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Designing Precise and Robust Dialogue Response Evaluators

Tianyu Zhao, Divesh Lala, Tatsuya Kawahara

202041 citationsDOIOpen Access PDF

Abstract

Automatic dialogue response evaluator has been proposed as an alternative to automated metrics and human evaluation. However, existing automatic evaluators achieve only moderate correlation with human judgement and they are not robust. In this work, we propose to build a reference-free evaluator and exploit the power of semi-supervised training and pretrained (masked) language models. Experimental results demonstrate that the proposed evaluator achieves a strong correlation (> 0.6) with human judgement and generalizes robustly to diverse responses and corpora. We open-source the code and data in https://github.com/ ZHAOTING/dialog-processing.

Topics & Concepts

Computer scienceJudgementExploitDialog boxArtificial intelligenceSource codeMachine learningCode (set theory)Natural language processingProgramming languageWorld Wide WebSet (abstract data type)LawComputer securityPolitical scienceTopic ModelingSpeech and dialogue systemsNatural Language Processing Techniques
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