SlideShare a Scribd company logo
Towards Automatic Evaluation of Learning Object Metadata Quality Xavier Ochoa, ESPOL, Ecuador Erik Duval, KULeuven, Belgium QoIS 2006
Learning Objects are … Any entity, digital or non-digital, that can be used, re-used or referenced during technology-supported learning.  IEEE LOM Standard
Learning Object Metadata Learning Object Metadata Standard
Initial growth has been slow ARIADNE
Standardization, Interoperability of Repositories and Automatic Generation of Metadata had solved the scarcity problem… …but had created new “good”  ones.
The production, management and consumption of Learning Object Metadata is vastly surpassing the human capacity to review or process these metadata.
Currently there is NOT scalable Quality Evaluation of Learning Object Metadat a
Quality of Metadata "high quality metadata supports the  functional requirements   of the system it is designed to support"  (Guy at al, 2004)
Quality of Metadata Title: “The Time Machine” Author: “Wells, H. G.” Publisher: “L&M Publishers, UK” Year: “1965” Location: ----
Quality of Metadata
Quality of Metadata
Why Measuring Quality? The quality of the metadata record that describes a learning object affects directly the chances of the object to be found, reviewed or reused. An object with the title “Lesson 1 – Course 201” and no description, could not be found in a “Introduction to Java” query, even if it is about that subject.
How to measure Metadata Quality? Manually check a statistical sample of records to evaluate their quality.  Use graphical tools to improve the task Use simple statistics from the repository Usability studies
Metrics A good system needs both characteristics: Been mostly automated Predict with certain amount of precision the fitness of the metadata instance for its task Other fields had attacked similar problems through the use of metrics Software Engineering Bibliographical Studies (Scientometrics) Search engines (Eg.: PageRank)
We cannot measure the quality  manually anymore…
… but is a good idea to follow the same quality characteristics.
Quality Characteristics Framework proposed by Bruce and Hillman: Completeness Accuracy Provenance Conformance to expectations Consistency & logical coherence Timeliness Accessability
Our Proposal: Use Metrics Small calculation performed over the values of the different fields of the metadata record in order to gain insight on  a quality characteristics.   For example we can count the number of fields that have been filled with information (metric) to assess the completeness of the metadata record (quality characteristic).
Quality Metrics C ompleteness Simple Completeness:  What percentage of the fields has been filled Weighted Completeness:  Not all fields are equally important.  Use a weighted sum .
Quality Metrics Conformance to Expectations Nominal Information Content: How different is the value of field in the metadata record from the values in the repository (Entropy) Textual Information Content:  What is the relevance of the words contained in free text fields (TFIDF)
Quality Metrics Accesability Readability:  How easy is to read the text of free text fields.
Quality Metrics
Evaluation of the Metrics Online Experiment: http://ariadne.cti.espol.edu.ec/Metrics 22 Human Reviewers  20 Learning object metadata records  (10 manual, 10 automated) 7 characteristics used for evaluation 5 quality Metrics
Evaluation Results Textual Information Content  correlates highly (0.842) with human-assigned quality score
Analysis of Results The quality of the title and description is perceived as the quality of the record. One of the metrics captured a complex human evaluation. This artificial measurement of quality is not an effective evaluation for the metrics
Applications: Repository Evaluation
Applications: Quality Visualization
Automated Evaluation of Quality
Further Work Evaluate metrics as predictors of “real”  quality.  Quality as Fitness to fulfill a given purpose Quality for Retrieval  Quality for Evaluation  Accessibility Quality Re-use Quality
Further Work But more important… Measure the Quality of the Learning Object itself LearnRank Analysis of the Object itself Analysis of Contextual Attention Metadata Social Networking Learnometrics Measuring the Impact of Learning Object in the Learning/Teaching Community
Thank you, Gracias Comments, Suggestions, Critics… are Welcome! More Information: http://ariadne.cti.espol.edu.ec/M4M

More Related Content

PPT
Quality Metrics for Learning Object Metadata
PPT
Mahout part1
PPTX
Information retrival system and PageRank algorithm
PPTX
With Great Power Comes the Responsible Use of Metrics
PPT
preSCORE Presentation by Adam Etkin for Highwire Fall 2013 Meeting
PPTX
About A Role on Information Management for Institutional Research
PDF
Multidirectional Product Support System for Decision Making In Textile Indust...
PDF
IRJET- Classification of Food Recipe Comments using Naive Bayes
Quality Metrics for Learning Object Metadata
Mahout part1
Information retrival system and PageRank algorithm
With Great Power Comes the Responsible Use of Metrics
preSCORE Presentation by Adam Etkin for Highwire Fall 2013 Meeting
About A Role on Information Management for Institutional Research
Multidirectional Product Support System for Decision Making In Textile Indust...
IRJET- Classification of Food Recipe Comments using Naive Bayes

