cs.AI updates on arXiv.org 10月16日 12:22
评估波斯语LLMs性能与挑战
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本文对几种开源LLMs在波斯语NLP任务中的性能进行了全面基准测试,包括情感分析、命名实体识别等,发现Gemma 2在多数任务中表现优异,但波斯语NLP仍面临挑战。

arXiv:2510.12807v1 Announce Type: cross Abstract: Large Language Models (LLMs) have demonstrated remarkable capabilities across numerous languages; however, their effectiveness in low-resource languages like Persian requires thorough investigation. This paper presents a comprehensive benchmark of several open-source LLMs for Persian Natural Language Processing (NLP) tasks, utilizing both zero-shot and few-shot learning paradigms. We evaluate models across a range of tasks including sentiment analysis, named entity recognition, reading comprehension, and question answering, using established Persian datasets such as ParsiNLU and ArmanEmo. Our methodology encompasses rigorous experimental setups for both zero-shot and few-shot scenarios, employing metrics such as Accuracy, F1-score, BLEU, and ROUGE for performance evaluation. The results reveal that Gemma 2 consistently outperforms other models across nearly all tasks in both learning paradigms, with particularly strong performance in complex reasoning tasks. However, most models struggle with token-level understanding tasks like Named Entity Recognition, highlighting specific challenges in Persian language processing. This study contributes to the growing body of research on multilingual LLMs, providing valuable insights into their performance in Persian and offering a benchmark for future model development.

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LLMs 波斯语NLP 性能评估 Gemma 2 命名实体识别
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