A Transformer-Based User Satisfaction Prediction for Proactive Interaction Mechanism in DuerOS
Wei Shen, Xiaonan He, Chuheng Zhang, Xuyun Zhang, Jian XIe

TL;DR
This paper introduces a transformer-based model for predicting user satisfaction in DuerOS, enabling proactive clarification questions to improve user experience in large-scale commercial dialogue systems.
Contribution
It proposes a novel pipeline using weak labels and transformer models to predict user satisfaction, addressing limitations of previous handcrafted feature-based methods.
Findings
Achieved 19% relative improvement in satisfaction prediction accuracy.
Realized 2.3% relative enhancement in user experience metrics.
Successfully deployed and evaluated on a large-scale commercial system.
Abstract
Recently, spoken dialogue systems have been widely deployed in a variety of applications, serving a huge number of end-users. A common issue is that the errors resulting from noisy utterances, semantic misunderstandings, or lack of knowledge make it hard for a real system to respond properly, possibly leading to an unsatisfactory user experience. To avoid such a case, we consider a proactive interaction mechanism where the system predicts the user satisfaction with the candidate response before giving it to the user. If the user is not likely to be satisfied according to the prediction, the system will ask the user a suitable question to determine the real intent of the user instead of providing the response directly. With such an interaction with the user, the system can give a better response to the user. Previous models that predict the user satisfaction are not applicable to DuerOS…
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Taxonomy
TopicsSpeech and dialogue systems · Recommender Systems and Techniques · Topic Modeling
