This repo includes codes and examples for paper [π ArXiv]DEEM: Dynamic Experienced Expert Modeling for Stance Detection.
In this paper, different from existing multi-agent works that require detailed descriptions and use fixed experts, we propose a Dynamic Experienced Expert Modeling (DEEM) method which can leverage the generated experienced experts and let LLMs reason in a semi-parametric way, making the experts more generalizable and reliable. Experimental results demonstrate that DEEM consistently achieves the best results on three standard benchmarks, outperforms methods with self-consistency reasoning, and reduces the bias of LLMs.
The model structures are shown in the following figure.
| Method | Including Explanations | Multi-Roles | Verified Experts | Reasoning Type |
|---|---|---|---|---|
| Few-Shot | β | β | - | Gen |
| CoT | β | β | - | Gen |
| Auto-CoT | β | β | - | Re+Gen |
| ExpertPrompt | β | β | β | Gen |
| SPP | β | β | β | Gen |
| DEEM(ours) | β | β | β | Re+Gen |
π If you find our project helpful to your research, please consider citing:
@misc{wang2024deem,
title={DEEM: Dynamic Experienced Expert Modeling for Stance Detection},
author={Xiaolong Wang and Yile Wang and Sijie Cheng and Peng Li and Yang Liu},
year={2024},
eprint={2402.15264},
archivePrefix={arXiv},
primaryClass={cs.CL}
}


