Link Prediction Model for Page Ranking of Blogs
نویسندگان
چکیده
Social Network Analysis is mapping and measuring of relationships and flows of information between people, organizations, computers, or other information or knowledge processing entities. Social media systems such as blogs, LinkedIn, you tube are allows users to share content media, etc. Blog is a social network notepad service with consider on user interactions. In this paper study the link prediction and page ranking using MozRank algorithm using blog websites. It finds out how all the websites on the internet link to each other with the largest Link Intelligence database. As link data is also a component of search engine ranking, understanding the link profile of Search Engine positioning. Here the MozRank algorithm is using backlinks from blog websites and linking websites quality. Good websites with many backlinks which linking the corresponding WebPage give highly value of MozRank. MozRank can be improved a web page's by getting lots of links from semi-popular pages or a few links from very popular pages. The algorithm for page ranking must work differently and MozRank is more comprehensive and accurate than Goggle’s page rank. Another tool is Open Site Explorer that is ability to compare five URL's against each other. Open Site Explorer’s Compare Link Metrics option is how one measures page level metrics, the other domain. This result can help to generate a chart form for the comparative URLs. A comparison chart of the important metrics for these pages is shown which makes it very clear and easy to compare the data between the five URL's.
منابع مشابه
An Approach to Web Page Prediction Using Markov Model and Web Page Ranking
Markov Models have been widely used for predicting next Web-page from the users’ navigational behavior recorded in the Web-log. This usage-based technique can be combined with the structural properties of the Web-pages to achieve better prediction accuracy. This paper proposes one of the pre-fetching techniques relying both on Markov Model and Ranking which considers the structural properties o...
متن کاملIEESE International Journal of Science and Technology (IJSTE), Vol. 2 No. 2 June, 2013
Ranking in website of a search engine or what we call as the Pagerank is very important in the search results to display relevant and appropriate to the level of importance. Search results in the search engines always associate with the relevant results on the first page, other than that on page 5 and onwards. Using URL Shortener has now become a trend, especially for those who use a shortener ...
متن کاملThe MultiRank Bootstrap Algorithm: Semi-Supervised Political Blog Classification and Ranking Using Semi-Supervised Link Classification
We present a new, intuitive semi-supervised learning algorithm for classifying political blogs in a blog network and ranking them within classes. In the algorithm each link is assigned a label as well as the blogs. Using only the link structure as input and by exploiting the linking properties found in political blog communities, we bootstrap the classification of links and blogs and blog ranki...
متن کاملThe MultiRank Bootstrap Algorithm: Self-Supervised Political Blog Classification and Ranking Using Semi-Supervised Link Classification
We present a new semi-supervised learning algorithm for classifying political blogs in a blog network and ranking them within predicted classes. We test our algorithm on two datasets and achieve classification accuracy of 81.9% and 84.6% using only 2 seed blogs.
متن کاملBlog Rating as an Iterative Collaborative Process
The blogosphere is a part of the World Wide Web, enhanced with several characteristics that differentiate blogs from traditional websites. The number of different authors, the multitude of user-provided tags, the inherent connectivity between blogs and bloggers, the high update rate, and the time information attached to each post are some of the features that can be exploited in various informa...
متن کامل