Exploiting Content Redundancy For Web Information Extraction

WWW(2010)

引用 62|浏览72
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摘要
We propose a novel extraction approach that exploits content redundancy on the web to extract structured data fromtemplate-based web sites. We start by populating a seed database with records extracted from a few initial sites. We then identify values within the pages of each new site that match attribute values contained in the seed set of records. To match attribute values with diverse representations across sites, we define a new similarity metric that leverages the templatized structure of attribute content. Specifically, our metric discovers the matching pattern between attribute values from two sites, and uses this to ignore extraneous portions of attribute values when computing similarity scores. Further, to filter out noisy attribute value matches, we exploit the fact that attribute values occur at fixed positions within template-based sites. We develop an efficient Apriori-style algorithm to systematically enumerate attribute position configurations with sufficient matching values across pages. Finally, we conduct an extensive experimental study with real-life web data to demonstrate the effectiveness of our extraction approach.
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关键词
attribute value,attribute content,enumerate attribute position configuration,match attribute,noisy attribute value,real-life web data,template-based web site,computing similarity score,content redundancy,extraction approach,web information extraction
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