HierarchicalRank: Webpage Rank Improvement Using HTML TagLevel Similarity

HierarchicalRank: Webpage Rank Improvement

Using HTML TagLevel Similarity

Dilip Sharma and Deepak Ganeshiya

Department of Computer Engineering and Applications, GLA University Mathura, India

Abstract: In the past researches, two types of algorithms are introduced that are query dependent and query independent, works online or offline. PageRank Algorithm works offline independent to query while Hyperlink-Induced Topic Search (HITS) algorithm woks online dependent on query. One of the problems of these algorithms is that, division of the rank is based on number of inlinks, outlinks and different parameters used in hyperlink analysis which is dependent or independent to webpage content with the problem of topic drift. Previous researches were focused to solve this problem using the popularity of the outlink webpages. In this paper a novel algorithm for popularity measure is proposed based on similarity between query and Hierarchical text extracted from source and target webpage using Hyper Text Markup Language (HTML) tags importance parameter. In this paper, result of proposed method is compared with PageRank Algorithm and Topic Distillation with Query Dependent Link Connections and Page Characteristics results.

Keywords: Web mining, web graph, hyperlink analysis, connectivity, pagerank, HTML tags.

Received July 21, 2014; accepted October 14, 2014

 

Read 1347 times Last modified on Thursday, 17 May 2018 05:48
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…