Sciweavers

ICARIS
2003
Springer

A Danger Theory Inspired Approach to Web Mining

13 years 9 months ago
A Danger Theory Inspired Approach to Web Mining
Within immunology, new theories are constantly being proposed that challenge current ways of thinking. These include new theories regarding how the immune system responds to pathogenic material. This conceptual paper takes one relatively new such theory: the Danger theory, and explores the relevance of this theory to the application domain of web mining. Central to the idea of Danger theory is that of a context dependant response to invading pathogens. This paper argues that this context dependency could be utilised as powerful metaphor for applications in web mining. An illustrative example adaptive mailbox filter is presented that exploits properties of the immune system, including the Danger theory. This is essentially a dynamical classification task: a task that this paper argues is well suited to the field of artificial immune systems, particularly when drawing inspiration from the Danger theory.
Andrew Secker, Alex Alves Freitas, Jon Timmis
Added 06 Jul 2010
Updated 06 Jul 2010
Type Conference
Year 2003
Where ICARIS
Authors Andrew Secker, Alex Alves Freitas, Jon Timmis
Comments (0)