Ordering and finding the best of K > 2 supervised learning algorithms.

IEEE Trans Pattern Anal Mach Intell

Department of Computer Engineering, Boğaziçi University, Istanbul, Turkey.

Published: March 2006

AI Article Synopsis

  • The study introduces the MultiTest algorithm, which aims to identify the supervised learning algorithm with the lowest expected error by combining pairwise statistical tests and prior preferences.
  • The methodology is framed in graph-theoretic terms, allowing for a systematic ordering of algorithms based on performance and complexity.
  • Simulation results show the effectiveness of MultiTest across five classification algorithms and suggest that it can be adapted for regression and other loss functions.

Article Abstract

Given a data set and a number of supervised learning algorithms, we would like to find the algorithm with the smallest expected error. Existing pairwise tests allow a comparison of two algorithms only; range tests and ANOVA check whether multiple algorithms have the same expected error and cannot be used for finding the smallest. We propose a methodology, the MultiTest algorithm, whereby we order supervised learning algorithms taking into account 1) the result of pairwise statistical tests on expected error (what the data tells us), and 2) our prior preferences, e.g., due to complexity. We define the problem in graph-theoretic terms and propose an algorithm to find the "best" learning algorithm in terms of these two criteria, or in the more general case, order learning algorithms in terms of their "goodness." Simulation results using five classification algorithms on 30 data sets indicate the utility of the method. Our proposed method can be generalized to regression and other loss functions by using a suitable pairwise test.

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Source
http://dx.doi.org/10.1109/TPAMI.2006.61DOI Listing

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