Deriving group profiles from social media to facilitate the design of simulated environments for learning

A. Ammari, L. Lau, V. Dimitrova
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引用次数: 12

Abstract

Simulated environments for learning are becoming increasingly popular to support experiential learning in complex domains. A key challenge when designing simulated learning environments is how to align the experience in the simulated world with real world experiences. Social media resources provide user-generated content that is rich in digital traces of real world experiences. People comments, tweets, and blog posts in social spaces can reveal interesting aspects of real world situations or can show what particular group of users is interested in or aware of. This paper examines a systematic way to analyze user-generated content in social media resources to provide useful information for learning simulator design. A hybrid framework exploiting Machine Learning and Semantics for social group profiling is presented. The framework has five stages: (1) Retrieval of user-generated content from the social resource (2) Content noise filtration, removing spam, abuse, and content irrelevant to the learning domain; (3) Deriving individual social profiles for the content authors; (4) Clustering of individuals into groups of similar authors; and (5) Deriving group profiles, where interesting concepts suitable for the use in simulated learning systems are extracted from the aggregated content authored by each group. The framework is applied to derive group profiles by mining user comments on YouTube videos. The application is evaluated in an experimental study within the context of learning interpersonal skills in job interviews. The paper discusses how the YouTube-based group profiles can be used to facilitate the design of a job interview skills learning simulator, considering: (1) identifying learning needs based on digital traces of real world experiences; and (2) augmenting learner models in simulators based on group characteristics derived from social media.
从社交媒体中获取群体资料,以促进模拟学习环境的设计
模拟学习环境越来越受欢迎,以支持复杂领域的体验式学习。设计模拟学习环境时的一个关键挑战是如何将模拟世界中的体验与现实世界的体验结合起来。社交媒体资源提供用户生成的内容,这些内容富含现实世界体验的数字痕迹。社交空间中的人们评论、tweet和博客文章可以揭示现实世界中有趣的方面,或者可以显示特定用户组感兴趣或了解的内容。本文探讨了一种系统的方法来分析社交媒体资源中的用户生成内容,为学习模拟器的设计提供有用的信息。提出了一种利用机器学习和语义进行社会群体分析的混合框架。该框架分为五个阶段:(1)从社会资源中检索用户生成的内容;(2)过滤内容噪声,去除垃圾信息、滥用信息和与学习领域无关的内容;(3)获取内容作者的个人社交资料;(4)将个体聚类到相似作者的群体中;(5)导出组概要,其中从每个组撰写的汇总内容中提取适合在模拟学习系统中使用的有趣概念。该框架通过挖掘YouTube视频上的用户评论来获得群组概况。在求职面试中学习人际交往技巧的实验研究中,对该应用进行了评估。本文从以下几个方面探讨了如何利用基于youtube的群体资料来促进求职面试技能学习模拟器的设计:(1)基于真实世界经验的数字痕迹识别学习需求;(2)基于社交媒体衍生的群体特征,在模拟器中增强学习者模型。
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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