Crowdsourcing in Linked Data Quality Assessment
LDQ 2014 DQ Methodology
Data quality assessment of OSM datasets of Ringroad, Kathmandu, Nepal
Mappings Validation
Provenance and Reuse of Open Data (PILOD 2.0 June 2014)
Assessing and Refining Mappings to RDF to Improve Dataset Quality
METHODS, MATHEMATICAL MODELS, DATA QUALITY ASSESSMENT AND RESULT INTERPRETATI...
MEASURE Evaluation Data Quality Assessment Methodology and Tools
Data Quality Rules introduction
Linked Data Quality Assessment: A Survey
Data quality overview
FAIR Data Prototype - Interoperability and FAIRness through a novel combinati...
Prov-O-Viz: Interactive Provenance Visualization
Data Quality Dashboards
Building a Data Quality Program from Scratch
Data Quality Definitions
Data quality and data profiling
Data quality architecture
Ad

Similar to Using Web Data Provenance for Quality Assessment (20)

PPT
ATAGTR2017 Bee-Hive approach for Big Data Testing [End to End Continuous Test...
PDF
Infosys - Supply Chain Analytics Services | Solution
PPTX
Data mining
PPT
Ibm big data hadoop summit 2012 james kobielus final 6-13-12(1)
PDF
Provenance Management to Enable Data Sharing
PDF
Ibm big data ibm marriage of hadoop and data warehousing
PPT
Pragmatics Driven Issues in Data and Process Integrity in Enterprises
PPTX
Linked_Open_Data_Rome_Netcamp_13
PPTX
The Information Workbench as a Self-Service Platform for Linked Data Applicat...
PPTX
Linked Data as a Service
PDF
Provenance and Trust
PDF
Neil Mason presents on Data Mining and Predictive Analytics at Emetrics San F...
PPTX
Everything Self-Service:Linked Data Applications with the Information Workbench
PDF
HCLT Brochure: E-Discovery and Document Review Solutions
PPT
A Role for Provenance in Quality Assessment
PPTX
Secondary data umesh
PDF
Future of test automation tools & infrastructure
PPTX
Sören Eickhoff, Informatica GmbH, "Informatica Intelligent Data Lake – Self S...
PDF
Evaluating Big Data Predictive Analytics Platforms
PDF
Building a Modern Data Architecture by Ben Sharma at Strata + Hadoop World Sa...
ATAGTR2017 Bee-Hive approach for Big Data Testing [End to End Continuous Test...
Infosys - Supply Chain Analytics Services | Solution
Data mining
Ibm big data hadoop summit 2012 james kobielus final 6-13-12(1)
Provenance Management to Enable Data Sharing
Ibm big data ibm marriage of hadoop and data warehousing
Pragmatics Driven Issues in Data and Process Integrity in Enterprises
Linked_Open_Data_Rome_Netcamp_13
The Information Workbench as a Self-Service Platform for Linked Data Applicat...
Linked Data as a Service
Provenance and Trust
Neil Mason presents on Data Mining and Predictive Analytics at Emetrics San F...
Everything Self-Service:Linked Data Applications with the Information Workbench
HCLT Brochure: E-Discovery and Document Review Solutions
A Role for Provenance in Quality Assessment
Secondary data umesh
Future of test automation tools & infrastructure
Sören Eickhoff, Informatica GmbH, "Informatica Intelligent Data Lake – Self S...
Evaluating Big Data Predictive Analytics Platforms
Building a Modern Data Architecture by Ben Sharma at Strata + Hadoop World Sa...
Ad

More from Olaf Hartig (20)

PDF
LDQL: A Query Language for the Web of Linked Data
PDF
A Context-Based Semantics for SPARQL Property Paths over the Web
PDF
Rethinking Online SPARQL Querying to Support Incremental Result Visualization
PDF
Tutorial "Linked Data Query Processing" Part 5 "Query Planning and Optimizati...
PDF
Tutorial "Linked Data Query Processing" Part 4 "Execution Process" (WWW 2013 ...
PDF
Tutorial "Linked Data Query Processing" Part 3 "Source Selection Strategies" ...
PDF
Tutorial "Linked Data Query Processing" Part 2 "Theoretical Foundations" (WWW...
PDF
Tutorial "Linked Data Query Processing" Part 1 "Introduction" (WWW 2013 Ed.)
