Individual Treatment Effect Estimation

Related tags

Deep Learningcape
Overview

CAPE

Individual Treatment Effect Estimation

Run CAPE

python train_causal.py --loop 10 -m cape_cau -d NI --i_t 1

Run a baseline model

python train_causal_baselines.py --loop 10 -m cfrmmd -d NI --i_t 1

Event Forecasting with Causal information

Run CAPE

python train_event_with_causal.py --loop 10 -m cape -d NI 

Add noise to data

python train_event_with_causal.py --loop 10 -m cape -d NI --train_noise 0.1
Owner
S. Deng
S. Deng
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