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Beyond User Self-Reported Likert Scale Ratings: A Comparison Model for Automatic Dialog Evaluation

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arxiv 2005.10716 v2 pith:FZLWJLEP submitted 2020-05-21 cs.CL cs.AIcs.LG

Beyond User Self-Reported Likert Scale Ratings: A Comparison Model for Automatic Dialog Evaluation

classification cs.CL cs.AIcs.LG
keywords dialogevaluationautomaticcomparisonself-reportedusermodelcmade
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Open Domain dialog system evaluation is one of the most important challenges in dialog research. Existing automatic evaluation metrics, such as BLEU are mostly reference-based. They calculate the difference between the generated response and a limited number of available references. Likert-score based self-reported user rating is widely adopted by social conversational systems, such as Amazon Alexa Prize chatbots. However, self-reported user rating suffers from bias and variance among different users. To alleviate this problem, we formulate dialog evaluation as a comparison task. We also propose an automatic evaluation model CMADE (Comparison Model for Automatic Dialog Evaluation) that automatically cleans self-reported user ratings as it trains on them. Specifically, we first use a self-supervised method to learn better dialog feature representation, and then use KNN and Shapley to remove confusing samples. Our experiments show that CMADE achieves 89.2% accuracy in the dialog comparison task.

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