基于web的论证支持系统中的智能信息推荐方法

Wang Hao, Xiong Cai-quan, Qian Caiyun, Yin Ziwei, You Hui
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引用次数: 0

摘要

在基于网络的论证支持系统中,专家审议需要大量的信息。如果系统能够实时向专家推荐合格的信息,不仅可以节省专家查找信息的时间,还可以帮助专家激活思维,跟踪论证过程。大多数现有的论证系统都没有智能推荐系统。本文提出了一种基于用户行为的混合推荐方法,首先分析了专家的历史偏好行为,得到了用户数据评分矩阵;然后,对评分矩阵进行分析计算,得到专家的推荐信息。最后对符合实时讨论主题的信息进行分类,完成对专家的信息推送。实验结果表明,该方法能够准确推送有效的数据信息,激活专家思维,提高论证效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Information Recommendation Method in Web-Based Argumentation Support System
In the web-based argumentation support system, a large amount of information is required for expert deliberation. If the system can recommend the qualified information to the experts in real time, it can not only save the time for experts to find the information, but also help the experts to activate the thinking and follow up the argumentation process. Most existing argumentation systems do not have intelligent recommendation systems. This paper proposes a hybrid recommendation method based on user behavior, firstly analyzes the historical preference behavior of experts and obtains the user data scoring matrix. Then, the scoring matrix is analyzed and calculated, and the recommendation information of the expert is obtained. Finally, the information that conforms to the topic of real-time discussion is classified and the information push for experts is completed. The experimental results show that this method can accurately push the effective data information, activate the expert thinking and improve the efficiency of the argumentation.
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