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Hierarchical Recurrent Attention Networks for Context-Aware Education Chatbots

机译:语境感知教育的分层经常性注意网络聊天网络

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We propose a hierarchical network architecture for context-aware dialogue systems, that chooses which parts of the past conversation to focus on through a two-layer attention mechanism. The model can encode the parts of the historical dialog that are relevant to the current question to reason about the required response. We first assess the performance of our model on the Dialog bAbI task that involves a restaurant reservation system, where the goal is to book a table at a restaurant. We then train our model on a new hand-crafted dialogue data set, consisting of 7500 dialogues, to inform prospective students about the Data Science master program at University of Lyon.
机译:我们提出了一种用于上下文的网络架构,用于了解对话系统,可选择过去对话的哪些部分以通过双层注意机制专注于。该模型可以编码与当前问题相关的历史对话框的部分,以推理所需的响应。我们首先评估我们模型对对话Babi任务的表现,涉及餐厅预订系统,目标是在餐厅预订桌子。然后,我们将我们的型号培训我们的模型,该模型由7500个对话组成,通知潜在学生在里昂大学的数据科学硕士计划。

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