Artificial intelligence (AI) is diffusing globally at unprecedented speed, but adoption remains uneven. Frontier Large Language Models (LLMs) are known to perform poorly on low-resource languages due to data scarcity. We hypothesize that this performance deficit reduces the utility of AI, thereby slowing adoption in Low-Resource Language Countries (LRLCs). To test this, we use a weighted regression model to isolate the language effect from socioeconomic and demographic factors, finding that LRLCs have a share of AI users that is approximately 20% lower relative to their baseline. These results indicate that linguistic accessibility is a significant, independent barrier to equitable AI diffusion.
翻译:人工智能(AI)正以前所未有的速度在全球范围内扩散,但其采纳情况仍不均衡。前沿大语言模型(LLMs)由于数据稀缺,在低资源语言上表现不佳。我们假设这种性能缺陷降低了AI的效用,从而减缓了其在低资源语言国家(LRLCs)的采纳。为验证此假设,我们采用加权回归模型,将语言效应与社会经济和人口因素分离,发现LRLCs的AI用户份额相对于其基线约低20%。这些结果表明,语言可及性是阻碍AI公平扩散的一个重要且独立的障碍。