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Precognition in Task-oriented Dialogue Understanding: Posterior Regularization by Future Context

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arxiv 2203.03244 v1 pith:QKWBUE7H submitted 2022-03-07 cs.CL

Precognition in Task-oriented Dialogue Understanding: Posterior Regularization by Future Context

classification cs.CL
keywords dialoguetask-orientedfuturehistoricalposteriorcontextsconversationscurrent
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Task-oriented dialogue systems have become overwhelmingly popular in recent researches. Dialogue understanding is widely used to comprehend users' intent, emotion and dialogue state in task-oriented dialogue systems. Most previous works on such discriminative tasks only models current query or historical conversations. Even if in some work the entire dialogue flow was modeled, it is not suitable for the real-world task-oriented conversations as the future contexts are not visible in such cases. In this paper, we propose to jointly model historical and future information through the posterior regularization method. More specifically, by modeling the current utterance and past contexts as prior, and the entire dialogue flow as posterior, we optimize the KL distance between these distributions to regularize our model during training. And only historical information is used for inference. Extensive experiments on two dialogue datasets validate the effectiveness of our proposed method, achieving superior results compared with all baseline models.

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    KL regularization aligning model predictions with empirical transition patterns improves macro-F1 by 9-42% in next dialogue act prediction on German counselling data and transfers to other datasets.