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arxiv 2012.14666 v1 pith:3H2GJRDX submitted 2020-12-29 cs.CL cs.AI

RADDLE: An Evaluation Benchmark and Analysis Platform for Robust Task-oriented Dialog Systems

classification cs.CL cs.AI
keywords raddledialogdomainsmodelssystemstraininganalysisbenchmark
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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For task-oriented dialog systems to be maximally useful, it must be able to process conversations in a way that is (1) generalizable with a small number of training examples for new task domains, and (2) robust to user input in various styles, modalities or domains. In pursuit of these goals, we introduce the RADDLE benchmark, a collection of corpora and tools for evaluating the performance of models across a diverse set of domains. By including tasks with limited training data, RADDLE is designed to favor and encourage models with a strong generalization ability. RADDLE also includes a diagnostic checklist that facilitates detailed robustness analysis in aspects such as language variations, speech errors, unseen entities, and out-of-domain utterances. We evaluate recent state-of-the-art systems based on pre-training and fine-tuning, and find that grounded pre-training on heterogeneous dialog corpora performs better than training a separate model per domain. Overall, existing models are less than satisfactory in robustness evaluation, which suggests opportunities for future improvement.

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