Multidisciplinary Perspectives on Automatic Analysis of Children's Language Samples: Where Do We Go from Here?

IF 1.1 4区 医学 Q3 AUDIOLOGY & SPEECH-LANGUAGE PATHOLOGY Folia Phoniatrica et Logopaedica Pub Date : 2023-01-01 DOI:10.1159/000527427
Ulrike Lüdtke, Juan Bornman, Febe de Wet, Ulrich Heid, Jörn Ostermann, Lars Rumberg, Jeannie Van der Linde, Hanna Ehlert
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Abstract

Background: Language sample analysis (LSA) is invaluable to describe and understand child language use and development for clinical purposes and research. Digital tools supporting LSA are available, but many of the LSA steps have not been automated. Nevertheless, programs that include automatic speech recognition (ASR), the first step of LSA, have already reached mainstream applicability.

Summary: To better understand the complexity, challenges, and future needs of automatic LSA from a technological perspective, including the tasks of transcribing, annotating, and analysing natural child language samples, this article takes on a multidisciplinary view. Requirements of a fully automated LSA process are characterized, features of existing LSA software tools compared, and prior work from the disciplines of information science and computational linguistics reviewed.

Key messages: Existing tools vary in their extent of automation provided across the process of LSA. Advances in machine learning for speech recognition and processing have potential to facilitate LSA, but the specifics of child speech and language as well as the lack of child data complicate software design. A transdisciplinary approach is recommended as feasible to support future software development for LSA.

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儿童语言样本自动分析的多学科视角:我们将何去何从?
背景:语言样本分析(LSA)对于描述和理解儿童语言使用和发展的临床目的和研究是非常宝贵的。支持LSA的数字工具是可用的,但是许多LSA步骤还没有自动化。然而,包括自动语音识别(ASR)的程序,LSA的第一步,已经达到了主流的适用性。摘要:为了从技术角度更好地理解自动LSA的复杂性、挑战和未来需求,包括转录、注释和分析自然儿童语言样本的任务,本文采用多学科观点。描述了全自动LSA过程的要求,比较了现有LSA软件工具的特点,并回顾了信息科学和计算语言学学科的先前工作。关键信息:现有工具在LSA过程中提供的自动化程度各不相同。机器学习在语音识别和处理方面的进步有可能促进LSA,但儿童语音和语言的特殊性以及儿童数据的缺乏使软件设计复杂化。建议采用一种跨学科的方法来支持LSA的未来软件开发。
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来源期刊
Folia Phoniatrica et Logopaedica
Folia Phoniatrica et Logopaedica AUDIOLOGY & SPEECH-LANGUAGE PATHOLOGY-OTORHINOLARYNGOLOGY
CiteScore
2.30
自引率
10.00%
发文量
28
审稿时长
>12 weeks
期刊介绍: Published since 1947, ''Folia Phoniatrica et Logopaedica'' provides a forum for international research on the anatomy, physiology, and pathology of structures of the speech, language, and hearing mechanisms. Original papers published in this journal report new findings on basic function, assessment, management, and test development in communication sciences and disorders, as well as experiments designed to test specific theories of speech, language, and hearing function. Review papers of high quality are also welcomed.
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