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DETM

This is code that accompanies the paper titled "The Dynamic Embedded Topic Model" by Adji B. Dieng, Francisco J. R. Ruiz, and David M. Blei. (Arxiv link: https://arxiv.org/abs/1907.05545).

The DETM is an extension of the Embedded Topic Model (https://arxiv.org/abs/1907.04907) to corpora with temporal dependencies. The DETM models each word with a categorical distribution whose parameter is given by the inner product between the word embedding and an embedding representation of its assigned topic at a particular time step. The word embeddings allow the DETM to generalize to rare words. The DETM learns smooth topic trajectories by defining a random walk prior over the embeddings of the topics. The DETM is fit using structured amortized variational inference with LSTMs.

Dependencies

  • python 3.6.7
  • pytorch 1.1.0

Datasets

The pre-processed UN and ACL datasets can be found below:

The pre-fitted embeddings can be found below:

All the scripts to pre-process a dataset can be found in the folder 'scripts'.

Example

To run the DETM on the ACL dataset you can run the command below. You can specify different values for other arguments, peek at the arguments list in main.py.

python main.py --dataset acl --data_path PATH_TO_DATA --emb_path PATH_TO_EMBEDDINGS --min_df 10 --num_topics 50 --lr 0.0001 --epochs 1000 --mode train

Citation

@article{dieng2019dynamic,
  title={The Dynamic Embedded Topic Model},
  author={Dieng, Adji B and Ruiz, Francisco JR and Blei, David M},
  journal={arXiv preprint arXiv:1907.05545},
  year={2019}
}