The recursive and hierarchical structure of full rooted trees is used in various areas such as data compression, image processing, and machine learning. In most of these studies, the full rooted tree is not a random variable. It causes a problem of model selection to avoid overfitting. One method to solve it is to assume a prior distribution on the full rooted trees. It enables us to avoid overfitting based on the Bayes decision theory. For example, by assigning a low prior probability on a complex model, the MAP estimator prevents the overfitting. Further, we can avoid it by averaging all the models weighted by their posteriors. In this paper, we propose a probability distribution on a set of full rooted trees. Its parametric representation is well suited to calculate the properties of our distribution by recursive functions: the mode, the expectation, the posterior distribution, etc. Although some previous studies have proposed such distributions, they are for specific applications. Therefore, we extract the mathematically essential part of them and derive new generalized methods to calculate the expectation, the posterior distribution, etc.