Quantification via Probability Estimators

  • Authors:
  • Antonio Bella;Cesar Ferri;Jose Hernandez-Orallo;Maria Jose Ramirez-Quintana

  • Affiliations:
  • -;-;-;-

  • Venue:
  • ICDM '10 Proceedings of the 2010 IEEE International Conference on Data Mining
  • Year:
  • 2010

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Abstract

Quantification is the name given to a novel machine learning task which deals with correctly estimating the number of elements of one class in a set of examples. The output of a quantifier is a real value, since training instances are the same as a classification problem, a natural approach is to train a classifier and to derive a quantifier from it. Some previous works have shown that just classifying the instances and counting the examples belonging to the class of interest classify count typically yields bad quantifiers, especially when the class distribution may vary between training and test. Hence, adjusted versions of classify count have been developed by using modified thresholds. However, previous works have explicitly discarded (without a deep analysis) any possible approach based on the probability estimations of the classifier. In this paper, we present a method based on averaging the probability estimations of a classifier with a very simple scaling that does perform reasonably well, showing that probability estimators for quantification capture a richer view of the problem than methods based on a threshold.