A Recommender System based on Idiotypic Artificial Immune Networks

Authors: Cayzer, Steve1; Aickelin, Uwe2

Source: Journal of Mathematical Modelling and Algorithms, Volume 4, Number 2, June 2005 , pp. 181-198(18)

Publisher: Springer

Abstract:

The immune system is a complex biological system with a highly distributed, adaptive and self-organising nature. This paper presents an Artificial Immune System (AIS) that exploits some of these characteristics and is applied to the task of film recommendation by Collaborative Filtering (CF). Natural evolution and in particular the immune system have not been designed for classical optimisation. However, for this problem, we are not interested in finding a single optimum. Rather we intend to identify a sub-set of good matches on which recommendations can be based. It is our hypothesis that an AIS built on two central aspects of the biological immune system will be an ideal candidate to achieve this: Antigen–antibody interaction for matching and idiotypic antibody–antibody interaction for diversity. Computational results are presented in support of this conjecture and compared to those found by other CF techniques.

Keywords: artificial immune systems; idiotypic networks

Document Type: Research article

DOI: 10.1007/s10852-004-5336-7

Affiliations: 1: Hewlett-Packard Laboratories, Filton Road, Bristol, BS12 6QZ, UK, Email: steve.cayzer@hp.com 2: School of Computer Science, University of Nottingham, NG8 1BB, UK, Email: uxa@cs.nott.ac.uk

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