生物雪球:维基的自动化人口

Xiaojiang Liu, Zaiqing Nie, Nenghai Yu, Ji-Rong Wen
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引用次数: 18

摘要

互联网用户经常需要找到感兴趣的人的传记和事实。维基百科已经成为查阅名人传记和事实的第一站。然而,维基百科只能为名人提供信息,因为它的中立观点(NPOV)编辑政策。在本文中,我们提出了一个集成的引导框架,名为“生物雪球”,它可以自动总结网络,为任何有适度网络存在的人生成维基百科风格的页面。在bisnowball中,传记排序和事实提取在一个单一的综合训练和推理过程中一起进行,使用马尔可夫逻辑网络(mln)作为其底层统计模型。引导框架只从少量的种子开始,迭代地寻找新的事实和传记。由于网络上的传记段落是由最重要的事实组成的,与文献中的解耦方法相比,我们的联合摘要模型可以提高事实提取和传记排名的准确性。在一个小的标记数据集和一个真实的web规模数据集上的实证结果都表明了bisnowball的有效性。我们还通过经验证明,biowsnowball优于解耦方法。
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BioSnowball: automated population of Wikis
Internet users regularly have the need to find biographies and facts of people of interest. Wikipedia has become the first stop for celebrity biographies and facts. However, Wikipedia can only provide information for celebrities because of its neutral point of view (NPOV) editorial policy. In this paper we propose an integrated bootstrapping framework named BioSnowball to automatically summarize the Web to generate Wikipedia-style pages for any person with a modest web presence. In BioSnowball, biography ranking and fact extraction are performed together in a single integrated training and inference process using Markov Logic Networks (MLNs) as its underlying statistical model. The bootstrapping framework starts with only a small number of seeds and iteratively finds new facts and biographies. As biography paragraphs on the Web are composed of the most important facts, our joint summarization model can improve the accuracy of both fact extraction and biography ranking compared to decoupled methods in the literature. Empirical results on both a small labeled data set and a real Web-scale data set show the effectiveness of BioSnowball. We also empirically show that BioSnowball outperforms the decoupled methods.
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