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1 Efficient Crawling Through URL Ordering Junghoo Cho Hector Garcia-Molina Lawrence Page Stanford InfoLab
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2 What is a crawler? n Program that automatically retrieves pages from the Web. n Widely used for search engines.
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3 Challenges n There are many pages out on the Web. (Major search engines indexed more than 100M pages) n The size of the Web is growing enormously. n Most of them are not very interesting In most cases, it is too costly or not worthwhile to visit the entire Web space.
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4 Good crawling strategy n Make the crawler visit “important pages” first. u Save network bandwidth u Save storage space and management cost u Serve quality pages to the client application
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5 Outline n Importance metrics : what are important pages? n Crawling models : How is crawler evaluated? n Experiments n Conclusion & Future work
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6 Importance metric The metric for determining if a page is HOT u Similarity to driving query u Location Metric u Backlink count u Page Rank
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7 Similarity to a driving query n Importance is measured by closeness of the page to the topic (e.g. the number of the topic word in the page) n Personalized crawler Example) “Sports”, “Bill Clinton” the pages related to a specific topic
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8 Importance metric The metric for determining if a page is HOT u Similarity to driving query u Location Metric u Backlink count u Page Rank
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9 Backlink-based metric n Backlink count u number of pages pointing to the page u Citation metric n Page Rank u weighted backlink count u weight is iteratively defined
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10 A B C D E F BackLinkCount(F) = 2 PageRank(F) = PageRank(E)/2 + PageRank(C)
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11 Ordering metric n The metric for a crawler to “estimate” the importance of a page n The ordering metric can be different from the importance metric
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12 Crawling models n Crawl and Stop u Keep crawling until the local disk space is full. n Limited buffer crawl u Keep crawling until the whole web space is visited throwing out seemingly unimportant pages.
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Crawl and stop model
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14 Crawling models n Crawl and Stop u Keep crawling until the local disk space is full. n Limited buffer crawl u Keep crawling until the whole web space is visited throwing out seemingly unimportant pages.
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Limited buffer model
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16 Architecture Repository URL selector Virtual Crawler HTML parser URL pool Page Info crawled page extracted URL page info selected URL WebBase Crawler Stanford WWW
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17 Experiments n Backlink-based importance metric u backlink count u PageRank n Similiarty-based importance metric u similarity to a query word
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18 Ordering metrics in experiments n Breadth first order n Backlink count n PageRank
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20 Similarity-based crawling n The content of the page is not available before it is visited n Essentially, the crawler should “guess” the content of the page n More difficult than backlink-based crawling
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21 Promising page Sports ? Anchor Text Sports!! ? HOT Parent Page ? URL …/sports.html
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22 Virtual crawler for similarity-based crawling Promising page u Query word appears in its anchor text u Query word appears in its URL u The page pointing to it is “important” page n Visit “promising pages” first n Visit “non-promising pages” in the ordering metric order
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24 Conclusion n PageRank is generally good as an ordering metric. n By applying a good ordering metric, it is possible to gather important pages quickly.
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25 Future work n Limited buffer crawling model n Replicated page detection n Consistency maintenance
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26 Problem n In what order should a crawler visit web pages to get the pages we want? n How can we get important pages first?
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27 WebBase n System for creating and maintaining large local repository n High index speed (50 pages/sec) and large repository (150GB) n Load balancing scheme to prevent servers from crashing
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28 Virtual Web crawler n The crawler for experiments n Run on top of the WebBase repository n No load balancing n Dataset was restricted to Stanford domain
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29 Available Information n Anchor text n URL of the page n The content of the page pointing to it
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