知识库中过时的事实检测

Shuang Hao, Chengliang Chai, Guoliang Li, N. Tang, Ning Wang, Xiang Yu
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引用次数: 10

摘要

知识库(KBs)存储高质量的信息,对于许多应用程序至关重要,例如增强搜索结果和作为数据清理的外部源。由于信息的快速变化,大部分KBs都存在过时的事实,这并不奇怪。当然,保持KBs的最新状态很重要。传统智慧研究了使用参考数据(如从新闻中提取的新事实)来检测KBs中过时事实的问题。然而,现有的方法只能覆盖KBs中的一小部分事实。在本文中,我们提出了一种新的human-in-the-loop方法用于KBs中的过时事实检测。它使用历史更新频率和事实的存在时间等特征来训练二元分类器,以计算知识库中事实过时的可能性。然后,它与人类互动,以验证一个高可能性的事实是否确实过时了。此外,它还使用逻辑规则,根据人类的反馈来检测更多过时的事实。逻辑规则检测到的过时事实也将被反馈到ML模型中,以进一步训练数据增强。在实际的KBs(如Yago和DBpedia)上进行的大量实验表明了我们的解决方案的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Outdated Fact Detection in Knowledge Bases
Knowledge bases (KBs), which store high-quality information, are crucial for many applications, such as enhancing search results and serving as external sources for data cleaning. Not surprisingly, there exist outdated facts in most KBs due to the rapid change of information. Naturally, it is important to keep KBs up-to-date. Traditional wisdom has investigated the problem of using reference data (such as new facts extracted from the news) to detect outdated facts in KBs. However, existing approaches can only cover a small percentage of facts in KBs. In this paper, we propose a novel human-in-the-loop approach for outdated fact detection in KBs. It trains a binary classifier using features such as historical update frequency and existence time of a fact to compute the likelihood of a fact in a KB to be outdated. Then, it interacts with humans to verify whether a fact with high likelihood is indeed outdated. In addition, it also uses logical rules to detect more outdated facts based on human feedback. The outdated facts detected by the logical rules will also be fed back to train the ML model further for data augmentation. Extensive experiments on real-world KBs, such as Yago and DBpedia, show the effectiveness of our solution.
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