Comments (1)
Hi,
Thank you for your interest! I had not planned to add additional tutorials at this time; so busy with other things. But hopefully this is helpful:
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Should be fairly straightforward to adapt TarNet for multiple treatments. Simply add more heads and make sure the loss only feeds the head that is being used.
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For adaptation of Dragonnet, check out these comments by Victor Veitch: claudiashi57/dragonnet#4
Feel free to respond, if you have specific questions and I'll do my best to answer.
All the best,
Bernie
from deep-learning-for-causal-inference.
Related Issues (9)
- Why the estimation of CATE is calculated as below? HOT 1
- How does the learning rate have anything to do with the bias? HOT 1
- Is the implementation of the function `pdist2sq` corrected? HOT 1
- Large dataset HOT 4
- Dragonnet tutorial HOT 2
- Tarnet short tutorial error HOT 1
- Tutorial 1 training still get nan loss HOT 4
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from deep-learning-for-causal-inference.