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Intweetive Text Summarization

机译:文字摘要

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摘要

The amount of user generated contents from various social me-dias allows analyst to handle a wide view of conversations on several topics related to their business. Nevertheless keeping up-to-date with this amount of information is not humanly feasible. Automatic Summarization then provides an interesting mean to digest the dynamics and the mass volume of contents. In this paper, we address the issue of tweets summarization which remains scarcely explored. We propose to automatically generated summaries of Micro-Blogs conversations dealing with public figures E-Reputation. These summaries are generated using key-word queries or sample tweet and offer a focused view of the whole Micro-Blog network. Since state-of-the-art is lacking on this point we conduct and evaluate our experiments over the multilingual CLEF RepLab Topic-Detection dataset according to an experimental evaluation process.
机译:用户从各种社交媒体生成的内容数量众多,使分析师可以处理与其业务相关的多个主题的广泛对话。然而,与人类保持最新的信息量是不可行的。然后,“自动汇总”提供了一种有趣的方式来消化动力学和内容的质量。在本文中,我们解决了仍很少探讨的推文摘要问题。我们建议自动生成处理公众人物电子口碑的微博对话摘要。这些摘要是使用关键字查询或示例推文生成的,并提供了整个Micro-Blog网络的重点视图。由于在这一点上缺乏最新技术,因此我们根据实验评估过程对多语言CLEF RepLab主题检测数据集进行并评估了实验。

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