Department of Psychology, University of Miami, Coral Gables, FL, United States; Department of Electrical and Computer Engineering, University of Miami, Coral Gables, FL, United States; Departments of Pediatrics and Music Engineering, University of Miami, Coral Gables, FL, United States; Department of Music Engineering, University of Miami, Coral Gables, FL, United States.
Department of Psychology, University of Miami, Coral Gables, FL, United States.
Adv Child Dev Behav. 2022;62:191-230. doi: 10.1016/bs.acdb.2021.12.002. Epub 2022 Feb 12.
Audio-visual recording and location tracking produce enormous quantities of digital data with which researchers can document children's everyday interactions in naturalistic settings and assessment contexts. Machine learning and other computational approaches can produce replicable, automated measurements of these big behavioral data. The economies of scale afforded by repeated automated measurements offer a potent approach to investigating linkages between real-time behavior and developmental change. In our work, automated measurement of audio from child-worn recorders-which quantify the frequency of child and adult speech and index its phonemic complexity-are paired with ultrawide radio tracking of children's location and interpersonal orientation. Applications of objective measurement indicate the influence of adult behavior in both expert ratings of attachment behavior and ratings of autism severity, suggesting the role of dyadic factors in these "child" assessments. In the preschool classroom, location/orientation measures provide data-driven measures of children's social contact, fertile ground for vocal interactions. Both the velocity of children's movement toward one another and their social contact with one another evidence homophily: children with autism spectrum disorder, other developmental disabilities, and typically developing children were more likely to interact with children in the same group even in inclusive preschool classrooms designed to promote interchange between all children. In the vocal domain, the frequency of peer speech and the phonemic complexity of teacher speech predict the frequency and phonemic complexity of children's own speech over multiple timescales. Moreover, children's own speech predicts their assessed language abilities across disability groups, suggesting how everyday interactions facilitate development.
视听记录和位置跟踪会产生大量的数字数据,研究人员可以利用这些数据在自然环境和评估情境中记录儿童的日常互动。机器学习和其他计算方法可以对这些大规模行为数据进行可重复、自动化的测量。通过重复的自动化测量实现的规模经济为研究实时行为与发展变化之间的联系提供了一种有力的方法。在我们的工作中,通过佩戴在儿童身上的记录仪对音频进行自动化测量,量化儿童和成人言语的频率,并对其音位复杂性进行索引,同时结合对儿童位置和人际方向的超宽无线电跟踪。客观测量的应用表明,成人行为对依恋行为的专家评估和自闭症严重程度的评估都有影响,这表明在这些“儿童”评估中,对偶因素的作用。在学前教室中,位置/方向测量提供了儿童社会接触的有数据驱动的测量,这是声音互动的肥沃土壤。儿童彼此之间的运动速度和他们之间的社会接触都表现出同质性:自闭症谱系障碍、其他发育障碍和正常发育的儿童与同一群体中的儿童更有可能互动,即使是在旨在促进所有儿童之间交流的包容性学前教室里也是如此。在声音领域,同伴言语的频率和教师言语的音位复杂性可以预测儿童自身言语的频率和音位复杂性在多个时间尺度上的变化。此外,儿童自身的言语可以预测他们在不同残疾群体中的语言能力评估,这表明日常互动如何促进发展。