Fellbaum, Christiane DorotheaHines, Julia R.2025-08-062025-08-062025-04-10https://theses-dissertations.princeton.edu/handle/88435/dsp01bg257j52zThis study uses natural language processing (NLP) techniques to analyze the syntactic and lexical differences between Standard French and Cameroonian French, as well as examine how the dialect evolves when used by the Cameroonian diaspora in France. The central methodology involves training and evaluating two distinct NLP models: one fine-tuned on a corpus of Standard French, and the other on Cameroonian French. The LSTM model, on the other hand, outperformed the Logistic Regression model in all key metrics, including accuracy, precision, recall, and F1-score. The results of this study illustrate the limitations of traditional NLP methods, such as logistic regression, when applied to dialects with syntactical and linguistic differences, and they highlight the potential of deep learning approaches to better handle these variations. The findings point to the importance of fostering linguistic diversity within computational models.en-USA Comparative Study of Syntax and Word Usage Between Standard French and Cameroonian French Using Natural Language ProcessingPrinceton University Senior Theses