Incollection,

Reasoning about Weighted Semantic User Profiles through Collective Confidence Analysis: A Fuzzy Evaluation

, and .
Advances in Intelligent Web Mastering - 2, volume 67 of Advances in Intelligent and Soft Computing, Springer, Berlin / Heidelberg, (2010)
DOI: 10.1007/978-3-642-10687-3_7

Abstract

User profiles are vastly utilized to alleviate the increasing problem of so called information overload. Many important issues of Semantic Web like trust, privacy, matching and ranking have a certain degree of vagueness and involve truth degrees that one requires to present and reason about. In this ground, profiles tend to be useful and allow incorporation of these uncertain attributes in the form of weights into profiled materials. In order to interpret and reason about these uncertain values, we have constructed a fuzzy confidence model, through which these values could be collectively analyzed and interpreted as collective experience confidence of users. We analyze this model within a scenario, comprising weighted user profiles of a semantically enabled cultural heritage knowledge platform. Initial simulation results have shown the benefits of our mechanism for alleviating problem of sparse and empty profiles.

Tags

Users

  • @nimdoc

Comments and Reviews