Towards Cross-domain MOOC Forum Post Classification

Aneesha Bakharia
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引用次数: 35

Abstract

Preliminary research is presented on the generalisability of confusion, urgency and sentiment classifiers for MOOC forum posts. The Stanford MOOCPosts data set is used to train classifiers with forum posts from individual courses and validate these classifiers on MOOC forum posts from other domain areas. While low cross-domain classification accuracy is achieved, the experiment highlights the need for transfer learning and domain adaptation algorithms; and provides insight into the types of algorithms required within an educational context.
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跨域MOOC论坛帖子分类研究
对MOOC论坛帖子的困惑、紧急和情感分类器的通用性进行了初步研究。斯坦福大学MOOCPosts数据集用于使用来自个别课程的论坛帖子训练分类器,并在来自其他领域的MOOC论坛帖子上验证这些分类器。虽然实现了较低的跨领域分类精度,但实验强调了对迁移学习和领域自适应算法的需求;并提供了在教育环境中所需的算法类型的见解。
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