USE OF ONTOLOGY-BASED STUDENT MODEL IN SEMANTIC-ORIENTED ACCESS TO THE KNOWLEDGE IN DIGITAL LIBRARIES Desislava Paneva Institute of Mathematics and Informatics.

Slides:



Advertisements
Similar presentations
Berliner XML Tage. Humboldt Universität zu Berlin, Oktober 2004 SWEB2004 – Intl Workshop on Semantic Web Technologies in Electronic Business Intelligent.
Advertisements

DELOS Highlights COSTANTINO THANOS ITALIAN NATIONAL RESEARCH COUNCIL.
AVATAR: Advanced Telematic Search of Audivisual Contents by Semantic Reasoning Yolanda Blanco Fernández Department of Telematic Engineering University.
TU e technische universiteit eindhoven / department of mathematics and computer science Modeling User Input and Hypermedia Dynamics in Hera Databases and.
A Stepwise Modeling Approach for Individual Media Semantics Annett Mitschick, Klaus Meißner TU Dresden, Department of Computer Science, Multimedia Technology.
Towards Adaptive Web-Based Learning Systems Katerina Georgouli, MSc, PhD Associate Professor T.E.I. of Athens Dept. of Informatics Tempus.
Personalized and adaptive eLearning Applications in LSMs
Personalized and adaptive eLearning – approaches and solutions Radoslav Pavlov, Desislava Paneva Institute of Mathematics and Informatics - BAS
Service-based architecture for personalized and adaptive access to the knowledge in digital library Desislava Paneva Institute of Mathematics and Informatics.
University of Piraeus Department of Technology Education and Digital Systems Centre for Research and Technology - Hellas(C.E.R.T.H.) Informatics and Telematics.
1 Semantic Technology supporting science Peter Mika / Dept. of Computer Science / Vrije Universiteit, Amsterdam.
‘Towards a competency model for adaptive assessment to support lifelong learning’ Onjira Sitthisak, Lester Gilbert and Hugh C. Davis Learning Technologies.
1 Introduction to XML. XML eXtensible implies that users define tag content Markup implies it is a coded document Language implies it is a metalanguage.
ECL Projects S. Stojanov ECL, University of Plovdiv.
Bay Zero  Jessie Hey  Steve Harris  Phillip Turner  Pietro Panzarasa  Kate Dickens  Srinandan Dasmahapatra  Backgrounds Include:  Marine.
The Semantic Web Week 1 Module Content + Assessment Lee McCluskey, room 2/07 Department of Computing And Mathematical Sciences Module.
Research Problems in Semantic Web Search Varish Mulwad ____________________________ 1.
Solutions for Personalized T-learning Alberto Gil Solla Department of Telematic Engineering University of Vigo (Spain) EuroITV 2005: the 3rd European Conference.
ReQuest (Validating Semantic Searches) Norman Piedade de Noronha 16 th July, 2004.
An Agent-Oriented Approach to the Integration of Information Sources Michael Christoffel Institute for Program Structures and Data Organization, University.
Methodologies, tools and languages for building ontologies. Where is their meeting point? Oscar Corcho Mariano Fernandez-Lopez Asuncion Gomez-Perez Presenter:
Cluj Napoca, 28 August IEEE International Conference on Intelligent Computer Communication and Processing Digital Libraries Workshop Towards.
Carlos Lamsfus. ISWDS 2005 Galway, November 7th 2005 CENTRO DE TECNOLOGÍAS DE INTERACCIÓN VISUAL Y COMUNICACIONES VISUAL INTERACTION AND COMMUNICATIONS.
Learner Modelling in a Multi-Agent System through Web Services Katerina Kabassi, Maria Virvou Department of Informatics, University of Piraeus.
New trends in Semantic Web Cagliari, December, 2nd, 2004 Using Standards in e-Learning Claude Moulin UMR CNRS 6599 Heudiasyc University of Compiègne (France)
CONTI’2008, 5-6 June 2008, TIMISOARA 1 Towards a digital content management system Gheorghe Sebestyen-Pal, Tünde Bálint, Bogdan Moscaliuc, Agnes Sebestyen-Pal.
INNOVATIVE LEARNING SERVICES IN WEB, INTERACTIVE TV AND MOBILE APPLICATIONS Radoslav Pavlov, Desislava Paneva Institute of Mathematics and Informatics.
Towards Online Accessibility of Valuable Phenomena of the Bulgarian Folklore Heritage Radoslav Pavlov 1 Konstantin Rangochev 1 Desislava Paneva-Marinova.
Towards a Creative Exploitation of Digitised Knowledge in eLearning Systems Radoslav Pavlov, Desislava Paneva Institute of Mathematics and Informatics.
Dr. Jūratė Kuprienė Director for innovations and infrastructure development Workshop: Information services for research process , Rīga Research.
ONTOLOGICAL MODEL OF THE KNOWLEDGE IN FOLKLORE DIGITAL LIBRARY Desislava Paneva Institute of Mathematics and Informatics – Bulgarian Academy of Sciences.
