So here I give my subjective answer.

From my experience everything related to statistics is best solved with R. I have seen this often that in fields related to statistics, R has the most libraries and very often the most state-of-the-art algorithms/methods implemented.

Most programmers like me like to stay with the languages that they know, and learning something new is a trade off, mainly because it's time consuming.

So if learning a new language is a viable option, R is a good choice, in my opinion the best.

Take a brief look at the R libraries related to Bayesian Networks and Bayesian Interference.

Baysian:
http://cran.r-project.org/web/views/Bayesian.html

Graphical Models:
http://cran.r-project.org/web/views/gR.html

Machine Learning:
http://cran.r-project.org/web/views/MachineLearning.html

The main advantages of R:

- easy to install a library: install.packages("RWeka")

- the help format and style is the same for all libraries

- if you know R, it's easy to switch from one library to the next. So it's easy to test all available libraries and then use the one that fits best