中文

A Model for Prejudiced Learning in Noisy Environments

适应与自组织系统 2007-05-23 v2 机器学习

摘要

Based on the heuristics that maintaining presumptions can be beneficial in uncertain environments, we propose a set of basic axioms for learning systems to incorporate the concept of prejudice. The simplest, memoryless model of a deterministic learning rule obeying the axioms is constructed, and shown to be equivalent to the logistic map. The system's performance is analysed in an environment in which it is subject to external randomness, weighing learning defectiveness against stability gained. The corresponding random dynamical system with inhomogeneous, additive noise is studied, and shown to exhibit the phenomena of noise induced stability and stochastic bifurcations. The overall results allow for the interpretation that prejudice in uncertain environments entails a considerable portion of stubbornness as a secondary phenomenon.

关键词

引用

@article{arxiv.nlin/0306055,
  title  = {A Model for Prejudiced Learning in Noisy Environments},
  author = {Andreas U. Schmidt},
  journal= {arXiv preprint arXiv:nlin/0306055},
  year   = {2007}
}

备注

21 pages, 11 figures; reduced graphics to slash size, full version on Author's homepage. Minor revisions in text and references, identical to version to be published in Applied Mathematics and Computation