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Open AccessProceedings ArticleDOI

Neural Belief Tracker: Data-Driven Dialogue State Tracking

TLDR
This work proposes a novel Neural Belief Tracking (NBT) framework which overcomes past limitations, matching the performance of state-of-the-art models which rely on hand-crafted semantic lexicons and outperforming them when such lexicons are not provided.
Abstract
One of the core components of modern spoken dialogue systems is the belief tracker, which estimates the user’s goal at every step of the dialogue. However, most current approaches have difficulty scaling to larger, more complex dialogue domains. This is due to their dependency on either: a) Spoken Language Understanding models that require large amounts of annotated training data; or b) hand-crafted lexicons for capturing some of the linguistic variation in users’ language. We propose a novel Neural Belief Tracking (NBT) framework which overcomes these problems by building on recent advances in representation learning. NBT models reason over pre-trained word vectors, learning to compose them into distributed representations of user utterances and dialogue context. Our evaluation on two datasets shows that this approach surpasses past limitations, matching the performance of state-of-the-art models which rely on hand-crafted semantic lexicons and outperforming them when such lexicons are not provided.

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Journal ArticleDOI

Recent advances in deep learning based dialogue systems: a systematic survey

TL;DR: In this article , the authors present a survey of state-of-the-art research outcomes in dialogue systems and analyze them from two angles: model type and system type, from the angle of model type, they discuss the principles, characteristics, and applications of different models that are widely used in dialogue system.
Journal ArticleDOI

Dynamic Reward-Based Dueling Deep Dyna-Q: Robust Policy Learning in Noisy Environments

TL;DR: The DR-D3Q significantly improve the performance of policy learning tasks in noisy environments and takes the DDQ framework as the basic framework for supplementing the limited amount of real user experiences.
Posted Content

Discriminative Deep Dyna-Q: Robust Planning for Dialogue Policy Learning

TL;DR: In this article, a discriminative Deep Dyna-Q (D3Q) approach is proposed to improve the effectiveness and robustness of D3Q by controlling the quality of simulated experience used for planning.
Posted Content

An Efficient Approach to Encoding Context for Spoken Language Understanding.

TL;DR: An efficient approach to encoding context from prior utterances for SLU is proposed that includes a separate recurrent neural network (RNN) based encoding module that accumulates dialogue context to guide the frame parsing sub-tasks and can be shared between SLU and DST.
Proceedings ArticleDOI

Modeling Long Context for Task-Oriented Dialogue State Generation

TL;DR: A multi-task learning model with a simple yet effective utterance tagging technique and a bidirectional language model as an auxiliary task for task-oriented dialogue state generation to solve the problem that the performance of the baseline significantly drops when the input dialogue context sequence is long.
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