The Correspondence Analysis Platform for Uncovering Deep Structure in Data and Information
Abstract
We study two aspects of information semantics: (i) the collection of all relationships, (ii) tracking and spotting anomaly and change. The first is implemented by endowing all relevant information spaces with a Euclidean metric in a common projected space. The second is modelled by an induced ultrametric. A very general way to achieve a Euclidean embedding of different information spaces based on cross-tabulation counts (and from other input data formats) is provided by Correspondence Analysis. From there, the induced ultrametric that we are particularly interested in takes a sequential - e.g. temporal - ordering of the data into account. We employ such a perspective to look at narrative, "the flow of thought and the flow of language" (Chafe). In application to policy decision making, we show how we can focus analysis in a small number of dimensions.
Cite
@article{arxiv.0807.0908,
title = {The Correspondence Analysis Platform for Uncovering Deep Structure in Data and Information},
author = {Fionn Murtagh},
journal= {arXiv preprint arXiv:0807.0908},
year = {2011}
}
Comments
Sixth Annual Boole Lecture in Informatics, Boole Centre for Research in Informatics, Cork, Ireland, 29 April 2008. 28 pp., 17 figures. To appear, Computer Journal. This version: 3 typos corrected