Chandelier Decision Tree

  • Shan Suthaharan
Part of the Integrated Series in Information Systems book series (ISIS, volume 36)

Abstract

This chapter proposes two new techniques called the chandelier decision tree and the random chandelier. This pair of techniques is similar to the well-known pair of techniques, the decision tree and the random forest. The chapter also presents a previously proposed algorithm called the unit circle algorithm (UCA) and proposes a family of UCA-based algorithms called the unit circle machine (UCM), unit ring algorithm (URA), and unit ring machine (URM). The unit circle algorithm integrates a normalization process to define a unit circle domain, and thus the other proposed algorithms adopt the phrase “unit circle.” The chandelier decision tree and the random chandelier use the unit ring machine to build the chandelier trees.

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Copyright information

© Springer Science+Business Media New York 2016

Authors and Affiliations

  • Shan Suthaharan
    • 1
  1. 1.Department of Computer ScienceUNC GreensboroGreensboroUSA

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