SIIRSOC-PHJun 26, 2013

Social Ranking Techniques for the Web

arXiv:1306.6370v18 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of personalized information retrieval for web users by integrating social media data, representing an incremental improvement over traditional link-based ranking methods.

The paper tackles the problem of ranking web information by combining web page content with social network data to create personalized rankings, and validates the approach through experiments on Google Buzz and Twitter.

The proliferation of social media has the potential for changing the structure and organization of the web. In the past, scientists have looked at the web as a large connected component to understand how the topology of hyperlinks correlates with the quality of information contained in the page and they proposed techniques to rank information contained in web pages. We argue that information from web pages and network data on social relationships can be combined to create a personalized and socially connected web. In this paper, we look at the web as a composition of two networks, one consisting of information in web pages and the other of personal data shared on social media web sites. Together, they allow us to analyze how social media tunnels the flow of information from person to person and how to use the structure of the social network to rank, deliver, and organize information specifically for each individual user. We validate our social ranking concepts through a ranking experiment conducted on web pages that users shared on Google Buzz and Twitter.

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