This is the code for our EMNLP 19' work
- Justifying recommendations using distantly-labeled reviews and fined-grained aspects, Jianmo Ni, Jiacheng Li, Julian McAuley, Empirical Methods in Natural Language Processing (EMNLP) 2019.
This repo follows the following hierarchy:
recsys_justification
|---justitication_classifier
|---reference2seq
|---acmlm
We have released a new version of the Amazon review dataset which includes more and newer reviews (i.e. reviews in the range of 2014~2018)! Welcome to play with the dataset and do interesting research!
This is the fine-tuned BERT model that used to train on the labeled justification data. You can simply train the model via run.sh
and conduct inference over any unlabeled data using predict.sh
, after you change the data loader correspondingly in the python file. We also provide a pre-trained model here.
- bert_config.json.
- pytorch_model.bin.
This is the proposed reference2seq model. It contains files for data processing and model training/evaluation.
This is the proposed aspect-conditional masked language model (acmlm).
- 2000 labeled data that includes a binary label for each element discourse unit (EDU) in reviews. You can find it under
justification_classifier
. - Distantly labeled dataset derived from the Yelp and Amazon Clothing dataset. Each line of the json file includes an EDU from a review and the fine-grained aspects convered in it.
- PyTorch=0.4
- pytorch-pretrained-bert
Please cite our paper if you find the data and code helpful, thanks!
@inproceedings{Ni2019RecsysJust
title={Justifying recommendations using distantly-labeled reviews and fined-grained aspects},
author={Jianmo Ni and Jiacheng Li and Julian McAuley},
booktitle={EMNLP},
year={2019}
}