651 research outputs found

    Transforming a competency model to assessment items

    No full text
    The problem of comparing and matching different learners’ knowledge arises when assessment systems use a one-dimensional numerical value to represent “knowledge level”. Such assessment systems may measure inconsistently because they estimate this level differently and inadequately. The multi-dimensional competency model called COMpetence-Based learner knowledge for personalized Assessment (COMBA) is being developed to represent a learner’s knowledge in a multi-dimensional vector space. The heart of this model is to treat knowledge, not as possession, but as a contextualized space of capability either actual or potential. The paper discusses the automatic generation of an assessment from the COMBA competency model as a “guideon- the–side”

    Transforming a competency model to assessment items

    No full text
    The problem of comparing and matching different learners’ knowledge arises when assessment systems use a one-dimensional numerical value to represent “knowledge level”. Such assessment systems may measure inconsistently because they estimate this level differently and inadequately. The multi-dimensional competency model called COMpetence-Based learner knowledge for personalized Assessment (COMBA) is being developed to represent a learner’s knowledge in a multi-dimensional vector space. The heart of this model is to treat knowledge, not as possession, but as a contextualized space of capability either actual or potential. The paper discusses the automatic generation of an assessment from the COMBA competency model as a “guide-on-the–side”

    Design of interactive visualization of models and students data

    Full text link
    This document reports the design of the interactive visualizations of open student models that will be performed in GRAPPLE. The visualizations will be based on data stored in the domain model and student model, and aim at supporting learners to be more engaged in the learning process, and instructors in assisting the learners

    PROMOTING LEARNER AUTONOMY THROUGH SELF-ASSESSMENT IN WRITING CLASS

    Get PDF
    In the 2020 era, the corona pandemic has caused many impacts throughout the country that are very broad in all fields, including education. Learners and lecturers are no exception affected by the pandemic, and always strive to be able to carry out teaching and learning activities that can cover deficiencies in the field. Based on the current complex learning and living background, this article discuss the autonomous learning mode of College English learners, puts forward the discussion of constructing strategy from self-assessment to improve autonomous learning mode of college English in writing classess. In discussing this article, the writer used theoretical review and qualitative document methods which were observations, data collection, data processing, revisions, and documentation. Then, it can be concluded that the results of research on self-assessment can improve learner autonomy so that learners can get the ease from online writing classes during the pandemic and in the future from direct methods (face to face) learning more beneficiall

    The Combination between the Individual Factors and the Collective Experience for Ultimate Optimization Learning Path using Ant Colony Algorithm

    Get PDF
    The approach that we propose in this paper is part of the optimization of the learning path in the e-learning environment. It relates more precisely to the adaptation and the guidance of the learners according to, on one hand, their needs and cognitive abilities and, on the other hand, the collective experience of co-learners. This work is done by an optimizer agent that has the specificity to provide to each learner the best path from the beginning of the learning process to its completion. The optimization in this approach is determined automatically and dynamically, by seeking the path that is more marked by success. This determination is concluding according to the vision of the pedagogical team and the collective experience of the learners. At the same time, we search of the path that is more adapted to the specificities of the learner in terms of preferences, level of knowledge and learner history. This operation is accomplished by exploiting their profile for perfect customization and the adaptation of ant colony algorithm for guidance tends towards maximizing the acquisition of the learner. The design of our work is unitary; it is based on the integration of individual collective factors of the learner. And the results are very conclusive. They show that the proposed approach is able to efficiently select the optimal path and that it participates fully in the satisfaction and success of the learner

    AI-Based Adaptive Learning: A Systematic Mapping of the Literature

    Get PDF
    With the aid of technology advancement, the field of education has seen a noticeable transformation. The teaching-learning process is now more interactive and is no longer restricted to students' physical presence in the classroom but instead makes use of specialized online platforms. In recent years, solutions that offer learning routes customized to learners' needs have become more necessary. In this regard, artificial intelligence has served as an excellent answer, allowing for the building of educational systems that can accommodate a wide range of student needs. Through this paper, a systematic mapping of the literature on AI-based adaptive learning is presented. The examination of 93 articles published between 2000 and 2022 made it possible to draw several conclusions, including the number of adaptive learning environments based on AI, the types of AI algorithms used, the objectives targeted by these systems as well as factors related to adaptation. This study may serve as a springboard for further investigation into how to address the problems raised by the current state.&nbsp
    • …
    corecore