GailBot: An automatic transcription system for Conversation Analysis

Q1 Arts and Humanities Dialogue and Discourse Pub Date : 2022-04-29 DOI:10.5210/dad.2022.103
Muhammad Umair, Julia Beret Mertens, Saul Albert, J. D. Ruiter
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引用次数: 7

Abstract

Researchers studying human interaction, such as conversation analysts, psychologists, and linguists, all rely on detailed transcriptions of language use. Ideally, these should include so-called paralinguistic features of talk, such as overlaps, prosody, and intonation, as they convey important information. However, creating conversational transcripts that include these features by hand requires substantial amounts of time by trained transcribers. There are currently no Speech to Text (STT) systems that are able to integrate these features in the generated transcript. To reduce the resources needed to create detailed conversation transcripts that include representation of paralinguistic features, we developed a program called GailBot. GailBot combines STT services with plugins to automatically generate first drafts of transcripts that largely follow the transcription standards common in the field of Conversation Analysis. It also enables researchers to add new plugins to transcribe additional features, or to improve the plugins it currently uses. We describe GailBot’s architecture and its use of computational heuristics and machine learning. We also evaluate its output in relation to transcripts produced by both human transcribers and comparable automated transcription systems. We argue that despite its limitations, GailBot represents a substantial improvement over existing dialogue transcription software.
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GailBot:会话分析的自动转录系统
研究人类互动的研究人员,如对话分析师、心理学家和语言学家,都依赖于语言使用的详细记录。理想情况下,这些应该包括所谓的谈话的副语言特征,如重叠、韵律和语调,因为它们传达了重要的信息。然而,手工创建包含这些特征的会话文本需要训练有素的转录员花费大量的时间。目前还没有语音到文本(STT)系统能够将这些功能集成到生成的文本中。为了减少创建包含副语言特征表示的详细对话记录所需的资源,我们开发了一个名为GailBot的程序。GailBot将STT服务与插件相结合,自动生成转录稿的初稿,这些转录稿在很大程度上遵循会话分析领域常见的转录标准。它还使研究人员能够添加新的插件来转录额外的功能,或者改进它目前使用的插件。我们描述了GailBot的架构及其对计算启发式和机器学习的使用。我们还评估了与人类转录器和类似的自动转录系统产生的转录本相关的输出。我们认为,尽管有其局限性,GailBot代表了对现有对话转录软件的实质性改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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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期刊介绍: D&D seeks previously unpublished, high quality articles on the analysis of discourse and dialogue that contain -experimental and/or theoretical studies related to the construction,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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