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Adaptive learning objects in the context of eco-connectivist communities using learning analytics

机译:使用学习分析方法在生态连接社区中适应性学习对象

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摘要

Eco-connectivist communities are groups of individuals with similar characteristics, which emerge in a connectivist learning process within a knowledge ecology. ARMAGAeco-c is a reflexive and autonomic middleware for the management and optimization of eco-connectivist knowledge ecologies using description, prediction and prescription models. Adaptive Learning Objects are autonomic components that seek to personalize Learning Objects according to certain contextual information, such as learning styles of the learner's, technological restrictions, among other aspects. MALO is a system that allows the management of Adaptive Learning Objects. One of the main challenges of the connectivist learning process is the adaptation of the educational context to the student needs. One of them is the learning objects. For this reason, this work has two objectives, specifying a data analytics task to determine the learning style of a student in an eco-connectivist community and, adapting instances of Adaptive Learning Objects using the learning styles of the students in the communities. We use graph theory to identify the referential member of each eco-connectivist community, and a learning paradigm detection algorithm to identify the set of activities, strategies, and tools that Adaptive Learning Objects instances should have, according to the learning style of the referential member. To test our approach, a case study is presented, which demonstrates the validity of our approach.
机译:生态连接主义者社区是具有相似特征的一群人,它们出现在知识生态学中的连接主义学习过程中。 ARMAGAeco-c是用于描述,预测和处方模型的生态连接知识生态系统的管理和优化的反身且自主的中间件。自适应学习对象是自主的组件,旨在根据某些上下文信息(例如学习者的学习风格,技术限制等)来个性化学习对象。 MALO是允许管理自适应学习对象的系统。连通主义学习过程的主要挑战之一是使教育环境适应学生的需求。其中之一是学习对象。因此,这项工作有两个目标:指定数据分析任务以确定生态连接社区中学生的学习风格,以及使用社区中学生的学习风格来适应自适应学习对象的实例。我们使用图论来识别每个生态连接主义者社区的参照成员,并使用学习范例检测算法根据参照成员的学习风格来识别自适应学习对象实例应具有的活动,策略和工具的集合。 。为了测试我们的方法,将提供一个案例研究,以证明我们方法的有效性。

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