Wang Wei
Also published as: 巍 王
2024
AutoRG:一种大小模型协同的自动报告生成框架(AutoRG: An automatic report generation framework for Large and small model collaboration)
Zhang Jing (张京)
|
Shu Jiangming (舒江明)
|
Zhang Yuxiang (张宇翔)
|
Wu Bin (吴斌)
|
Wang Wei (王巍)
|
Yu Jian (于剑)
|
Sang Jitao (桑基韬)
Proceedings of the 23rd Chinese National Conference on Computational Linguistics (Volume 1: Main Conference)
“自动报告生成技术在提高工作效率和节约人力资源方面具有显著潜力。大语言模型的出现使得报告流畅度与可解释性得到提升。然而,现有工作仍依赖人工,缺乏灵活性和丰富度。同时,小模型错误或冗余的输出与大模型自身的随机性会导致报告质量不稳定。本文提出大小模型协同的自动报告生成框架AutoRG,通过大模型的工具理解与规划能力减少人工干预,提升报告丰富度,并通过信息修正与报告迭代机制提高报告的稳定性。本文以自动专利报告生成为场景,从多个维度对AutoRG进行全面测试。结果表明,该框架在提高报告生成的丰富度和质量稳定性方面具有显著优势。”
Exploring Faithful and Informative Commonsense Reasoning and Moral Understanding in Children’s Stories
Wang Zimu
|
Yuqi Wang
|
Han Nijia
|
Chen Qi
|
Zhang Haiyang
|
Pan Yushan
|
Wang Qiufeng
|
Wang Wei
Proceedings of the 23rd Chinese National Conference on Computational Linguistics (Volume 3: Evaluations)
“Commonsense reasoning and moral understanding are crucial tasks in artificial intelligence (AI) and natural language processing (NLP). However, existing research often falls short in terms of faithfulness and informativeness during the reasoning process. We propose a novel framework for performing commonsense reasoning and moral understanding using large language models (LLMs), involving constructing guided prompts by incorporating relevant knowledge for commonsense reasoning and extracting facts from stories for moral understanding. We conduct extensive experiments on the Commonsense Reasoning and Moral Understanding in Children’s Stories (CRMUS) dataset with widely recognised LLMs under both zero-shot and fine-tuning settings, demonstrating the effectiveness of our proposed method. Furthermore, we analyse the adaptability of different LLMs in extracting facts for moral understanding performance.”
Search
Fix data
Co-authors
- Wu Bin (吴斌) 1
- Zhang Haiyang 1
- Yu Jian (于剑) 1
- Shu Jiangming (舒江明) 1
- Zhang Jing (张京) 1
- show all...
Venues
- ccl2