| 1 |
Exploring Large Language Models for Translating Romanian Computational Problems into English |
利用大型语言模型提升罗马尼亚信息学竞赛题到英语的翻译质量 |
large language model |
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| 2 |
The dynamics of meaning through time: Assessment of Large Language Models |
评估大型语言模型对历史语义演变的理解能力 |
large language model |
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| 3 |
A survey of textual cyber abuse detection using cutting-edge language models and large language models |
综述:利用前沿语言模型和大型语言模型进行文本网络恶意信息检测 |
large language model |
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| 4 |
GLaM-Sign: Greek Language Multimodal Lip Reading with Integrated Sign Language Accessibility |
GLaM-Sign:集成希腊语手语可访问性的多模态唇语阅读资源 |
multimodal |
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| 5 |
Leveraging Large Language Models for Zero-shot Lay Summarisation in Biomedicine and Beyond |
提出基于大语言模型的两阶段零样本生物医学领域摘要生成框架 |
large language model |
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| 6 |
Enhancing Human-Like Responses in Large Language Models |
提升大型语言模型人情味:融合心理学与多样化数据微调 |
large language model |
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| 7 |
Investigating Numerical Translation with Large Language Models |
提出评估大语言模型在数字翻译中的可靠性以解决安全问题 |
large language model |
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| 8 |
Stream Aligner: Efficient Sentence-Level Alignment via Distribution Induction |
Stream Aligner:通过分布诱导实现高效的句子级对齐 |
large language model |
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| 9 |
Optimizing Estonian TV Subtitles with Semi-supervised Learning and LLMs |
利用半监督学习和LLM优化爱沙尼亚语电视字幕生成 |
large language model |
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| 10 |
Unlocking In-Context Learning for Natural Datasets Beyond Language Modelling |
揭示并促进自回归模型上下文学习能力,拓展至视觉和脑电数据集 |
large language model |
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| 11 |
FairCoder: Evaluating Social Bias of LLMs in Code Generation |
FairCoder:提出用于评估代码生成中LLM社会偏见的新基准 |
large language model |
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| 12 |
Comparison of Feature Learning Methods for Metadata Extraction from PDF Scholarly Documents |
评估NLP、CV和多模态特征学习方法,提升PDF学术文档元数据提取性能。 |
multimodal |
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| 13 |
SWE-Fixer: Training Open-Source LLMs for Effective and Efficient GitHub Issue Resolution |
SWE-Fixer:训练开源LLM以高效解决GitHub问题 |
large language model |
✅ |
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| 14 |
TreeKV: Smooth Key-Value Cache Compression with Tree Structures |
提出TreeKV:一种基于树结构的平滑Key-Value缓存压缩方法,适用于长序列LLM。 |
large language model |
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| 15 |
Rethinking Evaluation of Sparse Autoencoders through the Representation of Polysemous Words |
提出基于多义词表示的稀疏自编码器评估方法,揭示现有优化目标与单义特征提取的矛盾。 |
large language model |
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