基于动态案例知识库协作的敏感话题检测模型

Liyong Zhao, Chongchong Zhao, Jingqin Pang, Jianyi Huang
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引用次数: 2

摘要

为了对校园网中的敏感话题进行检测和排序,保障校园网文化的健康与安全,本文提出了一种敏感话题检测模型。与传统的TDT(主题检测与跟踪)技术不同,该模型基于动态案例知识库的协同和多领域协同计算方法。话题的动态性给传统的敏感话题检测方法带来了很大的困难。我们的解决方案如下。首先,提取具有代表性的敏感主题作为案例,构建初始层次语义树,存储在动态案例知识库中;其次,在动态案例知识库的基础上,发现与历史案例相关的新的敏感话题或新事件,并根据案例的警惕性进行排序;最后,基于协同信息调度,分布在各个领域的动态案例知识库相互协作。在多所高校的实验和实际应用表明,该模型是有效的、高效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensitive Topic Detection Model Based on Collaboration of Dynamic Case Knowledge Base
In order to detect and rank sensitive topic in campus network and assure health and security of campus network culture, this paper proposes a sensitive topic detection model. Different from traditional TDT (topic detection and tracking) technologies, the model is based on collaboration of dynamic case knowledge base and multi-domain cooperative computing method. Dynamically nature of topic causes great difficulties in sensitive topic detection with traditional method. Our solution is as follows. Firstly, we extract representative sensitive topics as cases and construct initial hierarchical semantic tree stored in dynamic case knowledge base. Secondly, we find out new sensitive topic or new event related to historical case and rank it according to case alert degree based on dynamic case knowledge base. Finally, dynamic case knowledge bases distributed in each domain cooperates with each other based on collaborative information scheduling. Experiments and practical application in several colleges and universities show that our model is effectiveness and efficiency.
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