• DocumentCode
    677858
  • Title

    An Information-Theoretic Approach for Setting the Optimal Number of Decision Trees in Random Forests

  • Author

    Cuzzocrea, Alfredo ; Francis, Shane Leo ; Gaber, Mohamed Medhat

  • Author_Institution
    ICAR, Univ. of Calabria, Rende, Italy
  • fYear
    2013
  • fDate
    13-16 Oct. 2013
  • Firstpage
    1013
  • Lastpage
    1019
  • Abstract
    Data Classification is a process within the Data Mining and Machine Learning field which aims at annotating all instances of a dataset by so-called class labels. This involves in creating a model from a training set of data instances which are already labeled, possibly being this model also used to define the class of data instances which are not classified already. A successful way of performing the classification process is provided by the algorithm Random Forests (RF), which is itself a type of Ensemble-based Classifier. An ensemble-based classifier increases the accuracy of the class label assigned to a data instance by using a set of classifiers that are modeled on different, but possibly overlapping, instance sets, and then combining the so-obtained intermediate classification results. To this end, RF particularly makes use of a number of decision trees to classify an instance, then taking the majority of votes from these trees as the final classifier. The latter one is a critical task of algorithm RF, which heavily impacts on the accuracy of the final classifier. In this paper, we propose a variation of algorithm RF, namely adjusting one of the two parameters that RF takes, the number of decision trees, dependant on a meaningful relation between the dataset predictive power rating and the number of trees itself, with the goal of improving accuracy and performance of the algorithm. This is finally demonstrated by our comprehensive experimental evaluation on several clean datasets.
  • Keywords
    data mining; decision trees; information theory; learning (artificial intelligence); pattern classification; RF algorithm; class labels; data classification; data instances; data mining; dataset predictive power rating; decision trees; ensemble-based classifier; information-theoretic approach; instance classification; intermediate classification results; machine learning field; random forest algorithm; random forests; Accuracy; Classification algorithms; Decision trees; Equations; Mathematical model; Prediction algorithms; Radio frequency; Data Classification; Data Mining; Ensemble Classification; Information Gain; Predictive Power; Random Forests;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Systems, Man, and Cybernetics (SMC), 2013 IEEE International Conference on
  • Conference_Location
    Manchester
  • Type

    conf

  • DOI
    10.1109/SMC.2013.177
  • Filename
    6721930