An Enhanced PageRank Algorithm based on Optimized Normalized Technique and Content-based Approach

Koo Kwong Ze, Fares Hasan, R. Razali, A. Buhari, Elisha Tadiwa
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引用次数: 1

Abstract

PageRank is an algorithm concerning search queries over the Internet. The algorithm returns the best search results to the user based on the webpage relevancy by calculating the outgoing links from each webpage. Although useful, the algorithm consumes a considerable amount of time as it needs to calculate the available webpages, which are also increasing in number over time. Moreover, the returned results by the algorithm are biased towards old webpages because they have the volume due to their lifetime, thus resulting in newly created webpages to have lower page ranks even though they have comparatively more relevant and useful information. To overcome these issues, this paper proposes an alternative hybrid PageRank algorithm based on optimized normalization technique and content-based approach. The proposed algorithm reduces the number of iterations required to calculate the page rank, hence improves the efficiency, by calculating the mean of all page rank values and normalizes them through the use of the mean. Through this approach, the algorithm is also able to determine the relevancy of webpages based on validity of links rather than popularity. These claims are demonstrated by an experiment conducted on the proposed algorithm using a dummy web structure consisting of 12 webpages. The results showed that the traditional PageRank algorithm has 74% more iterations than the proposed algorithm. The proposed algorithm returned a mean value of 1.00 compared to 1.32 for the traditional algorithm. These results confirm that the proposed algorithm saves a substantial amount of computing power while being more precise and not biased.
一种基于优化归一化和基于内容的增强PageRank算法
PageRank是一种关于互联网搜索查询的算法。该算法通过计算每个网页的外发链接,根据网页相关性向用户返回最佳搜索结果。虽然有用,但该算法消耗了相当多的时间,因为它需要计算可用的网页,这些网页的数量也随着时间的推移而增加。此外,算法返回的结果偏向于老网页,因为老网页由于其生命周期而具有体积,从而导致新创建的网页虽然具有相对更多的相关和有用的信息,但页面排名较低。为了克服这些问题,本文提出了一种基于优化归一化技术和基于内容方法的混合PageRank算法。该算法通过计算所有页面排名值的平均值并使用平均值进行归一化,减少了计算页面排名所需的迭代次数,从而提高了效率。通过这种方法,该算法还能够根据链接的有效性而不是流行度来确定网页的相关性。通过使用由12个网页组成的虚拟网页结构对所提出的算法进行的实验证明了这些主张。结果表明,传统的PageRank算法比本文提出的算法迭代次数多74%。与传统算法的1.32相比,提出的算法返回的平均值为1.00。这些结果证实了所提出的算法节省了大量的计算能力,同时更加精确和无偏差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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