不确定性与多样性相结合的主动迁移学习方法在中文地址解析中的应用

Yuwei Hu, Xueyuan Zheng, Ping Zong
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引用次数: 0

摘要

中文地址解析(CAR)是地理编码技术的关键步骤,其解析结果直接影响到基于地址的应用程序的服务质量。深度学习模型在CAR任务中得到了广泛的应用,但需要大量的带注释的地址数据才能获得满意的性能。本文提出了一种结合不确定性和多样性的CAR主动迁移学习方法,其主要目标是减轻目标区域未标记地址的标注要求,提高源区域已标记数据的利用率。考虑到中文地址之间的相关性,提出了一种基于LDA模型从地址数据中挖掘特征词的未标记地址聚类方法,以反映地址的分布情况。构建了一种结合不确定性和多样性的综合样本策略度量(CSSCUD),从目标区域中选择训练样本,通过综合考虑每批样本的信息量和特征空间分布,获得高价值样本。在两个不同区域的地址数据集上进行的实验表明,在使用相同数量的标记训练样本的情况下,综合主动迁移学习方法获得了比各种基线更高的分辨率精度,说明了该方法对CAR的有效性和实用性。
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An Active Transfer Learning Method Combining Uncertainty with Diversity for Chinese Address Resolution
Chinese address resolution (CAR) is a key step in geocoding technology, and the resolution results directly affect the service quality of address-based applications. Deep learning models have been widely used in CAR task but they require abundant annotated address data to obtain satisfied performance. In this paper, an active transfer learning method combining uncertainty with diversity for CAR is proposed, for which the main goal is to mitigate the annotation requirement for unlabeled address in the target region and to Improve the utilization of labeled data in the source region. Considering the correlation among Chinese addresses, we propose a clustering method of unlabeled address on the basis of feature words, mined from address data based on LDA model, to reflect the distribution of the address. A metric of comprehensive sample strategy combing uncertainty with diversity (CSSCUD) is constructed to select training samples from the target region, which can obtain high valuable samples by considering informativeness and distribution in feature words space jointly in each batch. Experiments on the address dataset from two different regions show that the comprehensive active transfer learning method achieves a higher resolution accuracy than various baselines by using the same number of labeled training samples, which illustrates that the proposed method is effective and practical for CAR.
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