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I am a student and currently doing a research internship at the Technical University of Munich and trying to implement a Stochastic Block Model (SBM). I tried to understand the various functions and classes using the karate club toy example from the edward1 publication. However, I prefer to use edward2 and thus have to port the code a little bit. Also, I have seen that some other guys have opened issues for the edward1 release detailing improvements to the stock example provided in edward1, especially these ones:
So I was wondering whether there might be an edward2 compatible and updated version of the SBM realization, in particular with some more documentation/comments. That would be really helpful, especially as I'm quite new to edward and some tensorflow functions. I really think, that the framework provides many powerful stochastic concepts.
Thank you!
The text was updated successfully, but these errors were encountered:
Hello!
I am a student and currently doing a research internship at the Technical University of Munich and trying to implement a Stochastic Block Model (SBM). I tried to understand the various functions and classes using the karate club toy example from the edward1 publication. However, I prefer to use edward2 and thus have to port the code a little bit. Also, I have seen that some other guys have opened issues for the edward1 release detailing improvements to the stock example provided in edward1, especially these ones:
Stochastic Block Model #57
Implement a stochastic block model example #715
Added Stochastic Block Model Example (Jupyter Notebook) #308
So I was wondering whether there might be an edward2 compatible and updated version of the SBM realization, in particular with some more documentation/comments. That would be really helpful, especially as I'm quite new to edward and some tensorflow functions. I really think, that the framework provides many powerful stochastic concepts.
Thank you!
The text was updated successfully, but these errors were encountered: