Modelling the Navigation Potential of a Web Page
Trevor Fenner, Mark Levene, George Loizou

TL;DR
This paper models web page navigation potential using probabilistic functions, deriving formulas for different discounting scenarios, and applies the concept to improve web navigation and social network analysis.
Contribution
It introduces a novel model for web page navigation potential, deriving analytical expressions for different discounting factors and demonstrating practical applications.
Findings
Distribution of links follows the erf function under geometric discounting.
Derived an accurate approximation for potential gain of a web page.
Potential gain can serve as a new centrality measure in social networks.
Abstract
Suppose that you are navigating in ``hyperspace'' and you have reached a web page with several outgoing links you could choose to follow. Which link should you choose in such an online scenario? When you are not sure where the information you require resides, you will initiate a navigation session. This involves pruning some of the links and following one of the others, where more pruning is likely to happen the deeper you navigate. In terms of decision making, the utility of navigation diminishes with distance until finally the utility drops to zero and the session is terminated. Under this model of navigation, we call the number of nodes that are available after pruning, for browsing within a session, the {\em potential gain} of the starting web page. Thus the parameters that effect the potential gain are the local branching factor with respect to the starting web page and the…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Web Data Mining and Analysis
