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Multi-Domain Joint Semantic Frame Parsing using Bi-directional RNN-LSTM

机译:使用双向RNN-LSTM进行多域联合语义帧解析

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Sequence-to-sequence deep learning has recently emerged as a new paradigm in supervised learning for spoken language understanding. However, most of the previous studies explored this framework for building single domain models for each task, such as slot filling or domain classification, comparing deep learning based approaches with conventional ones like conditional random fields. This paper proposes a holistic multi-domain, multi-task (i.e. slot filling, domain and intent detection) modeling approach to estimate complete semantic frames for all user utterances addressed to a conversational system, demonstrating the distinctive power of deep learning methods, namely bi-directional recurrent neural network (RNN) with long-short term memory (LSTM) cells (RNN-LSTM) to handle such complexity. The contributions of the presented work are three-fold: (i) we propose an RNN-LSTM architecture for joint modeling of slot filling, intent determination, and domain classification; (ii) we build a joint multi-domain model enabling multi-task deep learning where the data from each domain reinforces each other; (iii) we investigate alternative architectures for modeling lexical context in spoken language understanding. In addition to the simplicity of the single model framework, experimental results show the power of such an approach on Microsoft Cortana real user data over alternative methods based on single domain/task deep learning.
机译:序列到序列的深度学习最近被出现为用于口语理解的监督学习的新范式。然而,大多数先前的研究探索了该框架,用于为每个任务构建单个域模型,例如插槽填充或域分类,比较基于Sould Learth的方法与传统的方法,如条件随机字段。本文提出了整体多域,多任务(即时隙填充,域和意图检测)建模方法来估计所有用户话语的完整语义帧,用于讨论对话系统的所有用户话语,展示了深度学习方法的独特力量,即Bi - 具有长短短期记忆(LSTM)细胞(RNN-LSTM)的转发复发性神经网络(RNN)以处理这些复杂性。所提出的工作的贡献是三倍:(i)我们提出了一个RNN-LSTM架构,用于联合建模的插槽填充,意图确定和域分类; (ii)我们构建一个联合多域模型,实现了多任务深度学习,其中每个域的数据相互加强; (iii)我们调查替代架构,以便以口语理解建模词汇上下文。除了单一模型框架的简单之外,实验结果表明,根据单个域/任务深度学习的替代方法,在Microsoft Cortana真实用户数据上实现了这种方法的力量。

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