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LLM的金融大脑扫描

A Financial Brain Scan of the LLM

Hui Chen, Antoine Didisheim, Luciano Somoza, Hanqing Tian

arXiv
2025年8月29日

计算机科学中的新兴技术使“大脑扫描”大型语言模型(LLM)成为可能,识别指导他们推理的纯英语概念,并在保持其他因素不变的同时引导它们。 我们表明,这种方法可以将LLM生成的经济预测映射到情绪,技术分析和时间等概念,并在不降低性能的情况下计算其相对重要性。 我们还表明,模型可以或多或少地规避风险,乐观或悲观,这使得研究人员能够纠正或模拟偏见。 该方法是透明,轻量级的,可复制的社会科学实证研究。

Emerging techniques in computer science make it possible to "brain scan" large language models (LLMs), identify the plain-English concepts that guide their reasoning, and steer them while holding other factors constant. We show that this approach can map LLM-generated economic forecasts to concepts such as sentiment, technical analysis, and timing, and compute their relative importance without reducing performance. We also show that models can be steered to be more or less risk-averse, optimisti...