Author: Lornet LD team Reuse freely – Just quote Desired Properties of a MOT Graphic Representation Formalism Simplicity and User Friendliness (win spec,

Slides:



Advertisements
Similar presentations
Author: Gilbert Paquette Reuse freely – Just quote LD Research Program at LICEF-CIRTA Télé-Université LD Research Program at LICEF-CIRTA Télé-Université
Advertisements

Author: Lornet LD team Reuse freely – Just quote Learning Design based on Graphical Knowledge- Modeling LICEF-CIRTA, Télé-Université Learning Design based.
Author: Gilbert Paquette Reuse freely – Just quote MOT+LD Graphic Editor Workshop MOT+LD Graphic Editor Workshop _________________________________ Gilbert.
Copyright © 2002 Cycorp Introduction Fundamental Expression Types Top Level Collections Time and Dates Spatial Properties and Relations Event Types Information.
CS570 Artificial Intelligence Semantic Web & Ontology 2
Database Systems: Design, Implementation, and Management Tenth Edition
IT Requirements Capture Process. Motivation for this seminar Discovering system requirements is hard. Formally testing use case conformance is hard. We.
Requirements Engineering n Elicit requirements from customer  Information and control needs, product function and behavior, overall product performance,
SWEL’04 Workshop – Einhoven, August 23, 2004
Author: Gilbert Paquette Reuse freely – Just quote Modeling Languages for Instructional Engineering _________________________________ Dr Gilbert Paquette.
SSP Re-hosting System Development: CLBM Overview and Module Recognition SSP Team Department of ECE Stevens Institute of Technology Presented by Hongbing.
Adapt Adaptivity and adaptability in ODL (Minerva/Socrates project)
The Semantic Web – WEEK 5: RDF Schema + Ontologies The “Layer Cake” Model – [From Rector & Horrocks Semantic Web cuurse]
Annotating Documents for the Semantic Web Using Data-Extraction Ontologies Dissertation Proposal Yihong Ding.
Formal Ontology and Information Systems Nicola Guarino (FOIS’98) Presenter: Yihong Ding CS652 Spring 2004.
Understanding Knowledge. 2-2 Overview  Definitions  Cognition  Expert Knowledge  Human Thinking and Learning  Implications for Management.
Starting a project 1 Starting a Project Where do we now start? Where are we going? Will we know when we arrive?
Course Instructor: Aisha Azeem
31 st October, 2012 CSE-435 Tashwin Kaur Khurana.
Basic Concepts The Unified Modeling Language (UML) SYSC System Analysis and Design.
Knowledge Mediation in the WWW based on Labelled DAGs with Attached Constraints Jutta Eusterbrock WebTechnology GmbH.
Future of MDR - ISO/IEC Metadata Registries (MDR) Larry Fitzwater, SC 32 WG 2 Convener Computer Scientist U.S. Environmental Protection Agency May.
FRE 2672 Urban Ontologies : the Towntology prototype towards case studies Chantal BERDIER (EDU), Catherine ROUSSEY (LIRIS)
Author: Lornet LD team Reuse freely – Just quote Cognitive Science Education Science Software Engineering The basis.
ELearning Reality, ID processes and Pedagogical Objects Presented by Karin Lundgren-Cayrol LORNET.
AS Computing Software definitions.
“Enhancing Reuse with Information Hiding” ITT Proceedings of the Workshop on Reusability in Programming, 1983 Reprinted in Software Reusability, Volume.
Of 39 lecture 2: ontology - basics. of 39 ontology a branch of metaphysics relating to the nature and relations of being a particular theory about the.
Integrating Business Process Models with Ontologies Peter De Baer, Pieter De Leenheer, Gang Zhao, Robert Meersman {Peter.De.Baer, Pieter.De.Leenheer,
Of 33 lecture 10: ontology – evolution. of 33 ece 720, winter ‘122 ontology evolution introduction - ontologies enable knowledge to be made explicit and.
Chapter Two ( Data Model) Objectives Introduction to Data Models What are the Data Models Why they are important Learn how to design a DBMS.
2007 © Giunti Labs – No reproduction without written permission Visualizing IMS Learning Design for easier editing Marco Luccini, Giunti Labs R&D Project.
Dimitrios Skoutas Alkis Simitsis
Aude Dufresne and Mohamed Rouatbi University of Montreal LICEF – CIRTA – MATI CANADA Learning Object Repositories Network (CRSNG) Ontologies, Applications.
An Introduction to Software Engineering. Communication Systems.
Sharing Design Knowledge through the IMS Learning Design Specification Dawn Howard-Rose Kevin Harrigan David Bean University of Waterloo McGraw-Hill Ryerson.
Elizabeth Furtado, Vasco Furtado, Kênia Sousa, Jean Vanderdonckt, Quentin Limbourg KnowiXML: A Knowledge-Based System Generating Multiple Abstract User.
Overview of MOT Knowledge representation system : Basic Modeling Editor LexiconGrammarSemantics Pragmatics MOT Editor.
