By George Meghabghab
This booklet provides a selected and unified technique framework to 3 significant elements: se's functionality, hyperlink research, and consumer s internet habit. The explosive development and the frequent accessibility of the WWW has resulted in a surge of study job within the region of data retrieval at the WWW. The e-book can be utilized through researchers within the fields of data sciences, engineering (especially software), computing device technological know-how, data and administration, who're searching for a unified theoretical method of discovering proper info at the WWW and a manner of reading it from an information viewpoint to a consumer standpoint. It particularly stresses the significance of the involvement of the person trying to find info to the relevance of knowledge sought to the functionality of the medium used to discover details at the WWW.
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1 Unlike previous models portraying the Web as clusters of sites forming a well-connected sphere, the results showed that the Web’s structure more closely resembles a bow tie consisting of three major regions (a knot and two bows), and a fourth, smaller region of pages that are disconnected from the basic bow-tie structure. 1. At the center of the bow tie is the knot, which the study calls the strongly connected core. This core is the heart of the Web. pages within the core are strongly connected by extensive cross-linking among and between themselves.
For more detailed analysis, the table below shows the number and percent of unique hits for each search engine. Unique hits were those URLs that were found by only one of the ten search engines. The percentage ﬁgure refers to the percentage of unique hits as compared to the total hits which that particular search engine found on that search. Times refers to how many times in the ﬁve searches a unique hit was found. Only google found unique hits on each search. Given these results from this very small sample, google found the most unique hits (41) but AllTheWeb, WiseNut, NLResearch, Teoma, and MSN all found hits that neither google nor any of the others found.