PDF
Tutorial "An Introduction to SPARQL and Queries over Linked Data" Chapter 3 (...
PDF
Tutorial "An Introduction to SPARQL and Queries over Linked Data" Chapter 2 (...
PDF
Tutorial "An Introduction to SPARQL and Queries over Linked Data" Chapter 1 (...
ODP
An Overview on PROV-AQ: Provenance Access and Query
PDF
(An Overview on) Linked Data Management and SPARQL Querying (ISSLOD2011)
PDF
Zero-Knowledge Query Planning for an Iterator Implementation of Link Traversa...
PDF
The Impact of Data Caching of on Query Execution for Linked Data
PDF
How Caching Improves Efficiency and Result Completeness for Querying Linked Data
PDF
A Main Memory Index Structure to Query Linked Data
PDF
Towards a Data-Centric Notion of Trust in the Semantic Web (A Position Statem...
PDF
Brief Introduction to the Provenance Vocabulary (for W3C prov-xg)
PDF
Querying Linked Data with SPARQL (2010)
LDQL: A Query Language for the Web of Linked Data
A Context-Based Semantics for SPARQL Property Paths over the Web
Rethinking Online SPARQL Querying to Support Incremental Result Visualization
Tutorial "Linked Data Query Processing" Part 5 "Query Planning and Optimizati...
Tutorial "Linked Data Query Processing" Part 4 "Execution Process" (WWW 2013 ...
Tutorial "Linked Data Query Processing" Part 3 "Source Selection Strategies" ...
Tutorial "Linked Data Query Processing" Part 2 "Theoretical Foundations" (WWW...
Tutorial "Linked Data Query Processing" Part 1 "Introduction" (WWW 2013 Ed.)
Tutorial "An Introduction to SPARQL and Queries over Linked Data" Chapter 3 (...
Tutorial "An Introduction to SPARQL and Queries over Linked Data" Chapter 2 (...
Tutorial "An Introduction to SPARQL and Queries over Linked Data" Chapter 1 (...
An Overview on PROV-AQ: Provenance Access and Query
(An Overview on) Linked Data Management and SPARQL Querying (ISSLOD2011)
Zero-Knowledge Query Planning for an Iterator Implementation of Link Traversa...
The Impact of Data Caching of on Query Execution for Linked Data
How Caching Improves Efficiency and Result Completeness for Querying Linked Data
A Main Memory Index Structure to Query Linked Data
Towards a Data-Centric Notion of Trust in the Semantic Web (A Position Statem...
Brief Introduction to the Provenance Vocabulary (for W3C prov-xg)
Querying Linked Data with SPARQL (2010)

Recently uploaded (20)

PPTX
Spectroscopy.pptx food analysis technology
PDF
Unlocking AI with Model Context Protocol (MCP)
PDF
Profit Center Accounting in SAP S/4HANA, S4F28 Col11
PPTX
Detection-First SIEM: Rule Types, Dashboards, and Threat-Informed Strategy
PDF
cuic standard and advanced reporting.pdf
PDF
Mobile App Security Testing_ A Comprehensive Guide.pdf
PDF
Approach and Philosophy of On baking technology
PDF
Diabetes mellitus diagnosis method based random forest with bat algorithm
PPTX
Effective Security Operations Center (SOC) A Modern, Strategic, and Threat-In...
PPT
Teaching material agriculture food technology
PDF
Agricultural_Statistics_at_a_Glance_2022_0.pdf
PPTX
Understanding_Digital_Forensics_Presentation.pptx
PDF
Blue Purple Modern Animated Computer Science Presentation.pdf.pdf
PPTX
KOM of Painting work and Equipment Insulation REV00 update 25-dec.pptx
PDF
Machine learning based COVID-19 study performance prediction
PDF
Per capita expenditure prediction using model stacking based on satellite ima...
PPTX
Big Data Technologies - Introduction.pptx
PDF
MIND Revenue Release Quarter 2 2025 Press Release
PPTX
ACSFv1EN-58255 AWS Academy Cloud Security Foundations.pptx
PDF
Encapsulation theory and applications.pdf
Spectroscopy.pptx food analysis technology
Unlocking AI with Model Context Protocol (MCP)
Profit Center Accounting in SAP S/4HANA, S4F28 Col11
Detection-First SIEM: Rule Types, Dashboards, and Threat-Informed Strategy
cuic standard and advanced reporting.pdf
Mobile App Security Testing_ A Comprehensive Guide.pdf
Approach and Philosophy of On baking technology
Diabetes mellitus diagnosis method based random forest with bat algorithm
Effective Security Operations Center (SOC) A Modern, Strategic, and Threat-In...
