vote up 2 vote down star
2

I have a datasets with information like age, city, age of children, ... and a result (confirm, accept).

To help modelisation of "workflow", I want to create automatically a decision tree based on previous datasets.

I have take a look at http://en.wikipedia.org/wiki/Decision_tree_learning and I know that the problem is clearly not obvious.

I just want to have advice on some algorithm or some libs on this subject what can help me in the contruction of a decision tree based on samples.

Thank you.

flag

"modelisation of workflow" confuses me. What exactly do you want to achieve? Automatically sort new datasets or check whether existing datasets have the right result or what? – Aaron Digulla Oct 13 at 12:38
We have some datasets with legal issues. Some legal case will be rejected only if a personn have an age below 18. This is an obvious example but we want to recreate automatically a decision tree by previous judgement to make a model of the law to edit and refine it after. This is the main reason we don't want a neural network because we can't retrace and proove choices – X-Blaster Oct 14 at 11:46

1 Answer

vote up 4 vote down check

You should take a look at Weka, a free Java-based supervised learning suite.

After converting your data into Weka's simple text-based .arff format, you should be able to use the GUI or command-line interface to train and test a variety of different classifiers on that data, including:

  • decision trees
  • neural networks
  • rule-based systems
  • support vector machines (SVMs)
  • various types of regression

Experimenting with this interface should allow you to easily try different classifiers and training parameters to determine which ones perform the best on your data.

You can also use an API to integrate Weka into your own source code.

link|flag

Your Answer

Get an OpenID
or

Not the answer you're looking for? Browse other questions tagged or ask your own question.