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Intent Detection and Slots Prompt in a Closed-Domain Chatbot

机译:封闭域聊天机器人中的意图检测和插槽提示

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In this paper, we introduce a methodology for predicting intent and slots of a query for a chatbot that answers career-related queries. We take a multi-staged approach where both the processes (intent-classification and slot-tagging) inform each oth-er's decision-making in different stages. The model breaks down the problem into stages, solving one problem at a time and passing on relevant results of the current stage to the next, thereby reducing search space for subsequent stages, and eventually making classification and tagging more viable after each stage. We also observe that relaxing rules for a fuzzy entity-matching in slot-tagging after each stage (by maintaining a separate Named Entity Tagger per stage) helps us improve performance, although at a slight cost of false-positives. Our model has achieved state-of-the-art performance with F1-score of 77.63% for intent-classification and 82.24% for slot-tagging on our dataset that we would publicly release along with the paper.
机译:在本文中,我们介绍了一种用于预测回答与职业相关的查询的聊天机器人的查询意图和广告位的方法。我们采用多阶段方法,其中两个过程(意图分类和时段标记)会告知每个人在不同阶段的决策。该模型将问题分解为多个阶段,一次解决一个问题,并将当前阶段的相关结果传递给下一个阶段,从而减少了后续阶段的搜索空间,并最终使分类和标记在每个阶段之后都更加可行。我们还观察到,在每个阶段之后通过在插槽标记中放宽对模糊实体匹配的放宽规则(通过在每个阶段维护一个单独的命名实体标记),可以帮助我们提高性能,尽管假阳性的代价很小。我们的模型取得了最先进的性能,在我们的数据集上与意图一起发布的F1分数在意图分类方面为77.63%,在时隙标记方面为82.24%。

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