An Unsupervised Entity Resolution Framework for English and Arabic Datasets

Abdelkrim Ouhab, M. Malki, Djamel Berrabah, F. Boufarès
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引用次数: 3

Abstract

Entity resolution ER is an important step in data integration and in many data mining projects; its goal is to identify records that refer to the same real-world entity. Most existing ER frameworks have focused on datasets in Latin-based languages and do not support Arabic language. In this article, the authors present an unsupervised ER framework that supports English and Arabic datasets. Rather than using matching rules developed by an expert or manually labeled training examples, the proposed framework automatically generates its own training set. The generated training set is then used to train a classifier and learn a classification model. Finally, the learned classification model is used to perform ER. The proposed framework was implemented and tested on three Arabic datasets and four English datasets. Experimental results show that the proposed framework is competitive with supervised approaches and outperform recently proposed unsupervised approaches in terms of F-measure.
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英文和阿拉伯文数据集的无监督实体解析框架
实体解析ER是数据集成和许多数据挖掘项目中的重要步骤;它的目标是识别引用相同现实世界实体的记录。大多数现有的ER框架都专注于基于拉丁语言的数据集,不支持阿拉伯语言。在本文中,作者提出了一个支持英语和阿拉伯语数据集的无监督ER框架。该框架不使用专家开发的匹配规则或手动标记的训练示例,而是自动生成自己的训练集。然后使用生成的训练集来训练分类器并学习分类模型。最后,使用学习到的分类模型执行ER。拟议的框架已在三个阿拉伯文数据集和四个英文数据集上实施和测试。实验结果表明,该框架与有监督方法具有竞争力,并且在F-measure方面优于最近提出的无监督方法。
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