A Simple Dynamic Mind-map Framework To Discover Associative Relationships in Transactional Data Streams
Abstract
In this paper, we informally introduce dynamic mind-maps that represent a new approach on the basis of a dynamic construction of connectionist structures during the processing of a data stream. This allows the representation and processing of recursively defined structures and avoids the problem of a more traditional, fixed-size architecture with the processing of input structures of unknown size. For a data stream analysis with association discovery, the incremental analysis of data leads to results on demand. Here, we describe a framework that uses symbolic cells to calculate associations based on transactional data streams as it exists in e.g. bibliographic databases. We follow a natural paradigm of applying simple operations on cells yielding on a mind-map structure that adapts over time.
Cite
@article{arxiv.0805.1296,
title = {A Simple Dynamic Mind-map Framework To Discover Associative Relationships in Transactional Data Streams},
author = {Christoph Schommer},
journal= {arXiv preprint arXiv:0805.1296},
year = {2008}
}
Comments
12 pages, 8 Figures. Updated version of a paper presented at the Workshop on Symbolic Networks, ECAI 2004, Valencia, Spain