What's hot (12)

PDF
An Adaptive Evaluation System to Test Student Caliber using Item Response Theory
PPTX
Grds conferences icst and icbelsh (10)
PDF
Automatic Generation of Multiple Choice Questions using Surface-based Semanti...
DOC
View the Microsoft Word document.doc
PDF
Student Performance Evaluation in Education Sector Using Prediction and Clust...
PPTX
STUDENT PERFORMANCE ANALYSIS USING DECISION TREE
PDF
Empirical Evaluation of Active Learning in Recommender Systems
PPTX
Students academic performance using clustering technique
PDF
Artifact Facet Ranking and It’s Applications
PPT
Paper presentation @IPAW'08
PDF
IRJET- Student Placement Prediction using Machine Learning
DOCX
machine learning based predictive analytics of student academic performance i...
An Adaptive Evaluation System to Test Student Caliber using Item Response Theory
Grds conferences icst and icbelsh (10)
Automatic Generation of Multiple Choice Questions using Surface-based Semanti...
View the Microsoft Word document.doc
Student Performance Evaluation in Education Sector Using Prediction and Clust...
STUDENT PERFORMANCE ANALYSIS USING DECISION TREE
Empirical Evaluation of Active Learning in Recommender Systems
Students academic performance using clustering technique
Artifact Facet Ranking and It’s Applications
Paper presentation @IPAW'08
IRJET- Student Placement Prediction using Machine Learning
machine learning based predictive analytics of student academic performance i...
Ad

Viewers also liked (7)

PPTX
EPIP National Conference 2013: Evaluation for Learning and Results
PDF
HMTL putting it all to gether
PPTX
What's Changed in Learning Evaluation? > Learning & Skills Talk 2015
PDF
Musing on MOOCs
PDF
Step 9: Monitoring, Evaluation and Learning
PPTX
The Evaluation of Learning
PPTX
Evaluation of Learning
EPIP National Conference 2013: Evaluation for Learning and Results
HMTL putting it all to gether
What's Changed in Learning Evaluation? > Learning & Skills Talk 2015
Musing on MOOCs
Step 9: Monitoring, Evaluation and Learning
The Evaluation of Learning
Evaluation of Learning
Ad

Similar to Towards Automatic Evaluation of Learning Object Metadata Quality (20)

PPT
Metadata quality in digital repositories
PPT
Metadata Quality Issues in Learning Repositories
PPT
Metadata Quality
PPT
Metadata Quality in Learning Repositories: Issues & Considerations
PPTX
Metadata quality criteria
PPTX
Metadata Quality Assurance Framework at QQML2016 conference - full version
PDF
Learnometrics: Metrics for Learning Objects
PPTX
Metadata En Croûte: How to make metadata more appetizing to decision makers
PPTX
A Hero’s Journey Through Metadata Quality
PPTX
Metadata quality in cultural heritage institutions (ReIRes-FAIR 2018)
PPTX
Nothing is created, nothing is lost, everything changes (ELAG, 2017)
PDF
Metadata Quality assessment tool for Open Access
PDF
Metadata Quality assessment tool for Open Access Cultural Heritage institutio...
PPTX
Researching metadata quality (ORKG 2018)
PPTX
Measuring Metadata Quality (doctoral defense 2019)
PPT
Preliminary Discussion on a Digital Curation Framework for Learning Repositories
PDF
Case Study Research in Software Engineering
PPT
If You Tag it, Will They Come? Metadata Quality and Repository Management
PPTX
Towards an extensible measurement of metadata quality (DATeCH 2017)
Metadata quality in digital repositories
Metadata Quality Issues in Learning Repositories
Metadata Quality
Metadata Quality in Learning Repositories: Issues & Considerations
Metadata quality criteria
Metadata Quality Assurance Framework at QQML2016 conference - full version
Learnometrics: Metrics for Learning Objects
Metadata En Croûte: How to make metadata more appetizing to decision makers
A Hero’s Journey Through Metadata Quality
Metadata quality in cultural heritage institutions (ReIRes-FAIR 2018)
Nothing is created, nothing is lost, everything changes (ELAG, 2017)
Metadata Quality assessment tool for Open Access
Metadata Quality assessment tool for Open Access Cultural Heritage institutio...
Researching metadata quality (ORKG 2018)
Measuring Metadata Quality (doctoral defense 2019)
Preliminary Discussion on a Digital Curation Framework for Learning Repositories
Case Study Research in Software Engineering
If You Tag it, Will They Come? Metadata Quality and Repository Management
Towards an extensible measurement of metadata quality (DATeCH 2017)

