基于web环境下自适应对等用户建模的智能机制

Ioannis Giannoukos, Ioanna Lykourentzou, Giorgos Mpardis, V. Nikolopoulos, V. Loumos, E. Kayafas
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引用次数: 1

摘要

对等评估技术是利用基于web的对等环境中存在的知识的有效手段。通过这些技术,参与者既扮演作者的角色,又扮演审稿人的角色。然而,随着基于web的协作环境的不断普及,需要开发一种智能机制来检索最优的审稿人组来评论每个作者的工作,以增加这些评论对作者最终结果的有用性。本文介绍了一种结合前馈神经网络的新技术,在同行评议过程中为特定作者确定最佳审稿人。所提出的方法试图根据作者所感知到的审稿人评论的有用性的反馈来匹配作者和审稿人的配置文件。该方法在教育电子学习数据上进行了测试,取得了良好的初步效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intelligent Mechanism for Adaptive Peer User Modeling in Web-Based Environments
Peer assessment techniques are an effective means to take advantage of the knowledge that exists in Web-based peer environments. Through these techniques, participants act both as authors and reviewers over each other¿s work. However, as Web-based cooperating environments continuously grow in popularity, there is a need to develop intelligent mechanisms that will retrieve the optimal group of reviewers to comment on the work of each author, with a view to increasing the usefulness that these comments will have on the author¿s final result. This paper introduces a novel technique that incorporates feed forward neural networks to determine the optimal reviewers for a specific author during a peer assessment procedure. The proposed method seeks to match author to reviewer profiles based on feedback regarding the usefulness of reviewer comments as it was perceived by the author. The method was tested on educational e-learning data and the preliminary results that it yielded are promising.
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