[4Xin2-110] Multi-Lingual Prompt: Few-shot inference using multilingual examples in low-resource languages
Keywords:GPT, Few-shot inference, multi language, low resource language
While large language models demonstrate high performance on English tasks, it is known that their performance
relatively decreases when solving tasks in low-resource languages. To address this issue, this paper proposes few-
shot inference using multilingual examples. In this study, we employed the natural language inference task as a
metric to measure the inference performance of large language models under low-resource languages. As a result,
our proposed method showed performance improvements on two tasks, FEVER and ANLI.
relatively decreases when solving tasks in low-resource languages. To address this issue, this paper proposes few-
shot inference using multilingual examples. In this study, we employed the natural language inference task as a
metric to measure the inference performance of large language models under low-resource languages. As a result,
our proposed method showed performance improvements on two tasks, FEVER and ANLI.
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