Entropy (Aug 2015)

Convergence of a Fixed-Point Minimum Error Entropy Algorithm

  • Yu Zhang,
  • Badong Chen,
  • Xi Liu,
  • Zejian Yuan,
  • Jose C. Principe

DOI
https://doi.org/10.3390/e17085549
Journal volume & issue
Vol. 17, no. 8
pp. 5549 – 5560

Abstract

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The minimum error entropy (MEE) criterion is an important learning criterion in information theoretical learning (ITL). However, the MEE solution cannot be obtained in closed form even for a simple linear regression problem, and one has to search it, usually, in an iterative manner. The fixed-point iteration is an efficient way to solve the MEE solution. In this work, we study a fixed-point MEE algorithm for linear regression, and our focus is mainly on the convergence issue. We provide a sufficient condition (although a little loose) that guarantees the convergence of the fixed-point MEE algorithm. An illustrative example is also presented.

Keywords