Teaching material agriculture food technology
Agricultural_Statistics_at_a_Glance_2022_0.pdf
Understanding_Digital_Forensics_Presentation.pptx
Blue Purple Modern Animated Computer Science Presentation.pdf.pdf
KOM of Painting work and Equipment Insulation REV00 update 25-dec.pptx
Machine learning based COVID-19 study performance prediction
Per capita expenditure prediction using model stacking based on satellite ima...
Big Data Technologies - Introduction.pptx
MIND Revenue Release Quarter 2 2025 Press Release
ACSFv1EN-58255 AWS Academy Cloud Security Foundations.pptx
Encapsulation theory and applications.pdf

Using Web Data Provenance for Quality Assessment

  • 1. Using Web Data Provenance for Quality Assessment Olaf Hartig* Jun Zhao˚ *Humboldt-Universität zu Berlin ˚University of Oxford
  • 2. Information Quality (IQ) ● Common definition: fitness for use of information ● Multidimensional concept Category* Criteria / Dimensions Intrinsic Accuracy, Believability, Objectivity, ... Contextual Completeness, Relevance, Timeliness, ... Representational Conciseness, Understandability, ... Accessibility Availability, Security, ... *Classification by Wang and Strong, 1996 ● IQ criteria not independent of each other ● Relevancy of criteria determined by task and preferences Olaf Hartig - Using Web Data Provenance for Quality Assessment 2
  • 3. IQ Assessment ● Assigning numerical values (IQ scores) to IQ criteria ● It is difficult! ● Precision vs. Practicality Manual methods Semi-automatic methods ● Questionnaires ● Rating-based ● Reputation-based Olaf Hartig - Using Web Data Provenance for Quality Assessment 3
  • 4. Automated IQ Assessment ● Literature only outlines ideas for automatic methods ● Content analysis ● Comparison (e.g. outlier detection) ● Application of information retrieval methods ● Analysis of results from data cleansing ● Sampling techniques ● Context analysis ● Analysis of metadata ● Utilization of domain knowledge Olaf Hartig - Using Web Data Provenance for Quality Assessment 4
  • 5. Our Goal: Methods to automatically assess IQ criteria of Web data Primary means: Provenance of assessed data Olaf Hartig - Using Web Data Provenance for Quality Assessment 5
  • 6. Outline 1. Web Data Provenance 2. General Assessment Approach 3. Development of Assessment Methods Olaf Hartig - Using Web Data Provenance for Quality Assessment 6
  • 7. Existing Provenance Research ● Main research areas: (scientific) workflows, DBMSs ● General focus: data creation Olaf Hartig - Using Web Data Provenance for Quality Assessment 7
  • 8. Provenance of Web Data Olaf Hartig - Using Web Data Provenance for Quality Assessment 8
  • 9. Provenance of Web Data Web data provenance comprises two dimensions: Data Creation • Data Access Olaf Hartig - Using Web Data Provenance for Quality Assessment 9
  • 10. Model of Web Data Provenance ● Provenance graph describes provenance of a data item ● Nodes: provenance elements – pieces of provenance info ● Edges: relate provenance elements to each other ● Subgraphs for related data items possible Olaf Hartig - Using Web Data Provenance for Quality Assessment 10
  • 11. Model of Web Data Provenance ● Provenance model defines: Actors ● Types of provenance elements Executions ● Relationships Artifacts Olaf Hartig - Using Web Data Provenance for Quality Assessment 11
  • 12. Data Access Dimension Data Item Data Accessor (Non-Human) contains performs retrieved by Document Execution Time Data Access accessed Data Providing Service (Non-Human) controls uses Service Provider Data Publisher (Human) Relation to the provided Information Resource Olaf Hartig - Using Web Data Provenance for Quality Assessment 12
  • 13. Data Access Dimension cont. (Verified) Artifact Integrity Verification Verification Result {incomplete} Signer Signature Verification Relation to the signed Data Signature Method Olaf Hartig - Using Web Data Provenance for Quality Assessment 13
  • 14. Data Creation Dimension Provenance Information Source Data Execution Time Provenance Information Creation Guidelines Data Creator Data Creation (Human or Non-human) {complete,disjoint} Data Creating Device (e.g. Sensor) Data Item Data Creating Service (e.g. Software Agent) part of responsible for responsible for Provenance Data Creating Entity Information (e.g. Person, Group, Orga.) (Encompassing) Data Item Relation to the created Data Olaf Hartig - Using Web Data Provenance for Quality Assessment 14
