This release contains the source code and dataset for the manuscript submitted to IEEE Transactions on Big Data.
Paper Title: ASH: A Robust Automated Evaluation Framework for Creative Text Generation in Cuisine Transfer Tasks
Authors: Hoonick Lee, Mogan Gim, Donghyeon Park, Donghee Choi, Jaewoo Kang
Contents
- Code: Implementation of the ASH evaluation framework, prompt engineering strategies, and meta-evaluation scripts.
- Data:
data/generation: 4,800 LLM-generated recipes across 40 cuisines.data/human: Human ground truth annotations for validation.- Note: Full evaluation logs (>800MB) are excluded due to size constraints but can be reproduced using the provided scripts.
Usage
Please refer to the README.md for installation and execution instructions.