Note that I use the two sub datasets provided by Xiangnan's repo. Another pytorch NCF implementaion can be found at this repo.
I utilized a factor number 32, and posted the results in the NCF paper and this implementation here. Since there is no specific numbers in their paper, I found this implementation achieved a better performance than the original curve. Moreover, the batch_size is not very sensitive with the final model performance.
Models | MovieLens HR@10 | MovieLens NDCG@10 | Pinterest HR@10 | Pinterest NDCG@10 |
---|---|---|---|---|
pytorch-BPR | 0.700 | 0.418 | 0.877 | 0.551 |
* python==3.6
* pandas==0.24.2
* numpy==1.16.2
* pytorch==1.0.1
* tensorboardX==1.6 (mainly useful when you want to visulize the loss, see https://github.com/lanpa/tensorboard-pytorch)
python main.py --factor_num=16 --lamda=0.001