Multidimensional Analysis of Specific Language Impairment Using Unsupervised Learning Through PCA and Clustering
- URL: http://arxiv.org/abs/2506.05498v1
- Date: Thu, 05 Jun 2025 18:29:12 GMT
- Title: Multidimensional Analysis of Specific Language Impairment Using Unsupervised Learning Through PCA and Clustering
- Authors: Niruthiha Selvanayagam,
- Abstract summary: Specific Language Impairment (SLI) affects approximately 7 percent of children.<n>Traditional diagnostic approaches often rely on standardized assessments, which may overlook subtle developmental patterns.<n>This study aims to identify natural language development trajectories in children with and without SLI using unsupervised machine learning techniques.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Specific Language Impairment (SLI) affects approximately 7 percent of children, presenting as isolated language deficits despite normal cognitive abilities, sensory systems, and supportive environments. Traditional diagnostic approaches often rely on standardized assessments, which may overlook subtle developmental patterns. This study aims to identify natural language development trajectories in children with and without SLI using unsupervised machine learning techniques, providing insights for early identification and targeted interventions. Narrative samples from 1,163 children aged 4-16 years across three corpora (Conti-Ramsden 4, ENNI, and Gillam) were analyzed using Principal Component Analysis (PCA) and clustering. A total of 64 linguistic features were evaluated to uncover developmental trajectories and distinguish linguistic profiles. Two primary clusters emerged: (1) high language production with low SLI prevalence, and (2) limited production but higher syntactic complexity with higher SLI prevalence. Additionally, boundary cases exhibited intermediate traits, supporting a continuum model of language abilities. Findings suggest SLI manifests primarily through reduced production capacity rather than syntactic complexity deficits. The results challenge categorical diagnostic frameworks and highlight the potential of unsupervised learning techniques for refining diagnostic criteria and intervention strategies.
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