Cross-Lingual Transfer Learning for Low-Resource Languages: Expanding NLP’s Global Reach

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Aswin Babu Rasipuram Sivaselvan

Abstract

The fast evolution of move-lingual switch gaining knowledge of (XLT) has introduced great advancements in herbal language processing (NLP), in particular in addressing linguistic disparities for low-aid languages. Notwithstanding those developments, critical demanding situations persist, inclusive of confined annotated corpora, structural linguistic variety, and inherent biases in multilingual models. Present tactics regularly desire excessive-useful resource languages, leading to suboptimal overall performance in low-resource settings. To bridge this gap, we introduce a novel go-lingual switch gaining knowledge of framework that integrates: self-supervised mastering for illustration alignment, reinforcement getting to know for adaptive optimization, and typology-conscious edition to beautify linguistic generalization.


Our take a look at makes the subsequent key contributions: (1) the improvement of a huge-scale low-useful resource language corpus, making sure linguistic diversity and complete textual illustration  (2) a unified theoretical framework for go-lingual switch getting to know, imparting insights into structural linguistic transferability (3) a multilingual benchmark tailored for evaluating low-aid NLP fashions, addressing barriers in modern-day multilingual evaluation methodologies and (four) empirical validation of our framework through real-international applications in education, healthcare, and governance, demonstrating the realistic impact of low-useful resource NLP advancements.


The findings of this research provide substantial evidence of the effectiveness of our proposed framework, providing a scalable and adaptable answer for improving NLP fashions in underrepresented languages. This painting lays the muse for future advancements in inclusive, truthful, and strong multilingual language technologies whilst addressing the linguistic demanding situations of low-aid groups.

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