Intelligent tutoring systems founded on the multi-agent incremental dynamic case based reasoning

Abdelhamid Zouhair, E. En-Naimi, B. Amami, H. Boukachour, P. Person, C. Bertelle
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引用次数: 7

Abstract

In E-learning, there is still the problem of knowing how to ensure an individualized and continuous learner's follow-up during learning process, indeed among the numerous tools proposed, very few systems concentrate on a real time learner's follow-up. Our work in this field develops the design and implementation of a Multi-Agent Systems Based on Dynamic Case Based Reasoning which can initiate learning and provide an individualized follow-up of learner. When interacting with the platform, every learner leaves his/her traces in the machine. These traces are stored in a basis under the form of scenarios which enrich collective past experience. The system monitors, compares and analyses these traces to keep a constant intelligent watch and therefore detect difficulties hindering progress and/or avoid possible dropping out. The system can support any learning subject. The success of a case-based reasoning system depends critically on the performance of the retrieval step used and, more specifically, on similarity measure used to retrieve scenarios that are similar to the course of the learner (traces in progress). We propose a complementary similarity measure, named Inverse Longest Common Sub-Sequence (ILCSS). To help and guide the learner, the system is equipped with combined virtual and human tutors.
基于多智能体增量动态案例推理的智能辅导系统
在E-learning中,如何确保学习者在学习过程中进行个性化和持续的跟踪仍然是一个问题,事实上,在众多提出的工具中,很少有系统关注学习者的实时跟踪。我们在这一领域的工作发展了基于动态案例推理的多智能体系统的设计和实现,该系统可以启动学习并提供个性化的学习者跟踪。在与平台互动时,每个学习者都会在机器上留下自己的痕迹。这些痕迹以场景的形式存储在一个基础中,丰富了集体过去的经验。系统监控、比较和分析这些痕迹,以保持持续的智能观察,从而发现阻碍进度的困难和/或避免可能的退出。该系统可以支持任何学习科目。基于案例的推理系统的成功关键取决于所使用的检索步骤的性能,更具体地说,取决于用于检索与学习者课程相似的场景(进展中的痕迹)的相似性度量。我们提出了一种互补的相似性度量,称为逆最长公共子序列(ILCSS)。为了帮助和指导学习者,该系统配备了虚拟和真人导师。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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