• Corpus ID: 17988633

Solving Multiclass Classification Problems by Genetic Programming

  title={Solving Multiclass Classification Problems by Genetic Programming},
  author={Stephan M. Winkler and Michael Affenzeller and Stefan Wagner},
  journal={Proceedings of the IEEE},
A mirror assembly is provided adapted for use with a vehicle and includes a mirror housing, a mirror, a support bracket for mounting the mirror housing on an associated vehicle and an expandable ball and socket arrangement associated with the mirror housing and support bracket for selectively retaining the mirror in a desired rotational position relative to the vehicle. The ball and socket arrangement comprises a partially spherical socket formed in the mirror housing, a thin-walled socket… 

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