DocumentCode :
618027
Title :
Evolved decision trees as conformal predictors
Author :
Johansson, Ulf ; Konig, Rikard ; Lofstrom, Tuve ; Bostrom, Henrik
Author_Institution :
Sch. of Bus. & IT, Univ. of Boras, Boras, Sweden
fYear :
2013
fDate :
20-23 June 2013
Firstpage :
1794
Lastpage :
1801
Abstract :
In conformal prediction, predictive models output sets of predictions with a bound on the error rate. In classification, this translates to that the probability of excluding the correct class is lower than a predefined significance level, in the long run. Since the error rate is guaranteed, the most important criterion for conformal predictors is efficiency. Efficient conformal predictors minimize the number of elements in the output prediction sets, thus producing more informative predictions. This paper presents one of the first comprehensive studies where evolutionary algorithms are used to build conformal predictors. More specifically, decision trees evolved using genetic programming are evaluated as conformal predictors. In the experiments, the evolved trees are compared to decision trees induced using standard machine learning techniques on 33 publicly available benchmark data sets, with regard to predictive performance and efficiency. The results show that the evolved trees are generally more accurate, and the corresponding conformal predictors more efficient, than their induced counterparts. One important result is that the probability estimates of decision trees when used as conformal predictors should be smoothed, here using the Laplace correction. Finally, using the more discriminating Brier score instead of accuracy as the optimization criterion produced the most efficient conformal predictions.
Keywords :
decision trees; genetic algorithms; learning (artificial intelligence); pattern classification; probability; Brier score; Laplace correction; classification; conformal prediction; conformal predictors; decision trees; error rate; evolutionary algorithms; genetic programming; optimization criterion; predictive models; probability estimates; publicly available benchmark data sets; standard machine learning techniques; Accuracy; Calibration; Decision trees; Iterative closest point algorithm; Predictive models; Standards; Training;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Evolutionary Computation (CEC), 2013 IEEE Congress on
Conference_Location :
Cancun
Print_ISBN :
978-1-4799-0453-2
Electronic_ISBN :
978-1-4799-0452-5
Type :
conf
DOI :
10.1109/CEC.2013.6557778
Filename :
6557778
Link To Document :
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