P. Perner et al., A comparison between neural networks and decision trees based on data fromindustrial radiographic testing, PATT REC L, 22(1), 2001, pp. 47-54
In this paper, we are empirically comparing the performance of neural nets
and decision trees based on a data set for the detection of defects in weld
ing seams. This data set was created by image feature extraction procedures
working on digitized X-ray films. We introduce a framework for distinguish
ing classification methods. We found that more detailed analysis of the err
or rate is necessary in order to judge the performance of the learning and
classification method. However, the error rate cannot be the only criterion
for comparing between the different learning methods. This is a more compl
ex selection process that involves more criteria that we are describing in
this paper. (C) 2001 Elsevier Science B.V. All rights reserved.