Author: Gilbert Paquette Reuse freely – Just quote Meta-Knowledge Representation for Learning Systems (Part 1-What) Meta-Knowledge Representation for Learning.
1 Training for the New Georgia Performance Standards Day 2: Unpacking the Standards.
CS62S: Expert Systems Requirements Specification and Design Based on Chap. 12: The Engineering of Knowledge-based Systems: Theory and Practice, A. J. Gonzalez.
Using RouteGraphs as an Appropriate Data Structure for Navigational Tasks SFB/IQN-Kolloquium Christian Mandel, A1-[RoboMap] Overview Goal scenario.
Week III  Recap from Last Week Review Classes Review Domain Model for EU-Bid & EU-Lease Aggregation Example (Reservation) Attribute Properties.
Information System InformationSystemKnowledgedata.
Inquiry learning How does IBL relate to our mathematics curriculum? Tool IG-1: The potential of IBL to meet curricular demands in mathematics.
Oreste Signore- Quality/1 Amman, December 2006 Standards for quality of cultural websites Ministerial NEtwoRk for Valorising Activities in digitisation.
Introduction to the Semantic Web and Linked Data Module 1 - Unit 2 The Semantic Web and Linked Data Concepts 1-1 Library of Congress BIBFRAME Pilot Training.
Trustworthy Semantic Webs Dr. Bhavani Thuraisingham The University of Texas at Dallas Lecture #4 Vision for Semantic Web.
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.
CSC 9010 Spring, Paula Matuszek. 1 CS 9010: Semantic Web Applications and Ontology Engineering Paula Matuszek Spring, 2006.
Metadata, Resources, and the RDF 김민수 Chapter 1. Creating the Sementic Web with RDF2 Overview Knowledge Representation Library Metadata RDFRDF.
Formal Specification: a Roadmap Axel van Lamsweerde published on ICSE (International Conference on Software Engineering) Jing Ai 10/28/2003.
System Requirements Specification
WonderWeb. Ontology Infrastructure for the Semantic Web. IST Project Review Meeting, 11 th March, WP2: Tools Raphael Volz Universität.
OWL Web Ontology Language Summary IHan HSIAO (Sharon)
Lecture #1: Introduction to Algorithms and Problem Solving Dr. Hmood Al-Dossari King Saud University Department of Computer Science 6 February 2012.
CASE STUDY - MATH PROBLEM SOLVING TO DESIGN & IMPLEMENT INTERVENTIONS.
Artificial Intelligence Knowledge Representation.
Software Design. Introduction Designing engineering encompasses the set of principles concepts and practices that lead to the development of a high quality.
Design Evaluation Overview Introduction Model for Interface Design Evaluation Types of Evaluation –Conceptual Design –Usability –Learning Outcome.
16 April 2011 Alan, Edison, etc, Saturday.. Knowledge, Planning and Robotics 1.Knowledge 2.Types of knowledge 3.Representation of knowledge 4.Planning.
Instructional Strategies
An Overview of Requirements Engineering Tools and Methodologies*
SysML v2 Formalism: Requirements & Benefits
ece 627 intelligent web: ontology and beyond
Knowledge Representation
Learning Design based on Graphical Knowledge-Modeling LICEF-CIRTA, Télé-Université _________________________________ Michel Léonard UNFOLD Workshop.
KNOWLEDGE REPRESENTATION
전문가 시스템(Expert Systems)
Presentation transcript:

Author: Lornet LD team Reuse freely – Just quote Desired Properties of a MOT Graphic Representation Formalism Simplicity and User Friendliness (win spec, only few type) Generality (structured overview of the domain) Completeness (process, resources and rules in the same model) Has easily Interpretable graphic objects (only few type) Facilitates communication (same semantic for each model) Allows building meta-knowledge models : Generic Skills and Competencies Makes explicit the relationship between knowledge/competency and LD Translates to machine (XML) format

Author: Lornet LD team Reuse freely – Just quote Concepts Procedures Principles Examples Traces Statements Abstract knowledge Concrete facts MOTPlus : Type of knowledge units WHAT? Conceptual K HOW? Procedural K WHEN? WHY? Conditional K

Author: Lornet LD team Reuse freely – Just quote Concepts Objects Documents, tools Dates Definitions Examples of different type of knowledge Procedures Actions Tasks, activities Instructions, algorithms Steps in a scenario Principles Conditions, constraints Rules, heuristics Laws, theories Decisional actors Example: concrete object representing a concept Trace: concrete object representing a procedure Statement: concrete object representing a principle Facts

Author: Lornet LD team Reuse freely – Just quote MOT Graphic Language

Author: Lornet LD team Reuse freely – Just quote Example of Knowledge Model