CLLGJun 2

Sample-Size Scaling of the African Languages NLI Evaluation

arXiv:2606.032192.5
AI Analysis

For researchers working on low-resource African languages, this work highlights the need for language-specific data strategies and stronger multilingual models.

This study investigates how sample size affects NLI performance on 16 African languages using AfriXNLI, finding non-monotonic scaling and high variance, challenging the assumption that more data always improves performance.

African languages have very little labelled data, and it is unclear if augmenting the quantity of annotation data reliably enhances downstream performance. The study is a systematic sample-size scaling study of natural language inference (NLI) on 16 African languages based on the AfriXNLI benchmark. Under controlled conditions, two multilingual transformer models with roughly 0.6B parameters XLM-R Large fine-tuned on XNLI and AfroXLM-R Large are tested on sample sizes of between 50 and 500 labeled examples and average their results across random subsampling runs. As opposed to the usual belief of monotonic increase with increased data, we find a strongly language sensitive and often non-monotonic scaling behavior. Some languages show early saturation or decrease in performance with sample size as well as high variance in low resource regimes. These results indicate that the volume of data is not enough to guarantee stable profits to African NLI, creating the necessity of language sensitive datasets creation and stronger multi-lingual modelling strategies.

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