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Early-Layer LoRA Fine-Tuning for Lexical Alignment in Low-Resource African Languages on XNLI Accuracy

Authors: Assignee Research;

Early-Layer LoRA Fine-Tuning for Lexical Alignment in Low-Resource African Languages on XNLI Accuracy

Abstract

Large Language Models (LLMs) have demonstrated remarkable capabilities, yet their performance in low-resource languages (LRLs), such as Swahili, often lags due to data scarcity and underrepresentation in pre-training. A key challenge is achieving robust cross-lingual lexical alignment, crucial for tasks like translation and cross-lingual information retrieval. This paper introduces Targeted Lexical Injection (TLI), a novel and efficient fine-tuning approach. We first demonstrate that Lugha-Llama-8B-wura, a Swahili-centric LLM, exhibits strong, near-perfect lexical alignment for Swahili-EnglishResearch goal: How does early-layer LoRA fine-tuning for lexical alignment compare to full-parameter fine-tuning on XNLI accuracy for low-resource African languages?Autonomous synthesis report generated by Assignee Research. Tribunal consensus score: 7.5/10.

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