CLLGFeb 24, 2025

Correlating and Predicting Human Evaluations of Language Models from Natural Language Processing Benchmarks

arXiv:2502.18339v13 citationsh-index: 29
Originality Incremental advance
AI Analysis

This work addresses the problem of expensive and noisy human evaluations for conversational AI by showing how classic benchmarks can be leveraged, offering a practical solution for researchers and developers.

The study found that most NLP benchmarks strongly correlate with human evaluations of language models, indicating that automated metrics can reliably predict human preferences, with NLP scores accurately predicting evaluations across model scales to reduce annotation costs.

The explosion of high-performing conversational language models (LMs) has spurred a shift from classic natural language processing (NLP) benchmarks to expensive, time-consuming and noisy human evaluations - yet the relationship between these two evaluation strategies remains hazy. In this paper, we conduct a large-scale study of four Chat Llama 2 models, comparing their performance on 160 standard NLP benchmarks (e.g., MMLU, ARC, BIG-Bench Hard) against extensive human preferences on more than 11k single-turn and 2k multi-turn dialogues from over 2k human annotators. Our findings are striking: most NLP benchmarks strongly correlate with human evaluations, suggesting that cheaper, automated metrics can serve as surprisingly reliable predictors of human preferences. Three human evaluations, such as adversarial dishonesty and safety, are anticorrelated with NLP benchmarks, while two are uncorrelated. Moreover, through overparameterized linear regressions, we show that NLP scores can accurately predict human evaluations across different model scales, offering a path to reduce costly human annotation without sacrificing rigor. Overall, our results affirm the continued value of classic benchmarks and illuminate how to harness them to anticipate real-world user satisfaction - pointing to how NLP benchmarks can be leveraged to meet evaluation needs of our new era of conversational AI.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes