Zhengyu Chen


2024

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FinNLP-AgentScen-2024 Shared Task: Financial Challenges in Large Language Models - FinLLMs
Qianqian Xie | Jimin Huang | Dong Li | Zhengyu Chen | Ruoyu Xiang | Mengxi Xiao | Yangyang Yu | Vijayasai Somasundaram | Kailai Yang | Chenhan Yuan | Zheheng Luo | Zhiwei Liu | Yueru He | Yuechen Jiang | Haohang Li | Duanyu Feng | Xiao-Yang Liu | Benyou Wang | Hao Wang | Yanzhao Lai | Jordan Suchow | Alejandro Lopez-Lira | Min Peng | Sophia Ananiadou
Proceedings of the Eighth Financial Technology and Natural Language Processing and the 1st Agent AI for Scenario Planning

2023

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MAPO: Boosting Large Language Model Performance with Model-Adaptive Prompt Optimization
Yuyan Chen | Zhihao Wen | Ge Fan | Zhengyu Chen | Wei Wu | Dayiheng Liu | Zhixu Li | Bang Liu | Yanghua Xiao
Findings of the Association for Computational Linguistics: EMNLP 2023

Prompt engineering, as an efficient and effective way to leverage Large Language Models (LLM), has drawn a lot of attention from the research community. The existing research primarily emphasizes the importance of adapting prompts to specific tasks, rather than specific LLMs. However, a good prompt is not solely defined by its wording, but also binds to the nature of the LLM in question. In this work, we first quantitatively demonstrate that different prompts should be adapted to different LLMs to enhance their capabilities across various downstream tasks in NLP. Then we novelly propose a model-adaptive prompt optimizer (MAPO) method that optimizes the original prompts for each specific LLM in downstream tasks. Extensive experiments indicate that the proposed method can effectively refine prompts for an LLM, leading to significant improvements over various downstream tasks.