m4urin/temporal-causal-discovery

Researching causal relationships in time series data using Temporal Convolutional Networks (TCNs) combined with attention mechanisms. This approach aims to identify complex temporal interactions. Additionally, we're incorporating uncertainty quantification to enhance the reliability of our causal predictions.

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Jupyter Notebook

License

Apache-2.0

Last pushed

Jun 14, 2024

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