Compression-based inference on graph data

Open Access
Authors
Publication date 2013
Host editors
  • A. van den Bosch
  • T. Heskes
  • D. van Leeuwen
Book title BENELEARN 2013: Proceedings of the 22nd Belgian-Dutch Conference on Machine Learning
Event Belgian-Dutch Conference on Machine Learning
Pages (from-to) 26-33
Publisher Nijmegen: Raboud University Nijmegen
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
We investigate the use of compression-based learning on graph data. General purpose compressors operate on bitstrings or other sequential representations. A single graph can be represented sequentially in many ways, which may in uence the performance of sequential compressors. Using Normalized Compression Distance (NCD), we test a sequential compressor versus a native
graph compressor. We use both synthetic, randomly generated graphs and reallife datasets. We conclude that, even under adverse circumstances, sequential representations contain enough structure for shallow algorithms to perform inference successfully. Algorithms that operate directly on the graph representation usually require a considerable increase in resources, but do allow
for an increase in performance also.
Document type Conference contribution
Language English
Published at http://benelearn2013.org/pdfs/paper_32.pdf
Downloads
compression.pdf (Final published version)
pbloem_benelearn_2013.pdf (Final published version)
Permalink to this page
Back