haku: @author Kim, H. / yhteensä: 13
viite: 10 / 13
Tekijä:Kim, H.
Koehler, G.
Otsikko:Theory and practice of decision tree induction
Lehti:Omega
1995 : DEC, VOL. 23:6, p. 637-652
Asiasana:KNOWLEDGE-BASED SYSTEMS
DECISION TREES
THEORIES
Kieli:eng
Tiivistelmä:Induction methods have recently been found to be useful in a wide variety of business related problems, including in the construction of expert systems. Decision tree induction is an important type of inductive learning method. Empirical results have shown that pruning a decision tree sometimes improves its accuracy. In this paper, the authors summarize theoretical results of pruning and illustrate these results with an example. The authors give a sample size sufficient for decision tree induction with pruning based on recently developed learning theory.
SCIMA tietueen numero: 142164
lisää koriin
SCIMA