If I understand it right, both use Bayes Theorem to generate an acyclic graph and calculate percentages based on functions applied at every node.
What is the difference?
If I understand it right, both use Bayes Theorem to generate an acyclic graph and calculate percentages based on functions applied at every node. What is the difference? 


One simple and fundamental difference is Acyclic Graph != Tree For example, a>b<c is not a tree (it has two roots), but it is an acyclic graph. I am not well versed in decision trees, but I am well versed in Bayesian Networks. Here are some things that you can do with Bayesian Networks that I am not sure if you can do with a decision tree. Researching how to do these things with a decision tree may reveal interesting differences.


