November 8, 2010
Conference Paper

Computing Information Value from RDF Graph Properties

Abstract

Information value has been implicitly utilized and mostly non-subjectively computed in information retrieval (IR) systems. We explicitly define and compute the value of an information piece as a function of two parameters, the first is the potential semantic impact the target information can subjectively have on its recipient's world-knowledge, and the second parameter is trust in the information source. We model these two parameters as properties of RDF graphs. Two graphs are constructed, a target graph representing the semantics of the target body of information and a context graph representing the context of the consumer of that information. We compute information value subjectively as a function of both potential change to the context graph (impact) and the overlap between the two graphs (trust). Graph change is computed as a graph edit distance measuring the dissimilarity between the context graph before and after the learning of the target graph. A particular application of this subjective information valuation is in the construction of a personalized ranking component in Web search engines. Based on our method, we construct a Web re-ranking system that personalizes the information experience for the information-consumer.

Revised: April 18, 2011 | Published: November 8, 2010

Citation

al-Saffar S., and G. Heileman. 2010. Computing Information Value from RDF Graph Properties. In 12th International Conference on Information Integration and Web-based Applications & Services (iiWAS2010), November 8-10, 2010, Paris, France, Paper No. 128. New York, New York:Association for Computing Machinery. PNNL-SA-71618.