# decision tree for significant variables

how can I use decision tree graph to determine the significant variables,I know which one has largest information gain should be in the root of tree which means has small entropy so this is my graph if I want to know which variables are significant how can I interpret What does significant mean to you? At each node, the variable selected it the most significant given the context and assuming that selecting by information gain will actually work (it's not always the case). For example, at node 11, BB is the most significant discriminator given AA>20.

Clearly, AA and BB are the most useful assuming selecting by information gain gives the best way to partition the data. The rest give further refinement. C and N would be next.

What you should be asking is: Should I keep all the nodes?

The answer depends on many things and there is likely no best answer. One way would be by using the total case count of each leaf and merge them.

Not sure how I would do this given your image. It's not really clear what is being shown at the leaves and what 'n' is. Also not sure what 'p' is.

• AA,N,BB these are attributes (variables ) based on this tree I want to say these attributes are significant – user4310282 May 2 '16 at 22:27
• I got that. What's needed is a short description of each element in the image and what is being shown. E.g., p<0.001 means what exactly? 'p' is entropy?, probability? other?. The leaves are showing what? What is n? Number of cases? if the side axis of each leaf is class then how does one get a distribution of classes in a single case (if n==1 means that in node 17).? – DAV May 2 '16 at 22:46
• all of them in this tree are variables non of them are class sorry but I understand p is probability am I right ? because in the formula of Information gain we have E which is entropy and we have p which probability – user4310282 May 2 '16 at 22:54
• That doesn't make sense. Generally, one uses this to discriminate classes. Entropy is the number of bits (or other units) of information learned by receiving a particular value of variable. It's obtained from a calculation using probability. Generally you key off of Info Gain or Mutual Info. I suspect you are using a package and don't understand how it works; what it is intended to do; or what it is telling you. – DAV May 2 '16 at 23:12
• today I studied decision tree and I know calculate by formula and creating tree but I don't know using tree to decide which attributes are significant – user4310282 May 2 '16 at 23:17