Feifan Wu


2024

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Knowledge-augmented Financial Market Analysis and Report Generation
Yuemin Chen | Feifan Wu | Jingwei Wang | Hao Qian | Ziqi Liu | Zhiqiang Zhang | Jun Zhou | Meng Wang
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing: Industry Track

Crafting a convincing financial market analysis report necessitates a wealth of market information and the expertise of financial analysts, posing a highly challenging task. While large language models (LLMs) have enabled the automated generation of financial market analysis text, they still face issues such as hallucinations, errors in financial knowledge, and insufficient capability to reason about complex financial problems, which limits the quality of the generation. To tackle these shortcomings, we propose a novel task and a retrieval-augmented framework grounded in a financial knowledge graph (FKG). The proposed framework is compatible with commonly used instruction-tuning methods. Experiments demonstrate that our framework, coupled with a small-scale language model fine-tuned with instructions, can significantly enhance the logical consistency and quality of the generated analysis texts, outperforming both large-scale language models and other retrieval-augmented baselines.