More from Xavier Ochoa (20)

PPTX
IA para el desarollo de habilidades del Siglo XXI
PPTX
Multimodal Learning Analytics
PPTX
Supporting the Acquisition of 21st Century Skills through Multimodal Learning...
PPTX
Educational Technologies
PPTX
Developing 21st-Century Skills with  Multimodal Learning Analytics
PPTX
Educational Technologies: Learning Analytics and Artificial Intelligence
PPTX
Analiticas de Aprendizaje: Nuevo paradigma en la investigación educativa
PPTX
Analítica del Aprendizaje como Nuevo Paradigma de la Investigación Educativa
PPTX
Automatic Feedback for Oral Presentations
PPTX
LAK-18 Program in Numbers
PPTX
Multimodal Learning Analytics
PDF
Education as the meta-problem: Opportunities for Technology R&D
PPTX
Medir para Entender y Mejorar: la Analítica del Aprendizaje como nuevo paradi...
PPTX
Adaptive Multilevel Clustering Model for the Prediction of Academic Risk
PPTX
Simple metrics for Curricular Analytics
PPTX
Multimodal Learning Analytics
PPTX
Multimodal Learning Analytics
PPTX
Introduccion Algoritmos Multihilo
PPTX
Analisis de Algoritmos Multihilo
PPTX
Analitica aprendizaje
IA para el desarollo de habilidades del Siglo XXI
Multimodal Learning Analytics
Supporting the Acquisition of 21st Century Skills through Multimodal Learning...
Educational Technologies
Developing 21st-Century Skills with  Multimodal Learning Analytics
Educational Technologies: Learning Analytics and Artificial Intelligence
Analiticas de Aprendizaje: Nuevo paradigma en la investigación educativa
Analítica del Aprendizaje como Nuevo Paradigma de la Investigación Educativa
Automatic Feedback for Oral Presentations
LAK-18 Program in Numbers
Multimodal Learning Analytics
Education as the meta-problem: Opportunities for Technology R&D
Medir para Entender y Mejorar: la Analítica del Aprendizaje como nuevo paradi...
Adaptive Multilevel Clustering Model for the Prediction of Academic Risk
Simple metrics for Curricular Analytics
Multimodal Learning Analytics
Multimodal Learning Analytics
Introduccion Algoritmos Multihilo
Analisis de Algoritmos Multihilo
Analitica aprendizaje

Recently uploaded (20)

PDF
Q2 2025 :Lundin Gold Conference Call Presentation_Final.pdf
PPTX
Introduction to Customs (June 2025) v1.pptx
PDF
financing insitute rbi nabard adb imf world bank insurance and credit gurantee
DOCX
marketing plan Elkhabiry............docx
PDF
Mathematical Economics 23lec03slides.pdf
PDF
way to join Real illuminati agent 0782561496,0756664682
PDF
ECONOMICS AND ENTREPRENEURS LESSONSS AND
PDF
ECONOMICS AND ENTREPRENEURS LESSONSS AND
PPTX
Session 3. Time Value of Money.pptx_finance
PDF
Circular Flow of Income by Dr. S. Malini
PPTX
4.5.1 Financial Governance_Appropriation & Finance.pptx
PDF
Topic Globalisation and Lifelines of National Economy.pdf
PPTX
FL INTRODUCTION TO AGRIBUSINESS CHAPTER 1
PPTX
The discussion on the Economic in transportation .pptx
PDF
caregiving tools.pdf...........................
PPTX
EABDM Slides for Indifference curve.pptx
PPTX
Unilever_Financial_Analysis_Presentation.pptx
PDF
discourse-2025-02-building-a-trillion-dollar-dream.pdf
PDF
Copia de Minimal 3D Technology Consulting Presentation.pdf
PDF
how_to_earn_50k_monthly_investment_guide.pdf
Q2 2025 :Lundin Gold Conference Call Presentation_Final.pdf
Introduction to Customs (June 2025) v1.pptx
financing insitute rbi nabard adb imf world bank insurance and credit gurantee
marketing plan Elkhabiry............docx
Mathematical Economics 23lec03slides.pdf
way to join Real illuminati agent 0782561496,0756664682
ECONOMICS AND ENTREPRENEURS LESSONSS AND
ECONOMICS AND ENTREPRENEURS LESSONSS AND
Session 3. Time Value of Money.pptx_finance
Circular Flow of Income by Dr. S. Malini
4.5.1 Financial Governance_Appropriation & Finance.pptx
Topic Globalisation and Lifelines of National Economy.pdf
FL INTRODUCTION TO AGRIBUSINESS CHAPTER 1
The discussion on the Economic in transportation .pptx
caregiving tools.pdf...........................
EABDM Slides for Indifference curve.pptx
Unilever_Financial_Analysis_Presentation.pptx
discourse-2025-02-building-a-trillion-dollar-dream.pdf
Copia de Minimal 3D Technology Consulting Presentation.pdf
how_to_earn_50k_monthly_investment_guide.pdf

