02/02/2021

Perception Score: A Learned Metric for Open-ended Text Generation Evaluation

Jing Gu, Qingyang Wu, Zhou Yu

Keywords:

Abstract: Automatic evaluation for open-ended natural language generation tasks remains a challenge. We propose a learned evaluation metric: Perception Score. It utilizes a pre-trained model and considers context information for conditional generation. Perception Score assigns a holistic score along with the uncertainty measurement. We conduct experiments on three open-ended conditional generation tasks and two open-ended unconditional generation tasks. Perception Score achieves state-of-the-art results on all the tasks consistently in terms of correlation with human evaluation scores.

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