# PinSage model NOTE: this version is not using NodeFlow yet. This example only work with Python 3.6+ First, download and extract from https://data.dgl.ai/dataset/ml-1m.tar.gz One can then run the following to train PinSage on MovieLens-1M: ```bash python3 main.py --opt Adam --lr 1e-3 ``` One can also incorporate user and movie features into training: ```bash python3 main.py --opt Adam --lr 1e-3 --use-feature ``` Currently, performance of PinSage on MovieLens-1M has the best mean reciprocal rank of 0.032298±0.048078 on validation (and 0.033695±0.051963 on test set for the same model). The Implicit Factorization Model from Spotlight has a 0.034572±0.041653 on the test set.