产品规格页面的大数据联动

Disheng Qiu, Luciano Barbosa, Valter Crescenzi, P. Merialdo, D. Srivastava
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引用次数: 5

摘要

从成千上万的web源中可以获得越来越多的产品页面,每个页面都与一个产品相关联,包含其属性和一个或多个产品标识符。这些来源提供了关于产品的重叠信息,使用了不同的模式,使得web规模的集成极具挑战性。在本文中,我们利用数据源发布产品标识符的机会,在数据集成管道的开始,在模式对齐之前,跨数据源执行大数据链接。要实现这一机会,需要解决几个挑战:标识符需要在产品页面上被发现,这由于标识符的多样性而变得困难;需要识别页面上的主要产品标识,由于页面上呈现的众多相关产品而变得困难;并且需要解析跨页面的标识符,这由于产品类别之间标识符的模糊性而变得困难。我们针对产品规格页面的大数据链接问题提出了我们的RaF(冗余如朋友)解决方案,该解决方案利用了全局级标识符的冗余,以及本地源级结构和语义的同质性,有效地链接了数千个头尾源的数百万页头部和尾部产品。我们使用公开可用的Dexter数据集对我们的RaF方法进行了彻底的实证评估,该数据集由来自350个网站的7.1万个来源的190万个产品页面组成,并证明了其在实践中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Big Data Linkage for Product Specification Pages
An increasing number of product pages are available from thousands of web sources, each page associated with a product, containing its attributes and one or more product identifiers. The sources provide overlapping information about the products, using diverse schemas, making web-scale integration extremely challenging. In this paper, we take advantage of the opportunity that sources publish product identifiers to perform big data linkage across sources at the beginning of the data integration pipeline, before schema alignment. To realize this opportunity, several challenges need to be addressed: identifiers need to be discovered on product pages, made difficult by the diversity of identifiers; the main product identifier on the page needs to be identified, made difficult by the many related products presented on the page; and identifiers across pages need to beresolved, made difficult by the ambiguity between identifiers across product categories. We present our RaF (Redundancy as Friend) solution to the problem of big data linkage for product specification pages, which takes advantage of the redundancy of identifiers at a global level, and the homogeneity of structure and semantics at the local source level, to effectively and efficiently link millions of pages of head and tail products across thousands of head and tail sources. We perform a thorough empirical evaluation of our RaF approach using the publicly available Dexter dataset consisting of 1.9M product pages from 7.1k sources of 3.5k websites, and demonstrate its effectiveness in practice.
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