基于神经网络的语篇关系信号检测

Q1 Arts and Humanities
Amir Zeldes, Yang Janet Liu
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引用次数: 5

摘要

先前的数据驱动工作调查了话语关系信号的类型和分布,包括话语标记(如“然而”)或短语(如“结果”),重点关注了每个话语关系中文本内外信号词的相对频率。这种方法不允许我们量化一个信号的单个实例在一个尺度上的信号强度(例如,或多或少与话语相关的“and”实例),评估信号的歧义分布,或识别在上下文中阻碍话语关系识别的单词(“反信号”或“干扰因素”)。在本文中,我们提出了一种使用远程监督神经网络进行信号检测的数据驱动方法,并开发了一个度量Δs(或'delta-softmax')来量化信号强度。该指标的范围在-1到1之间,依赖于上下文化词嵌入的最新进展,它代表了每个词对上下文特定实例中关系可识别性的积极或消极贡献。基于使用修辞结构理论对话语关系进行注释的英语语料库和锚定到特定标记的信号类型注释,我们的分析检查了度量的可靠性,它与人类判断重叠和不同的地方,以及识别神经模型可能需要的特征的含义,以便在自动话语关系分类中表现得更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Neural Approach to Discourse Relation Signal Detection
Previous data-driven work investigating the types and distributions of discourse relation signals, including discourse markers such as 'however' or phrases such as 'as a result' has focused on the relative frequencies of signal words within and outside text from each discourse relation. Such approaches do not allow us to quantify the signaling strength of individual instances of a signal on a scale (e.g. more or less discourse-relevant instances of 'and'), to assess the distribution of ambiguity for signals, or to identify words that hinder discourse relation identification in context ('anti-signals' or 'distractors'). In this paper we present a data-driven approach to signal detection using a distantly supervised neural network and develop a metric, Δs (or 'delta-softmax'), to quantify signaling strength. Ranging between -1 and 1 and relying on recent advances in contextualized words embeddings, the metric represents each word's positive or negative contribution to the identifiability of a relation in specific instances in context. Based on an English corpus annotated for discourse relations using Rhetorical Structure Theory and signal type annotations anchored to specific tokens, our analysis examines the reliability of the metric, the places where it overlaps with and differs from human judgments, and the implications for identifying features that neural models may need in order to perform better on automatic discourse relation classification.
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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期刊介绍: D&D seeks previously unpublished, high quality articles on the analysis of discourse and dialogue that contain -experimental and/or theoretical studies related to the construction,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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