  • 15. Outline 1. Web Data Provenance 2. General Assessment Approach 3. Development of Assessment Methods Olaf Hartig - Using Web Data Provenance for Quality Assessment 15
  • 16. A General Approach ● Blueprint for actual assessment methods that ● Address specific scenario ● Focus on specific IQ criterion ● Provenance elements have an influence on IQ ● Impact values represent these influences ● Assessment is affected by knowing about the influences ● Calculation of the IQ score with an assessment function that combines all impact values Olaf Hartig - Using Web Data Provenance for Quality Assessment 16
  • 17. General Assessment Procedure Step 1 – Generate a provenance graph for the data item Step 2 – Annotate the provenance graph with impact values Step 3 – Execute the assessment function Olaf Hartig - Using Web Data Provenance for Quality Assessment 17
  • 18. Outline 1. Web Data Provenance 2. General Assessment Approach 3. Development of Assessment Methods Olaf Hartig - Using Web Data Provenance for Quality Assessment 18
  • 19. Designing Assessment Methods ● Developing the general approach into an actual method ● Fundamental design question: For which IQ criterion do we want to apply the method? Olaf Hartig - Using Web Data Provenance for Quality Assessment 19
  • 20. Designing Assessment Methods ● Developing the general approach into an actual method ● Fundamental design question: For which IQ criterion do we want to apply the method? ● Timeliness: degree to which the data item is up-to-date with respect to the task at hand ● Representation* as an absolute measure in [0,1] ● 1 – meeting the most strict timeliness standards ● 0 – unacceptable *Following Ballou et al., 1998 Olaf Hartig - Using Web Data Provenance for Quality Assessment 20
  • 21. 1 Generate the Provenance Graph What types of provenance elements are necessary? What level of detail (i.e. granularity) is necessary? Where and how do we get provenance information? ● Two complementary options: ● Recording ● Analyzing metadata Olaf Hartig - Using Web Data Provenance for Quality Assessment 21
  • 22. 1 Generate the Provenance Graph Example: ● Sensors (e.g. sensor1) hourly take measurement (e.g. msr) ● All msr stored in a Web-accessible storage device (store) ● Our system (sys) accesses them for further processing ● sys assesses the timeliness of all msr Olaf Hartig - Using Web Data Provenance for Quality Assessment 22
  • 23. 1 Generate the Provenance Graph Example: ● Sensors (e.g. sensor1) hourly take measurement (e.g. msr) ● All msr stored in a Web-accessible storage device (store) ● Our system (sys) accesses them for further processing ● sys assesses the timeliness of all msr msr created by performed by sensor1 type: Data Item cExc type: Data Creator type: Data Creation contained by Execution Time: 10:00 doc retrieved by store type: Document type: Data Providing Service aExc accessed type: Data Access sys performed by type: Data Accessor Execution Time: 10:13 Olaf Hartig - Using Web Data Provenance for Quality Assessment 23
  • 24. 2 Annotation with Impact Values How might each provenance element influence the IQ criterion? ● Systematically analyze each type of provenance elements What kind of impact values are necessary? How do we represent the influences by impact values? ● Impact values not necessarily numerical ● Depends on the assessment function in step 3 How do we determine impact values? Olaf Hartig - Using Web Data Provenance for Quality Assessment 24
  • 25. Determining Impact Values ● From the provenance information ● From user input ● Configuration options ● Rating-based, Reputation-based ● By content analysis ● Comparison (e.g. outlier detection) ● Adoption of information retrieval methods ● Adoption of data cleansing techniques ● By context analysis ● Further metadata ● Domain knowledge Olaf Hartig - Using Web Data Provenance for Quality Assessment 25
  • 26. 2 Annotation with Impact Values How might each provenance element influence the IQ criterion? Data Creation Dimension: Prov. Element Type Impact Values Data Creation ● creation time ● weights Creation Guidelines - (Source) Data Item ● expiry time Data Creator - Olaf Hartig - Using Web Data Provenance for Quality Assessment 26
