English

Dynamic Human Evaluation for Relative Model Comparisons

Computation and Language 2022-04-29 v2

Abstract

Collecting human judgements is currently the most reliable evaluation method for natural language generation systems. Automatic metrics have reported flaws when applied to measure quality aspects of generated text and have been shown to correlate poorly with human judgements. However, human evaluation is time and cost-intensive, and we lack consensus on designing and conducting human evaluation experiments. Thus there is a need for streamlined approaches for efficient collection of human judgements when evaluating natural language generation systems. Therefore, we present a dynamic approach to measure the required number of human annotations when evaluating generated outputs in relative comparison settings. We propose an agent-based framework of human evaluation to assess multiple labelling strategies and methods to decide the better model in a simulation and a crowdsourcing case study. The main results indicate that a decision about the superior model can be made with high probability across different labelling strategies, where assigning a single random worker per task requires the least overall labelling effort and thus the least cost.

Keywords

Cite

@article{arxiv.2112.08048,
  title  = {Dynamic Human Evaluation for Relative Model Comparisons},
  author = {Thórhildur Thorleiksdóttir and Cedric Renggli and Nora Hollenstein and Ce Zhang},
  journal= {arXiv preprint arXiv:2112.08048},
  year   = {2022}
}

Comments

accepted at LREC 2022

R2 v1 2026-06-24T08:18:15.776Z