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Optimizing Generative Dialog State Tracker via Cascading Gradient Descent

机译:通过级联梯度下降优化生成对话框状态跟踪器

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For robust spoken dialog management, various dialog state tracking methods have been proposed. Although discriminative models are gaining popularity due to their superior performance, generative models based on the Partially Observable Markov Decision Process model still remain attractive since they provide an integrated framework for dialog state tracking and dialog policy optimization. Although a straightforward way to fit a generative model is to independently train the component probability models, we present a gradient descent algorithm that simultaneously train all the component models. We show that the resulting tracker performs competitively with other top-performing trackers that participated in DSTC2.
机译:为了进行健壮的口语对话管理,已经提出了各种对话状态跟踪方法。尽管判别模型由于其优越的性能而越来越受欢迎,但是基于部分可观察的马尔可夫决策过程模型的生成模型仍然具有吸引力,因为它们为对话状态跟踪和对话策略优化提供了集成的框架。尽管拟合生成模型的直接方法是独立训练组件概率模型,但我们提出了一种梯度下降算法,可同时训练所有组件模型。我们证明,生成的跟踪器与参与DSTC2的其他性能最佳的跟踪器相比具有竞争优势。

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