公制(单位)
判决
计算机科学
自然语言处理
人工智能
逻辑回归
分割
语言序列复杂性
语音识别
语法
F1得分
机器学习
语言学
运营管理
哲学
经济
作者
Galit Agmon,Sameer Pradhan,Sharon Ash,Naomi Nevler,Mark Liberman,Murray Grossman,Sunghye Cho
出处
期刊:Journal of Speech Language and Hearing Research
[American Speech–Language–Hearing Association]
日期:2024-01-12
卷期号:67 (2): 545-561
被引量:7
标识
DOI:10.1044/2023_jslhr-23-00009
摘要
Purpose: Multiple methods have been suggested for quantifying syntactic complexity in speech. We compared eight automated syntactic complexity metrics to determine which best captured verified syntactic differences between old and young adults. Method: We used natural speech samples produced in a picture description task by younger ( n = 76, ages 18–22 years) and older ( n = 36, ages 53–89 years) healthy participants, manually transcribed and segmented into sentences. We manually verified that older participants produced fewer complex structures. We developed a metric of syntactic complexity using automatically extracted syntactic structures as features in a multidimensional metric. We compared our metric to seven other metrics: Yngve score, Frazier score, Frazier–Roark score, developmental level, syntactic frequency, mean dependency distance, and sentence length. We examined the success of each metric in identifying the age group using logistic regression models. We repeated the analysis with automatic transcription and segmentation using an automatic speech recognition (ASR) system. Results: Our multidimensional metric was successful in predicting age group (area under the curve [AUC] = 0.87), and it performed better than the other metrics. High AUCs were also achieved by the Yngve score (0.84) and sentence length (0.84). However, in a fully automated pipeline with ASR, the performance of these two metrics dropped (to 0.73 and 0.46, respectively), while the performance of the multidimensional metric remained relatively high (0.81). Conclusions: Syntactic complexity in spontaneous speech can be quantified by directly assessing syntactic structures and considering them in a multivariable manner. It can be derived automatically, saving considerable time and effort compared to manually analyzing large-scale corpora, while maintaining high face validity and robustness. Supplemental Material: https://doi.org/10.23641/asha.24964179
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