Göm menyn
Files: Description Format
Fulltext PDF (requires Acrobat Reader)
Fulltext PostScript (requires a PostScript Reader)
Authors: Marcel Turcotte, Stephen H. Muggleton, and Michael J. E. Sternberg
Article title: Use of Inductive Logic Programming to Learn Principles of Protein Structure
Publ. type: Article
Volume: 5
Article No: 39
Language: English
Abstract [en]: Inductive logic programming (ILP) has been applied to learn rules which characterize protein folds. Several representations for the background set have been explored and the results have been interpreted in their biological context. In this paper, we present new results obtained with a background set containing information about protein topology. The new rules are more descriptive than the previous ones, {\em i.e.} where previous rules represented local motifs, often associated with functional regions, the new rules represent more complete descriptions, often similar to the descriptions found in SCOP. Cross-validation experiments were conducted for the 20 most populated folds. The overall cross-validated accuracy was found to be 75.1 +- 1.6 % for the more limited background knowledge, and 82.1 +- 1.4 % with additional information.
Publisher: LINKÖPING University Electronic Press
Year: 2000
Available: 2000-12-21
No. of pages: 4
Series: LINKÖPING Electronic Articles in Computer and Information Science
ISSN: 1401-9841

Responsible for this page: Peter Berkesand
Last updated: 2017-02-21