Autoencoding Variational Inference for Topic Models
UPDATE
Pyro added a prodlDA tutorial: https://pyro.ai/examples/prodlda.html
AVITM is now available in OCTIS at https://github.com/MIND-Lab/OCTIS
Please consider using OCTIS and Pyro versions as they are more upto date.
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As pointed out by @govg, this code depends on a slightly older version of TF. I will try to update it soon, in the meantime you can look up a quick fix here for working with newer version of TF or (3) and (2) below if you'd rather prefer Keras or PyTorch.
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@hyqneuron recently implemented a PyTorch version of AVITM. So check out his repo.
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Added
topic_prop
method to both the models. Softmax the output of this method to get the topic proportions.
Code for the ICLR 2017 paper: Autoencoding Variational Inference for Topic Models
Arxiv
>OpenReview
>This is a tensorflow implementation for both of the Autoencoded Topic Models mentioned in the paper.
To run the prodLDA
model in the 20Newgroup
dataset:
CUDA_VISIBLE_DEVICES=0 python run.py -m prodlda -f 100 -s 100 -t 50 -b 200 -r 0.002 -e 200
Similarly for NVLDA
:
CUDA_VISIBLE_DEVICES=0 python run.py -m nvlda -f 100 -s 100 -t 50 -b 200 -r 0.005 -e 300
Check run.py
for other options.