Towards Effective Automatic Evaluation of Generated Reflections for Motivational Interviewing

Reforgiato Recupero D.
;
Riboni D.
2023-01-01

Abstract

Reflection is an essential counselling skill where the therapist communicates their understanding of the client’s words to the client. Recent studies have explored language-model-based reflection generation, but automatic quality evaluation of generated reflections remains under-explored. In this work, we investigate automatic evaluation on one fundamental quality aspect: coherence and context-consistency. We test a range of automatic evaluators/metrics and examine their correlations with expert judgement. We find that large language models (LLMs) as zero-shot evaluators achieve the best performance, while other metrics correlate poorly with expert judgement. We also demonstrate that diverse LLM-as-evaluator configurations need to be explored to find the best setup.
2023
9798400703218
automatic evaluation; motivational interviewing; reflection
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