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Scaling Up Open Tagging from Tens to Thousands: Comprehension Empowered Attribute Value Extraction from Product Title

机译:从数十到数千次缩放打开标记:理解赋权从产品标题提取

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Supplementing product information by extracting attribute values from title is a crucial task in e-Commerce domain. Previous studies treat each attribute only as an entity type and build one set of NER tags (e.g., BIO) for each of them, leading to a scalability issue which unfits to the large sized attribute system in real world e-Commerce. In this work, we propose a novel approach to support value extraction scaling up to thousands of attributes without losing performance: (1) We propose to regard attribute as a query and adopt only one global set of BIO tags for any attributes to reduce the burden of attribute tag or model explosion; (2) We explicitly model the semantic representations for attribute and title, and develop an attention mechanism to capture the interactive semantic relations in-between to enforce our framework to be attribute comprehensive. We conduct extensive experiments in real-life datasets. The results show that our model not only outperforms existing state-of-the-art N-ER tagging models, but also is robust and generates promising results for up to 8,906 attributes.
机译:通过从标题中提取属性值来补充产品信息是电子商务域中的一个重要任务。以前的研究仅将每个属性视为实体类型,并为每个属性构建一组NER标签(例如,BIO),导致可扩展性问题,该问题不合于现实世界电子商务中的大型属性系统。在这项工作中,我们提出了一种新的方法来支持价值提取缩放,在不丢失性能的情况下支持数千个属性:(1)我们建议将属性视为查询,只为任何属性提供一个全球生物标签,以减少负担的任何属性属性标签或模型爆炸; (2)我们明确地模拟了属性和标题的语义表示,并开发了注意力机制,以捕获互动语义关系,以强制执行框架是属性的。我们在现实生活数据集中进行广泛的实验。结果表明,我们的模型不仅优于现有最先进的N-ER标记型号,而且非常强大,并为高达8,906个属性产生有前途的结果。

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