Graph-based Aspect Representation Learning for Entity Resolution

Zhenqiang Zhao, Yuchen Guo, Dingxian Wang, Yufang Huang, Xiangnan He, Bin Gu
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Abstract

Entity Resolution (ER) identifies records that refer to the same real-world entity. Deep learning approaches improved the generalization ability of entity matching models, but hardly overcame the impact of noisy or incomplete data sources. In real scenes, an entity usually consists of multiple semantic facets, called aspects. In this paper, we focus on entity augmentation, namely retrieving the values of missing aspects. The relationship between aspects is naturally suitable to be represented by a knowledge graph, where entity augmentation can be modeled as a link prediction problem. Our paper proposes a novel graph-based approach to solve entity augmentation. Specifically, we apply a dedicated random walk algorithm, which uses node types to limit the traversal length, and encodes graph structure into low-dimensional embeddings. Thus, the missing aspects could be retrieved by a link prediction model. Furthermore, the augmented aspects with fixed orders are served as the input of a deep Siamese BiLSTM network for entity matching. We compared our method with state-of-the-art methods through extensive experiments on downstream ER tasks. According to the experiment results, our model outperforms other methods on evaluation metrics (accuracy, precision, recall, and f1-score) to a large extent, which demonstrates the effectiveness of our method.
面向实体解析的基于图的方面表示学习
实体解析(ER)标识引用相同现实世界实体的记录。深度学习方法提高了实体匹配模型的泛化能力,但难以克服数据源噪声或不完整的影响。在实际场景中,实体通常由多个语义面组成,称为方面。在本文中,我们的重点是实体增强,即检索缺失方面的值。方面之间的关系自然适合用知识图来表示,其中实体增强可以建模为链接预测问题。本文提出了一种新的基于图的实体增强方法。具体来说,我们应用了一种专用的随机行走算法,该算法使用节点类型来限制遍历长度,并将图结构编码为低维嵌入。因此,缺失的方面可以通过链接预测模型检索。此外,将固定顺序的增广方面作为深度Siamese BiLSTM网络的输入进行实体匹配。我们通过对下游ER任务的广泛实验,将我们的方法与最先进的方法进行了比较。从实验结果来看,我们的模型在很大程度上优于其他方法的评价指标(准确率、精密度、召回率和f1-score),证明了我们的方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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