Unsupervised Structured Data Extraction from Template-generated Web Pages
Tomas Grigalis (Vilnius Gediminas Technical University, Lithuania)
Antanas Čenys (Vilnius Gediminas Technical University, Lithuania)
Abstract: This paper studies structured data extraction from template-generated Web pages. Such pages contain most of structured data on the Web. Extracted structured data can be later integrated and reused in very big range of applications, such as price comparison portals, business intelligence tools, various mashups and etc. It encourages industry and academics to seek automatic solutions. To tackle the problem of automatic structured Web data extraction we present a new approach - structured data extraction based on clustering visually similar Web page elements. Our method called ClustVX combines visual and pure HTML features of Web page to cluster visually similar Web page elements and then extract structured Web data. ClustVX can extract structured data from Web pages where more than one data record is present. With extensive experimental evaluation on three benchmark datasets we demonstrate that ClustVX achieves better results than other state-of-the-art automatic structured Web data extraction methods.
Keywords: Deep Web, data extraction, structured web data, wrapper induction
Categories: H.0, H.2.8, H.3.3, H.3.5