Submitted:
28 January 2026
Posted:
29 January 2026
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Abstract
Keywords:
1. Introduction
- To acoustically analyse the English vowel production among Pakistani (PakE) and Arabic (ArE) L2 English speakers.
- To identify patterns of systematic variation and phonological regularity.
- To evaluate the efficacy of machine learning algorithms in classifying L2 vowel systems.
2. Related Literature
- H1: English vowels produced by PakE and ArE speakers significantly deviate from British English (RP) targets in terms of formant values (F1 and F2) and durations.
- H2: Machine learning algorithms k-means clustering and logistic regression can effectively categorize PakE and ArE vowel systems according to their acoustic characteristics, which indicate systematic phonological variation.
- H3: The vowel production of PakE and ArE speakers is gender-different, and female speakers tend to produce longer vowels than their male counterparts.
- H4: The vowel systems of PakE and ArE show systematic internal variation and phonological regularity within each group, despite their deviation from RP norms.
3. Materials and Methods

4. Results
4.1. Formant Frequency Analysis (F1 and F2)


4.1.1. PakE and ArE Vowel Spaces
4.1.2. RP Comparison
4.2. Vowel Duration Analysis


4.3. Gender-Based and Group-Based Variations
4.4. Statistical Comparisons


4.5. Euclidean Distance Calculations



4.6. Simulated Formant Trajectory and Vowel Space Mapping Model Visualisation


4.7. Spectrogram Analysis of Synthetic Vowels

4.8. Clustering Analysis (K-means)



4.9. Classification Results (Logistic Regression)


5. Discussion and Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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