A Structure-Oriented Unsupervised Crawling Strategy for Social Media Sites
Existing techniques for efficiently crawling social media sites rely on URL patterns, query logs, and human supervision. This paper describes SOUrCe, a structure-oriented unsupervised crawler that uses page structures to learn how to crawl a social media site efficiently. SOUrCe consists of two stag...
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Zusammenfassung: | Existing techniques for efficiently crawling social media sites rely on URL
patterns, query logs, and human supervision. This paper describes SOUrCe, a
structure-oriented unsupervised crawler that uses page structures to learn how
to crawl a social media site efficiently. SOUrCe consists of two stages. During
its unsupervised learning phase, SOUrCe constructs a sitemap that clusters
pages based on their structural similarity and generates a navigation table
that describes how the different types of pages in the site are linked
together. During its harvesting phase, it uses the navigation table and a
crawling policy to guide the choice of which links to crawl next. Experiments
show that this architecture supports different styles of crawling efficiently,
and does a better job of staying focused on user-created contents than baseline
methods. |
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DOI: | 10.48550/arxiv.1804.02734 |