2021
DOI: 10.48550/arxiv.2101.09374
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Slot Self-Attentive Dialogue State Tracking

Abstract: An indispensable component in task-oriented dialogue systems is the dialogue state tracker, which keeps track of users' intentions in the course of conversation. The typical approach towards this goal is to fill in multiple pre-defined slots that are essential to complete the task. Although various dialogue state tracking methods have been proposed in recent years, most of them predict the value of each slot separately and fail to consider the correlations among slots. In this paper, we propose a slot self-att… Show more

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Cited by 6 publications
(7 citation statements)
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“…Alternatively to encoding the full dialogue history, previous work has proposed including the state as context (Lei et al, 2018;Heck et al, 2020;Ye et al, 2021b) together with the last agent and user utterance. Recently, Cheng et al (2020) proposed replacing the agent utterance with a formal representation as well.…”
Section: Contextual Semantic Parsingmentioning
confidence: 99%
“…Alternatively to encoding the full dialogue history, previous work has proposed including the state as context (Lei et al, 2018;Heck et al, 2020;Ye et al, 2021b) together with the last agent and user utterance. Recently, Cheng et al (2020) proposed replacing the agent utterance with a formal representation as well.…”
Section: Contextual Semantic Parsingmentioning
confidence: 99%
“…Alternatively to encoding the full dialogue history, previous work has proposed including the state as context (Lei et al, 2018;Heck et al, 2020;Ye et al, 2021b) together with the last agent and user utterance. Recently, Cheng et al (2020b) proposed replacing the agent utterance with a formal representation as well.…”
Section: Contextual Semantic Parsingmentioning
confidence: 99%
“…Recently, to further examine the generalization abilities, large scale cross-domain datasets have been proposed (Budzianowski et al, 2018;Zang et al, 2020;Eric et al, 2019;Rastogi et al, 2020b). Classification-based models (Ye et al, 2021; pick the candidate from the oracle list of possible slot values. The assumption of the full access of the schema makes them have limited generalization abilities.…”
Section: Multi-domain Dialogue State Trackingmentioning
confidence: 99%
“…There are two broad paradigms of DST models, classification-based and generation-based models, where the major difference is how the slot value is inferred. In classification-based models (Ye et al, 2021;, the prediction of a slot value is restricted to a fixed set for each slot, and non-categorical slots are constrained to values observed in the training data. In contrast, generationbased models decode slot values sequentially (token by token) based on the dialogue context, with the potential of recovering unseen values.…”
Section: Introductionmentioning
confidence: 99%