84,870 research outputs found

    Pemanfaatan Konsep Ontology Dalam Interaksi Sistem Collaborative Learning

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    In the present time, learning system goes through a period of a paradigm shift from conventional learning model into an interactive learning system with information technology-assisted. During its development, interactive learning model has been proven to have an impact that is good enough from the culture, worldview, and also the media used in the learning process. Nevertheless, not all of its evolution has a acceptable effect, especially on the ability of students in terms of communicating the level of the forum or group. Furthermore, a high intensity in the use of media technology also had been trigger the gap between students with different backgrounds individually. This research has focused on providing the views or perception of the structure and flow of information on each entity involved in the collaborative learning system. Collaborative learning is one of the solutions in which this model can improve the soft skills of learners to be able to interact in contextual, integrated, and able to work together to create a conducive academic atmosphere. The presence of the concept of ontology is used because it can provide equivalence perception of the structure and flow of information to any entity involved in this collaborative learning system. Ontology can be defined as the concept of interconnected or relationship which then can cooperatively build a structure on a domain and limit the interpretation of the term science. Based on the framework created, there are 5 important sub-domains in the design model of Collaborative Learning ie Trigger, Learning Materials, Learning Scenarios, Learning Group, and Collaborative Learning Goal. Contribution of this research is to produce a framework Collaborative Learning Ontology for system developers as a guide to re-design the e-Learning syste

    Utilising ontology-based modelling for learning content management

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    Learning content management needs to support a variety of open, multi-format Web-based software applications. We propose multidimensional, model-based semantic annotation as a way to support the management of access to and change of learning content. We introduce an information architecture model as the central contribution that supports multi-layered learning content structures. We discuss interactive query access, but also change management for multi-layered learning content management. An ontology-enhanced traceability approach is the solution

    i-JEN: Visual interactive Malaysia crime news retrieval system

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    Supporting crime news investigation involves a mechanism to help monitor the current and past status of criminal events. We believe this could be well facilitated by focusing on the user interfaces and the event crime model aspects. In this paper we discuss on a development of Visual Interactive Malaysia Crime News Retrieval System (i-JEN) and describe the approach, user studies and planned, the system architecture and future plan. Our main objectives are to construct crime-based event; investigate the use of crime-based event in improving the classification and clustering; develop an interactive crime news retrieval system; visualize crime news in an effective and interactive way; integrate them into a usable and robust system and evaluate the usability and system performance. The system will serve as a news monitoring system which aims to automatically organize, retrieve and present the crime news in such a way as to support an effective monitoring, searching, and browsing for the target users groups of general public, news analysts and policemen or crime investigators. The study will contribute to the better understanding of the crime data consumption in the Malaysian context as well as the developed system with the visualisation features to address crime data and the eventual goal of combating the crimes

    Content-driven design and architecture of E-learning applications

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    E-learning applications combine content with learning technology systems to support the creation of content and its delivery to the learner. In the future, we can expect the distinction between learning content and its supporting infrastructure to become blurred. Content objects will interact with infrastructure services as independent objects. Our solution to the development of e-learning applications – content-driven design and architecture – is based on content-centric ontological modelling and development of architectures. Knowledge and modelling will play an important role in the development of content and architectures. Our approach integrates content with interaction (in technical and educational terms) and services (the principle organization for a system architecture), based on techniques from different fields, including software engineering, learning design, and knowledge engineering

    Structuring visual exploratory analysis of skill demand

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    The analysis of increasingly large and diverse data for meaningful interpretation and question answering is handicapped by human cognitive limitations. Consequently, semi-automatic abstraction of complex data within structured information spaces becomes increasingly important, if its knowledge content is to support intuitive, exploratory discovery. Exploration of skill demand is an area where regularly updated, multi-dimensional data may be exploited to assess capability within the workforce to manage the demands of the modern, technology- and data-driven economy. The knowledge derived may be employed by skilled practitioners in defining career pathways, to identify where, when and how to update their skillsets in line with advancing technology and changing work demands. This same knowledge may also be used to identify the combination of skills essential in recruiting for new roles. To address the challenges inherent in exploring the complex, heterogeneous, dynamic data that feeds into such applications, we investigate the use of an ontology to guide structuring of the information space, to allow individuals and institutions to interactively explore and interpret the dynamic skill demand landscape for their specific needs. As a test case we consider the relatively new and highly dynamic field of Data Science, where insightful, exploratory data analysis and knowledge discovery are critical. We employ context-driven and task-centred scenarios to explore our research questions and guide iterative design, development and formative evaluation of our ontology-driven, visual exploratory discovery and analysis approach, to measure where it adds value to users’ analytical activity. Our findings reinforce the potential in our approach, and point us to future paths to build on
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