Simple LLM Prompting Is State-of-the-art For Robust And Multilingual Dialogue Evaluation · The Large Language Model Bible Contribute to LLM-Bible

Simple LLM Prompting Is State-of-the-art For Robust And Multilingual Dialogue Evaluation

Mendonça John, Pereira Patrícia, Moniz Helena, Carvalho João Paulo, Lavie Alon, Trancoso Isabel. Arxiv 2023

[Paper]    
Prompting Reinforcement Learning Security Tools

Despite significant research effort in the development of automatic dialogue evaluation metrics, little thought is given to evaluating dialogues other than in English. At the same time, ensuring metrics are invariant to semantically similar responses is also an overlooked topic. In order to achieve the desired properties of robustness and multilinguality for dialogue evaluation metrics, we propose a novel framework that takes advantage of the strengths of current evaluation models with the newly-established paradigm of prompting Large Language Models (LLMs). Empirical results show our framework achieves state of the art results in terms of mean Spearman correlation scores across several benchmarks and ranks first place on both the Robust and Multilingual tasks of the DSTC11 Track 4 “Automatic Evaluation Metrics for Open-Domain Dialogue Systems”, proving the evaluation capabilities of prompted LLMs.

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