LIS 506 (Fall 2006) LIS 506 Information Technology Week 11: Digital Libraries & Institutional Repositories.
Agents on the Semantic Web – a roadmap to the future An arial view from feet.
Metadata and Geographical Information Systems Adrian Moss KINDS project, Manchester Metropolitan University, UK
Mastering Adaptive Hypermedia Courseware Authors: Boyan Bontchev, Dessislava Vassileva, Slavomir Grigorov ICETA 2008.
LADL2007 Workshop, 20 Sep 2007, Budapest, HU Polyxeni Arapi Nektarios Moumoutzis Manolis Mylonakis George Stylianakis George Theodorakis {xenia, nektar,
EU Project proposal. Andrei S. Lopatenko 1 EU Project Proposal CERIF-SW Andrei S. Lopatenko Vienna University of Technology
CORPORUM-OntoExtract Ontology Extraction Tool Author: Robert Engels Company: CognIT a.s.
19/10/20151 Semantic WEB Scientific Data Integration Vladimir Serebryakov Computing Centre of the Russian Academy of Science Proposal: SkTech.RC/IT/Madnick.
Business Modeling of the Application Architecture of the Bulgarian Folklore Artery Business Modeling of the Application Architecture of the Bulgarian Folklore.
Scenarios for a Learning GRID Online Educa Nov 30 – Dec 2, 2005, Berlin, Germany Nicola Capuano, Agathe Merceron, PierLuigi Ritrovato
A Grid Based IMS Learning Design Player the ELeGI Case Study Nicola CAPUANO, Roberto IANNONE, Sergio MIRANDA and Marcello ROSCIANO CRMPA, Centro di Ricerca.
ON-line SERVICES based on DIGITAL DOCUMENTS Prof. Doina Banciu ROCS Bucharest, 2008.
SKOS. Ontologies Metadata –Resources marked-up with descriptions of their content. No good unless everyone speaks the same language; Terminologies –Provide.
Company LOGO Digital Infrastructure of RPI Personal Library Qi Pan Digital Infrastructure of RPI Personal Library Qi Pan.
Agents on the Semantic Web – a roadmap to the future An arial view from feet.
Of 33 lecture 1: introduction. of 33 the semantic web vision today’s web (1) web content – for human consumption (no structural information) people search.
Digital Libraries1 David Rashty. Digital Libraries2 “A library is an arsenal of liberty” Anonymous.
Ontology-based Student Modelling Desislava Paneva Institute of Mathematics and Informatics Bulgarian Academy of Sciences
Cross-Media and Ubiquitous Learning Applications on Top of Iconographic Digital Library 14th International VSMM Conference Desislava Paneva, Lilia Pavlova-Draganova,
26/05/2005 Research Infrastructures - 'eInfrastructure: Grid initiatives‘ FP INFRASTRUCTURES-71 DIMMI Project a DI gital M ulti M edia I nfrastructure.
THE SEMANTIC WEB By Conrad Williams. Contents  What is the Semantic Web?  Technologies  XML  RDF  OWL  Implementations  Social Networking  Scholarly.
Use Case for Creative Learning-by- Authoring Lubomil Draganov, Desislava Paneva – Marinova, Radoslav Pavlov Institute of Mathematics and Informatics –
Providing web services to mobile users: The architecture design of an m-service portal Minder Chen - Dongsong Zhang - Lina Zhou Presented by: Juan M. Cubillos.
Knowledge Technologies for Description of the Semantics of the Bulgarian Iconographical Artefacts Lilia Pavlova-Draganova Laboratory of Telemаtics – BAS,
Virtual Information and Knowledge Environments Workshop on Knowledge Technologies within the 6th Framework Programme -- Luxembourg, May 2002 Dr.-Ing.
A Portrait of the Semantic Web in Action Jeff Heflin and James Hendler IEEE Intelligent Systems December 6, 2010 Hyewon Lim.
Creating a Smart Space for Learning The ELENA Consortium Information Society Technologies (ist) PROGRAMME OPEN-INTELLIGENT-EFFECTIVE.
OWL Web Ontology Language Summary IHan HSIAO (Sharon)
GAS ontology: an ontology for collaboration among ubiquitous computing devices International Journal of Human-Computer Studies (May 2005) Presented By.
Radoslav Pavlov, Galina Bogdanova, Desislava Paneva- Marinova, Todor Todorov, Konstantin Rangochev
Long Range Technology Plan, Student Device Standards Secondary Device Recommendation.
SEMANTIC WEB Presented by- Farhana Yasmin – MD.Raihanul Islam – Nohore Jannat –
A Semi-Automated Digital Preservation System based on Semantic Web Services Jane Hunter Sharmin Choudhury DSTC PTY LTD, Brisbane, Australia Slides by Ananta.
Constructing Knowledge Bases for E-Learning Using Protégé 2000 and Web Services Presented by: Fuhua Oscar Lin Authors: Mike Hogeboom, Fuhua Oscar Lin,
Conceptualizing the research world
1st International Conference on Semantics, Knowledge and Grid
Semantic Markup for Semantic Web Tools:
BUILDING A DIGITAL REPOSITORY FOR LEARNING RESOURCES
Versioning in Adaptive Hypermedia
Presentation transcript:

USE OF ONTOLOGY-BASED STUDENT MODEL IN SEMANTIC-ORIENTED ACCESS TO THE KNOWLEDGE IN DIGITAL LIBRARIES Desislava Paneva Institute of Mathematics and Informatics Bulgarian Academy of Sciences dessi@cc.bas.bg

Presentation overview Basic concepts and characteristics of digital libraries Digital libraries and eLearning systems vis-à-vis Student modelling – main issues, standards, Semantic web approach for model constructing, examples Main elements of the student model Student ontology Scenario for implementation of student ontology Conclusion and future work References

Basic concepts and characteristics of digital libraries Digital libraries (DL) are organised collections of digital content made available to the public, offering services and infrastructure to support preservation and presentation of visual and knowledge objects anytime and anywhere. The main characteristics of digital libraries: Ability to share information New forms and formats for information presentation Easy information update Accessibility from anywhere, at any time Services available for searching, selecting, grouping and presenting digital information, extracted from a number of locations Personalization and adaptation Contemporary methods and tools for digital information protection and preservation Different types of computer equipment and software No limitations related to the size of content to be presented, etc.

Basic concepts and characteristics of digital libraries The functionalities and advanced services of contemporary digital libraries: Multi-layer and personalized search, context-based search, relevant feedback Resource and collection management Metadata management Indexing Semantic annotation of digital resources and collection Multi-object and multi-feature search Different media type search, etc. Architectures: Hypermedia digital library Grid-based infrastructure Hyperdatabase infrastructure

Digital libraries and eLearning systems vis-à-vis Knowledge-on-Demand Just-in-time methods for supporting knowledge Provision of more efficient and more flexible tools for transforming digital content to suit the needs of end-users Sustaining of resources Resource description Heterogeneous resources in a coherent way Intellectual property rights Flexible architectures that provide interoperability Innovative services Effective user modelling tools, etc.

Student modelling Student modelling can be defined as the process of acquiring knowledge about the student in order to provide services, adaptive content and personalized instructional flow/s according to specific student’s requirements. Main questions: Student interests: What is the student interested in? What needs to be done or accomplished? Student preferences: How is something done or accomplished? Student objectives and intents: What the student actually wants to achieve? Student motivation: What is the force that drives the student to be engaged in learning activities? Student experience: What is the student’s previous experience that may have an impact on learning achievement? Student activities: What the student does in the learning environment? ….

Student modelling standards Incorporation between IEEE LTSC’s Personal and Private Information (PAPI) Standard and the IMS Learner Information Package (LIP)

Student modelling – Semantic web approach Earliest ideas of using ontologies for learner modelling (Chen&Mizoguchi, 1999). Use of ontologies for reusable and “scrutable” student models (Kay, 1999) Ontology modelling languages - OIL, DAML+OIL, RDF/RDFS, OWL, etc. Ontology development tools - Apollo, LinkFactory®, OILEd, OntoEditFree, Ontolingua server, OntoSaurus, OpenKnoME, Protégé-2000, SymOntoX, WebODE, WebOnto, OntoBuilder, etc. Ontology merge and integration tools – Chimaera, FCA-Merge (a method for bottom-up merging of ontologies), PROMPT, ODEMerge, etc. Ontology-based annotation tools – AeroDAML, COHSE, MnM, OngtoAnnotate, OntoMat-Annotizer, SHOE Knowledge Annotator, etc. Ontology storing and querying tools - ICS-FORTH RDFSuite, Sesame, Inkling, rdfDB, RDFStore, Extensible Open RDF (EOR), Jena, TRIPLE, KAON Tool Suite, Cerebra®, Ontopia Knowledge Suite, Empolis K42, etc. Main tools for constructing a student model ontology are:

