利用子词嵌入进行跨国地址解析

Marouane Yassine, David Beauchemin, François Laviolette, Luc Lamontagne
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引用次数: 9

摘要

地址解析包括识别组成地址的片段,如街道名称或邮政编码。由于地址解析在记录链接等任务中的重要性,人们采用了许多技术来处理地址解析。神经网络方法定义了一种新的地址解析技术。虽然这种方法产生了显著的结果,但以前的工作只关注于应用神经网络来实现来自一个来源国家的地址解析。我们提出了一种方法,我们使用子词嵌入和递归神经网络架构来构建一个能够同时学习解析来自多个国家的地址的单一模型,同时考虑到语言和地址格式系统的差异。在不需要预处理和后处理的情况下,我们对用于培训的国家的准确率达到了99%左右。我们探索了在零机会迁移学习环境下,将通过对某些国家的地址进行培训而获得的地址解析知识转移到其他国家的可能性。我们在80%的国家(41个国家中的33个)取得了良好的成绩,其中近50%的国家(41个国家中的20个)的表现接近最先进水平。此外,我们提出了一个开源的Python实现我们训练过的模型11https://githuh.com/GRAAL-Research/deepparse。
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Leveraging Subword Embeddings for Multinational Address Parsing
Address parsing consists of identifying the segments that make up an address such as a street name or a postal code. Because of its importance for tasks like record linkage, address parsing has been approached with many techniques. Neural network methods defined a new state-of-the-art for address parsing. While this approach yielded notable results, previous work has only focused on applying neural networks to achieve address parsing of addresses from one source country. We propose an approach in which we employ subword embeddings and a Recurrent Neural Network architecture to build a single model capable of learning to parse addresses from multiple countries at the same time while taking into account the difference in languages and address formatting systems. We achieved accuracies around 99% on the countries used for training with no pre-processing nor post-processing needed. We explore the possibility of transferring the address parsing knowledge obtained by training on some countries' addresses to others with no further training in a zero-shot transfer learning setting. We achieve good results for 80% of the countries (33 out of 41), almost 50% of which (20 out of 41) is near state-of-the-art performance. In addition, we propose an open-source Python implementation of our trained models11https://githuh.com/GRAAL-Research/deepparse.
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