面向内容的在线讨论分析框架

Anna Stavrianou, J. Chauchat, Julien Velcin
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引用次数: 3

摘要

从在线讨论中挖掘和提取高质量的知识对工业和营销部门以及电子商务应用都很重要。大多数现有技术将讨论建模为由基于用户的图表示的用户社交网络。在本文中,我们提出了一个新的讨论分析框架。它基于基于消息的图,其中每个顶点表示消息对象,每个边指出特定节点响应的消息。这些边可以通过描述交换消息的关键字来加权。该模型允许讨论的面向内容的表示,并有助于识别讨论链。我们比较了两种表示(基于用户的图和基于消息的图),并分析了可以从中提取的不同信息。我们对真实数据的实验验证了所提出的框架,并展示了可以从基于消息的图中提取的附加信息。
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A Content-Oriented Framework for Online Discussion Analysis
Mining and extracting quality knowledge from online discussions is significant for the industrial and marketing sector, as well as for e-commerce applications. Most of the existing techniques model a discussion as a social network of users represented by a user-based graph. In this paper, we propose a new framework for discussion analysis. It is based on message-based graphs where each vertex represents amessage object and each edge points out which message the specific node replies to. The edges can be weighted by the keywords that characterize the exchanged messages. This model allows a content-oriented representation of the discussion and it facilitates the identification of discussion chains. We compare the two representations (user-based and message-based graphs) and we analyze the different information that can be extracted from them. Our experiments with real data validate the proposed framework and show the additional information that can be extracted from a message-based graph.
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