Student modelling - examples SeLeNe learner profile The Self e-Learning Networks Project (SeLeNe) is a one-year Accompanying Measure funded by EU FP5, running from 1st November 2002 to 31st October 2003, extended until 31st January 2004

Student modelling - examples An excerpt of ELENA conceptual model for the learner profile with main concepts Project ELENA – Creating a Smart Space for Learning (01/09/2002 – 29/02/2005)

Main elements of the student model General student information StudentPersonalData - StudentName, StudentSurname, StudentId, StudentAge, StudentPostalAddress, StudentEmail, StudentTelephone StudentPreference – StudentObjectGroupingPreference, StudentObjectObservationStyle, StudentMultipleIntelligence, StudentPhysicalLimitation, StudentLanguagePreference StudentBackground - StudentLastEducation, StudentExperience StudentMotivationState - StudentInterest, StudentKnowledgeLevel StudentLearningGoal. Information about the student’s behaviour StudentObjectObservationTime StudentChosenObject StudentChosenCollection StudentObjectObservationPath StudentCompetenceLevel.

Student ontology

Student ontology

Student ontology quantifier property filler Object properties: Inverse properties: hasA and isAOf, where A is the name of some class or sub-class Examples: hasStudentBackground and isStudentBackgroundOf hasStudentExperience and isStudentExperienceOf hasStudentKnowledgeLevel and isStudentKnowledgeLevelOf, etc. Other properties: PreferringObjectGrouping, FollowingObjectObservationPath, Wishing, etc. Restriction: Existential quantifier () and the Universal quantifier () Examples: “ Wishing StudentObjectObservationStyle” quantifier property filler

Student ontology The figure depicts the StudentBackground class of the described student ontology. The student background is based on the StudentLastEducation and StudentExperience. The last education is certified by any diploma or certificate with a written qualification type. This document is issued by a certain organization and usually has a validation period. The student experience implies type, description and duration.

Scenario for implementation of student ontology Personalized search Student motivation state - student knowledge level (beginner, advanced, high) and student interest Student learning goal Student background Student behaviour in the digital library – chosen objects/collections, object observation path, etc. Student object observation style Language preference Student physical limitations, etc. Context-based search Student preferences – object grouping preference, etc.

Conclusion and future work Modelling and creation of domain ontology, describing the knowledge for the digital objects of the digital library. Merging this ontology with the presented student ontology Development of semantic-based DL services such as semantic annotation of digital objects, indexing, metadata management, etc. Development and implementation of semantic search, personalized search, context-based search, multi-object search, multi-feature search, etc. using the merged ontology and following the implementation scenario.

References LTSC Learner Model Working Group of the IEEE (2000) IEEE p1484.2/d7, 2000-11-28 Draft Standard for Learning Technology - Public and Private Information for Learners, Technical report Available Online: http://www.edutool.com/papi/papi_learner_07_main.pdf Smythe, C., F. Tansey, R. Robson (2001) IMS Learner Information Package Information Model Specification, Technical report Available Online: http://www.imsglobal.org/profiles/lipinfo01.html Chen, W., R. Mizoguchi (1999) Communication Content Ontology for Learner Model Agent in Multi-Agent Architecture, In Proceedings of AIED99 Workshop on Ontologies for Intelligent Educational Systems Kay, J. (1999) Ontologies for reusable and scrutable student model, In Proceedings of AIED99 Workshop on Ontologies for Intelligent Educational Systems Heckmann, D., A. Krueger (2003) A User Modeling Markup Language (UserML) for Ubiquitous Computing, In Proceedings of the Ninth International Conference on User Modeling, Berlin Heidelberg: Springer, pp. 393-397 OWL Web Ontology Language Overview. W3C Recommendation 10 February 2004, Available Online: http://www.w3.org/TR/owl-features/ Self, J. (1990) Bypassing the intractable problem of student modelling. In C. Frasson & G. Gauthier (Eds.), Intelligent Tutoring Systems: At the Crossroads of Artificial Intelligence and Education. New Jersey: AblexChen Lane, C. (1998) Gardner’s multiple IntelligenceAvailable online: http://www.tecweb.org/styles/stylesframe.html Lane, C. (2000) Learning styles and multiple intelligences in distributed learning/IMS projects. San Clemente, CA, The Education Coalition (TEC) Sison, R., M. Shimura (1998) Student Modelling and Machine Learning. International Journal of Artificial Intelligence in Education volum 9, pp. 128-158