How many levels of the tree should I prune in my decision tree?
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How many levels of the tree should I prune in my decision tree? How can I detect how many levels is appropriate to have?
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MHN
am 20 Feb. 2016
Bearbeitet: MHN
am 20 Feb. 2016
There is no certain number for that. One way is computing resubstitution error for different pruning level and find the place which adding nodes does not significantly increase your accuracy.
load ionosphere
tree = fitctree(X,Y);
er = zeros(max(tree.PruneList),1);
for i = 1:max(tree.PruneList)
ptree = prune(tree,'level',i);
er(i,1) = resubLoss(ptree);
end
plot(max(tree.PruneList):-1:1,er)
for example in the above example, level four is a good choice. There are many methods to find the good pruning (before making the tree or after that), which depends on many factors.
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