  • 27. 2 Annotation with Impact Values msr created by performed by sensor1 type: Data Item cExc type: Data Creator type: Data Creation contained by Execution Time: 10:00 doc retrieved by store type: Document type: Data Providing Service aExc accessed type: Data Access sys performed by type: Data Accessor Execution Time: 10:13 Prov. Element Type Impact Values Data Creation ● creation time ● weights Creation Guidelines - (Source) Data Item ● expiry time Data Creator - Olaf Hartig - Using Web Data Provenance for Quality Assessment 27
  • 28. 2 Annotation with Impact Values msr created by performed by sensor1 type: Data Item cExc type: Data Creator type: Data Creation creation time contained by 10:00 Execution Time: 10:00 doc retrieved by store type: Document type: Data Providing Service aExc accessed type: Data Access sys performed by type: Data Accessor Execution Time: 10:13 Prov. Element Type Impact Values Data Creation ● creation time ● weights Creation Guidelines - (Source) Data Item ● expiry time Data Creator - Olaf Hartig - Using Web Data Provenance for Quality Assessment 28
  • 29. 2 Annotation with Impact Values msr created by performed by sensor1 type: Data Item cExc type: Data Creator expiry time type: Data Creation 11:00 creation time contained by 10:00 Execution Time: 10:00 doc retrieved by store type: Document type: Data Providing Service aExc accessed type: Data Access sys performed by type: Data Accessor Execution Time: 10:13 Prov. Element Type Impact Values Data Creation ● creation time ● weights Creation Guidelines - (Source) Data Item ● expiry time Data Creator - Olaf Hartig - Using Web Data Provenance for Quality Assessment 29
  • 30. 3 Assessment Function How do we represent the IQ criterion by an IQ score? What does the assessment function look like? ● Develop the function together with the impact values ● Take incompleteness into consideration ● Provenance graphs could be fragmentary ● Annotations could be missing Olaf Hartig - Using Web Data Provenance for Quality Assessment 30
  • 31. Step 3 – Assessment Function Olaf Hartig - Using Web Data Provenance for Quality Assessment 31
  • 32. Step 3 – Assessment Function msr created by performed by sensor1 type: Data Item cExc type: Data Creator expiry time type: Data Creation 11:00 creation time contained by 10:00 Execution Time: 10:00 doc retrieved by store type: Document type: Data Providing Service aExc accessed type: Data Access sys performed by type: Data Accessor Execution Time: 10:13 Olaf Hartig - Using Web Data Provenance for Quality Assessment 32
  • 33. Step 3 – Assessment Function msr created by performed by sensor1 type: Data Item cExc type: Data Creator expiry time type: Data Creation 11:00 creation time contained by 10:00 Execution Time: 10:00 doc retrieved by store type: Document type: Data Providing Service aExc accessed type: Data Access sys performed by type: Data Accessor Execution Time: 10:13 Olaf Hartig - Using Web Data Provenance for Quality Assessment 33
  • 34. Step 3 – Assessment Function t(msr) = 1 – (10:15 – 10:00) / (11:00 – 10:00) =1– 0.25h / 1h = 0.75 msr created by performed by sensor1 type: Data Item cExc type: Data Creator expiry time type: Data Creation 11:00 creation time contained by 10:00 Execution Time: 10:00 doc retrieved by store type: Document type: Data Providing Service aExc accessed type: Data Access sys performed by type: Data Accessor Execution Time: 10:13 Olaf Hartig - Using Web Data Provenance for Quality Assessment 34
  • 35. Conclusion ● Web Data Provenance (data creation + data access) ● General approach for provenance-based IQ assessment ● Impact values: influence of provenance elements on IQ ● Design decisions for actual assessment methods ● Application to timeliness (more in the paper) ● Future work: ● How do we deal with incompleteness? ● Application of the approach to other IQ criteria Olaf Hartig - Using Web Data Provenance for Quality Assessment 35
  • 36. These slides have been created by Olaf Hartig http://olafhartig.de This work is licensed under a Creative Commons Attribution-Share Alike 3.0 License (http://creativecommons.org/licenses/by-sa/3.0/) Attribution: ● http://www.flickr.com/photos/rrrrred/3809362767/ ● http://www.hasslefreeclipart.com Olaf Hartig - Using Web Data Provenance for Quality Assessment 36