Towards Automatic Evaluation of Learning Object Metadata Quality

  • 1. Towards Automatic Evaluation of Learning Object Metadata Quality Xavier Ochoa, ESPOL, Ecuador Erik Duval, KULeuven, Belgium QoIS 2006
  • 2. Learning Objects are … Any entity, digital or non-digital, that can be used, re-used or referenced during technology-supported learning. IEEE LOM Standard
  • 3. Learning Object Metadata Learning Object Metadata Standard
  • 4. Initial growth has been slow ARIADNE
  • 5. Standardization, Interoperability of Repositories and Automatic Generation of Metadata had solved the scarcity problem… …but had created new “good” ones.
  • 6. The production, management and consumption of Learning Object Metadata is vastly surpassing the human capacity to review or process these metadata.
  • 7. Currently there is NOT scalable Quality Evaluation of Learning Object Metadat a
  • 8. Quality of Metadata "high quality metadata supports the functional requirements of the system it is designed to support" (Guy at al, 2004)
  • 9. Quality of Metadata Title: “The Time Machine” Author: “Wells, H. G.” Publisher: “L&M Publishers, UK” Year: “1965” Location: ----
  • 12. Why Measuring Quality? The quality of the metadata record that describes a learning object affects directly the chances of the object to be found, reviewed or reused. An object with the title “Lesson 1 – Course 201” and no description, could not be found in a “Introduction to Java” query, even if it is about that subject.
  • 13. How to measure Metadata Quality? Manually check a statistical sample of records to evaluate their quality. Use graphical tools to improve the task Use simple statistics from the repository Usability studies
  • 14. Metrics A good system needs both characteristics: Been mostly automated Predict with certain amount of precision the fitness of the metadata instance for its task Other fields had attacked similar problems through the use of metrics Software Engineering Bibliographical Studies (Scientometrics) Search engines (Eg.: PageRank)
  • 15. We cannot measure the quality manually anymore…
  • 16. … but is a good idea to follow the same quality characteristics.
  • 17. Quality Characteristics Framework proposed by Bruce and Hillman: Completeness Accuracy Provenance Conformance to expectations Consistency & logical coherence Timeliness Accessability
  • 18. Our Proposal: Use Metrics Small calculation performed over the values of the different fields of the metadata record in order to gain insight on a quality characteristics. For example we can count the number of fields that have been filled with information (metric) to assess the completeness of the metadata record (quality characteristic).
  • 19. Quality Metrics C ompleteness Simple Completeness: What percentage of the fields has been filled Weighted Completeness: Not all fields are equally important. Use a weighted sum .
  • 20. Quality Metrics Conformance to Expectations Nominal Information Content: How different is the value of field in the metadata record from the values in the repository (Entropy) Textual Information Content: What is the relevance of the words contained in free text fields (TFIDF)
  • 21. Quality Metrics Accesability Readability: How easy is to read the text of free text fields.
  • 23. Evaluation of the Metrics Online Experiment: http://ariadne.cti.espol.edu.ec/Metrics 22 Human Reviewers 20 Learning object metadata records (10 manual, 10 automated) 7 characteristics used for evaluation 5 quality Metrics
  • 24. Evaluation Results Textual Information Content correlates highly (0.842) with human-assigned quality score
  • 25. Analysis of Results The quality of the title and description is perceived as the quality of the record. One of the metrics captured a complex human evaluation. This artificial measurement of quality is not an effective evaluation for the metrics
  • 29. Further Work Evaluate metrics as predictors of “real” quality. Quality as Fitness to fulfill a given purpose Quality for Retrieval Quality for Evaluation Accessibility Quality Re-use Quality
  • 30. Further Work But more important… Measure the Quality of the Learning Object itself LearnRank Analysis of the Object itself Analysis of Contextual Attention Metadata Social Networking Learnometrics Measuring the Impact of Learning Object in the Learning/Teaching Community
  • 31. Thank you, Gracias Comments, Suggestions, Critics… are Welcome! More Information: http://ariadne.cti.espol.edu.ec/M4M