基于网页PageRank值的本地内容质量估计

Y. Kabutoya, T. Yumoto, S. Oyama, Keishi Tajima, Katsumi Tanaka
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引用次数: 3

摘要

最近,人们越来越频繁地搜索本地内容而不是网络内容,例如通过Google桌面搜索。谷歌在网络搜索方面取得了成功,因为它采用了PageRank算法对搜索结果进行排名。PageRank根据网页的受欢迎程度来估计网页的质量,而受欢迎程度又由通过超链接指向这些网页的页面的数量和质量来估计。然而,当我们搜索没有链接结构的本地内容(如文本数据)时,该算法不适用。在本研究中,我们提出了一种方法,通过使用网页内容的PageRank值来估计没有链接结构的本地内容的质量。基于这个估计,我们可以对桌面搜索结果进行排序。此外,该方法使我们能够跨不同资源(如Web内容和本地内容)搜索内容。在本文中,我们将该方法应用于Web内容,计算了估计其质量的分数,并将其与PageRank的页面质量分数进行了比较。
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Quality Estimation of Local Contents Based on PageRank Values of Web Pages
Recently, it is getting more frequent to search not Web contents but local contents, e.g., by Google Desktop Search. Google succeeded in the Web search because of its PageRank algorithm for the ranking of the search results. PageRank estimates the quality of Web pages based on their popularity, which in turn is estimated by the number and the quality of pages referring to them through hyperlinks. This algorithm, however, is not applicable when we search local contents without link structure, such as text data. In this research, we propose a method to estimate the quality of local contents without link structure by using the PageRank values of Web contents similar to them. Based on this estimation, we can rank the desktop search results. Furthermore, this method enables us to search contents across different resources such as Web contents and local contents. In this paper, we applied this method to Web contents, calculated the scores that estimate their quality, and we compare them with their page quality scores by PageRank.
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