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End-to-End Multi-Perspective Matching for Entity Resolution

机译:实体分辨率的端到端多视角匹配

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Entity resolution (ER) aims to identify data records referring to the same real-world entity. Due to the heterogeneity of entity attributes and the diversity of similarity measures, one main challenge of ER is how to select appropriate similarity measures for different attributes. Previous ER methods usually employ heuristic similarity selection algorithms, which are highly specialized to specific ER problems and are hard to be generalized to other situations. Furthermore, previous studies usually perform similarity learning and similarity selection independently, which often result in error propagation and are hard to be optimized globally. To resolve the above problems, this paper proposes an end-to-end multi-perspective entity matching model, which can adaptively select optimal similarity measures for heterogenous attributes by jointly learning and selecting similarity measures in an end-to-end way. Experiments on two real-world datasets show that our method significantly outperforms previous ER methods.
机译:实体分辨率(ER)旨在识别引用相同的现实实体的数据记录。由于实体属性的异质性和相似度措施的多样性,ER的一个主要挑战是如何为不同属性选择适当的相似度量。以前的ER方法通常采用启发式相似性选择算法,其高度专门于特定的ER问题,并且很难将其概括为其他情况。此外,之前的研究通常独立地执行相似度学习和相似度选择,这通常导致错误传播,并且很难全局优化。为了解决上述问题,本文提出了一种端到端的多透视实体匹配模型,其可以通过以端到端的方式共同学习和选择相似度测量来自适应地为异质属性选择最佳相似度测量。两个真实数据集的实验表明,我们的方法显着优于前面的ER方法。

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