April 27, 2012
Conference Paper

Pattern Discovery Using Semantic Network Analysis

Abstract

Cognitive information processing at higher conceptual levels requires a computational approach to knowledge representation and analysis. Semantic network analysis bridges the gap between probabilistic pattern recognition techniques and symbolic representations by replacing cumbersome and computationally complex forms of logic-based semantic inference with metrics on graph representations of labelled, directed semantic networked data. These metrics in turn support assessment of evidentiary support for the presence of patterns of interest in which entities play specified roles in complex event scenarios ("hypotheses").

Revised: September 14, 2012 | Published: April 27, 2012

Citation

Burk R.K., R.K. Burk, A.R. Chappell, M.L. Gregory, C.A. Joslyn, and L.R. McGrath. 2012. Pattern Discovery Using Semantic Network Analysis. In Third International Workshop on Cognitive Information Processing (CIP), May 28-30, 2012, Baiona, Spain. Piscataway, New Jersey:IEEE. PNWD-SA-9718. doi:10.1109/CIP.2012.6232917