Yilun Qiu1,
Tianhao Shi2,
Xiaoyan Zhao3,
Fengbin Zhu1,
Yang Zhang1,
Fuli Feng2,
1National University of Singapore, 2University of Science and Technology of China, 3The Chinese University of Hong Kong
This is the implementation of the Difference-aware Embedding-based Personalization (DEP) method proposed in our paper accepted by EMNLP 2025 Main Conference as an ORAL presentation.
- 📋 Catalogue
- ⚙️ Environment Setup
- 📚 Dataset Preprocess
- ⌛️ Quick Start
- 📊 Experimental Results
- 📖 Citation
bash install.sh
Feel free to take a look at install.sh to see what you need to run our project.
The dataset we used in DEP is adapted from Amazon Reviews'23 and DPL.
bash run-create.sh
To evaluate the performance of DEP, simply run the following command:
bash run-eval.sh
The evaluation script will download the model automatically from the Huggingface and test it.
To train the model and select best-performing model, simply run the following commands:
bash run-train.sh
bash run-select.sh
It takes around 3 hours to train the model in a single H100.
If you find our work useful, please kindly cite our paper:
@article{qiu2025latent,
title={Latent Inter-User Difference Modeling for LLM Personalization},
author={Qiu, Yilun and Shi, Tianhao and Zhao, Xiaoyan and Zhu, Fengbin and Zhang, Yang and Feng, Fuli},
journal={arXiv preprint arXiv:2507.20849},
year={2025}
}

