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In this work, we propose a new task named DiaASQ, which aims to extract Target-Aspect-Opinion-Sentiment quadruples from the given dialogue.
More details about the task can be found in our paper.
DiaASQ Data
The dataset can be found at:
data/dataset
- jsons_en
- jsons_zh
Requirements
The model is implemented using PyTorch. The versions of the main packages:
python>=3.7
torch>=1.8.1
Install the other required packages:
pip install -r requirements.txt
Code Usage
Train && Evaluate on the Chinese dataset
bash scripts/train_zh.sh
Train && Evaluate on the English dataset
bash scripts/train_en.sh
GPU memory requirements
Dataset
Batch size
GPU Memory
Chinese
2
8GB.
English
2
16GB.
Customized hyperparameters:
You can set hyperparameters in main.py or src/config.yaml, and the former has a higher priority.
Citation
If you use our dataset, please cite the following paper:
@inproceedings{li-2023-diaasq,
title = "{D}ia{ASQ}: A Benchmark of Conversational Aspect-based Sentiment Quadruple Analysis",
author = "Li, Bobo and Fei, Hao and Li, Fei and Wu, Yuhan and Zhang, Jinsong and Wu, Shengqiong and Li, Jingye and
Liu, Yijiang and Liao, Lizi and Chua, Tat-Seng and Ji, Donghong",
booktitle = "Findings of ACL",
year = "2023",
pages = "13449--13467",
}
About
ACL 2023 (Findings) : DiaASQ: A Benchmark of Conversational Aspect-based Sentiment Quadruple Analysis