Better than Random: Reliable NLG Human Evaluation with Constrained Active Sampling
Abstract
Human evaluation is viewed as a reliable evaluation method for NLG which is expensive and time-consuming. To save labor and costs, researchers usually perform human evaluation on a small subset of data sampled from the whole dataset in practice. However, different selection subsets will lead to different rankings of the systems. To give a more correct inter-system ranking and make the gold standard human evaluation more reliable, we propose a Constrained Active Sampling Framework (CASF) for reliable human judgment. CASF operates through a Learner, a Systematic Sampler and a Constrained Controller to select representative samples for getting a more correct inter-system ranking.Experiment results on 137 real NLG evaluation setups with 44 human evaluation metrics across 16 datasets and 5 NLG tasks demonstrate CASF receives 93.18% top-ranked system recognition accuracy and ranks first or ranks second on 90.91% of the human metrics with 0.83 overall inter-system ranking Kendall correlation.Code and data are publicly available online.
Cite
@article{arxiv.2406.07967,
title = {Better than Random: Reliable NLG Human Evaluation with Constrained Active Sampling},
author = {Jie Ruan and Xiao Pu and Mingqi Gao and Xiaojun Wan and Yuesheng Zhu},
journal= {arXiv preprint arXiv:2406.07967},
year = {2024}
}
Comments
With Appendix