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      Analysis of Statistical Hypothesis based Learning Mechanism for Faster Crawling

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          Abstract

          The growth of world-wide-web (WWW) spreads its wings from an intangible quantities of web-pages to a gigantic hub of web information which gradually increases the complexity of crawling process in a search engine. A search engine handles a lot of queries from various parts of this world, and the answers of it solely depend on the knowledge that it gathers by means of crawling. The information sharing becomes a most common habit of the society, and it is done by means of publishing structured, semi-structured and unstructured resources on the web. This social practice leads to an exponential growth of web-resource, and hence it became essential to crawl for continuous updating of web-knowledge and modification of several existing resources in any situation. In this paper one statistical hypothesis based learning mechanism is incorporated for learning the behavior of crawling speed in different environment of network, and for intelligently control of the speed of crawler. The scaling technique is used to compare the performance proposed method with the standard crawler. The high speed performance is observed after scaling, and the retrieval of relevant web-resource in such a high speed is analyzed.

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          Author and article information

          Journal
          10 August 2012
          2012-08-13
          Article
          10.5121/ijaia.2012.3409
          1208.2261
          f318574a-8a7f-4cf2-be5f-54cf70b19e47

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

          History
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          International Journal of Artificial Intelligence & Applications (IJAIA), Vol.3, No.4, July 2012, 117-130
          14 Pages, 7 Figures This paper has been withdrawn by the author due to a crucial sign error in page no. 3,4,7 and 11. The error is also observed with equation no in page 10
          cs.IR cs.AI

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