训练端到端对话系统与Ubuntu对话语料库

Q1 Arts and Humanities Dialogue and Discourse Pub Date : 2017-01-31 DOI:10.5087/dad.2017.102
R. Lowe, Nissan Pow, Iulian Serban, Laurent Charlin, Chia-Wei Liu, Joelle Pineau
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引用次数: 152

摘要

在本文中,我们使用最新版本的Ubuntu对话语料库构建和训练端到端基于神经网络的对话系统,该语料库包含近100万个多回合对话,总共有超过700万个话语和1亿个单词。这个数据集很有趣,因为它的大小、长上下文长度和技术性质;因此,它可以用最小的特征工程直接从数据中训练大型模型,这既耗时又昂贵。我们在两种不同的环境中提供基线:一种是训练模型以最大化根据对话上下文生成的话语的对数似然,另一种是训练模型从候选响应列表中选择正确的下一个响应。这些都是通过我们称之为下一个话语分类(NUC)的回忆任务以及其他特定于代的指标来评估的。最后,我们提供了一个定性错误分析,以帮助确定Ubuntu对话语料库和端到端对话系统的未来研究最有希望的方向。
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Training End-to-End Dialogue Systems with the Ubuntu Dialogue Corpus
In this paper, we construct and train end-to-end neural network-based dialogue systems using an updated version of the recent Ubuntu Dialogue Corpus, a dataset containing almost 1 million multi-turn dialogues, with a total of over 7 million utterances and 100 million words. This dataset is interesting because of its size, long context lengths, and technical nature; thus, it can be used to train large models directly from data with minimal feature engineering, which can be both time consuming and expensive. We provide baselines  in two different environments: one where models are trained to maximize the log-likelihood of a generated utterance  conditioned on the context of the conversation, and one where models are trained to select the correct next response from a list of candidate responses. These are both evaluated on a recall task that we call Next Utterance Classification (NUC), as well as other generation-specific metrics. Finally, we provide a qualitative error analysis to help determine the most promising directions for future research on the Ubuntu  Dialogue Corpus, and for end-to-end dialogue systems in general.
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来源期刊
Dialogue and Discourse
Dialogue and Discourse Arts and Humanities-Language and Linguistics
CiteScore
1.90
自引率
0.00%
发文量
7
审稿时长
12 weeks
期刊介绍: D&D seeks previously unpublished, high quality articles on the analysis of discourse and dialogue that contain -experimental and/or theoretical studies related to the construction, representation, and maintenance of (linguistic) context -linguistic analysis of phenomena characteristic of discourse and/or dialogue (including, but not limited to: reference and anaphora, presupposition and accommodation, topicality and salience, implicature, ---discourse structure and rhetorical relations, discourse markers and particles, the semantics and -pragmatics of dialogue acts, questions, imperatives, non-sentential utterances, intonation, and meta--communicative phenomena such as repair and grounding) -experimental and/or theoretical studies of agents'' information states and their dynamics in conversational interaction -new analytical frameworks that advance theoretical studies of discourse and dialogue -research on systems performing coreference resolution, discourse structure parsing, event and temporal -structure, and reference resolution in multimodal communication -experimental and/or theoretical results yielding new insight into non-linguistic interaction in -communication -work on natural language understanding (including spoken language understanding), dialogue management, -reasoning, and natural language generation (including text-to-speech) in dialogue systems -work related to the design and engineering of dialogue systems (including, but not limited to: -evaluation, usability design and testing, rapid application deployment, embodied agents, affect detection, -mixed-initiative, adaptation, and user modeling). -extremely well-written surveys of existing work. Highest priority is given to research reports that are specifically written for a multidisciplinary audience. The audience is primarily researchers on discourse and dialogue and its associated fields, including computer scientists, linguists, psychologists, philosophers, roboticists, sociologists.
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