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Autori principali: Lin, Xueyuan, Yang, Cehao, Ma, Ye, Li, Ming, Zhang, Rongjunchen, Ni, Yang, Wu, Xiaojun, Xu, Chengjin, Guo, Jian, Xiong, Hui
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2510.21604
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author Lin, Xueyuan
Yang, Cehao
Ma, Ye
Li, Ming
Zhang, Rongjunchen
Ni, Yang
Wu, Xiaojun
Xu, Chengjin
Guo, Jian
Xiong, Hui
author_facet Lin, Xueyuan
Yang, Cehao
Ma, Ye
Li, Ming
Zhang, Rongjunchen
Ni, Yang
Wu, Xiaojun
Xu, Chengjin
Guo, Jian
Xiong, Hui
contents Recently, large language models (LLMs) have demonstrated outstanding reasoning capabilities on mathematical and coding tasks. However, their application to financial tasks-especially the most fundamental task of stock movement prediction-remains underexplored. We study a three-class classification problem (up, hold, down) and, by analyzing existing reasoning responses, observe that: (1) LLMs follow analysts' opinions rather than exhibit a systematic, independent analytical logic (CoTs). (2) LLMs list summaries from different sources without weighing adversarial evidence, yet such counterevidence is crucial for reliable prediction. It shows that the model does not make good use of its reasoning ability to complete the task. To address this, we propose Reflective Evidence Tuning (RETuning), a cold-start method prior to reinforcement learning, to enhance prediction ability. While generating CoT, RETuning encourages dynamically constructing an analytical framework from diverse information sources, organizing and scoring evidence for price up or down based on that framework-rather than on contextual viewpoints-and finally reflecting to derive the prediction. This approach maximally aligns the model with its learned analytical framework, ensuring independent logical reasoning and reducing undue influence from context. We also build a large-scale dataset spanning all of 2024 for 5,123 A-share stocks, with long contexts (32K tokens) and over 200K samples. In addition to price and news, it incorporates analysts' opinions, quantitative reports, fundamental data, macroeconomic indicators, and similar stocks. Experiments show that RETuning successfully unlocks the model's reasoning ability in the financial domain. Inference-time scaling still works even after 6 months or on out-of-distribution stocks, since the models gain valuable insights about stock movement prediction.
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publishDate 2025
record_format arxiv
spellingShingle RETuning: Upgrading Inference-Time Scaling for Stock Movement Prediction with Large Language Models
Lin, Xueyuan
Yang, Cehao
Ma, Ye
Li, Ming
Zhang, Rongjunchen
Ni, Yang
Wu, Xiaojun
Xu, Chengjin
Guo, Jian
Xiong, Hui
Computation and Language
Recently, large language models (LLMs) have demonstrated outstanding reasoning capabilities on mathematical and coding tasks. However, their application to financial tasks-especially the most fundamental task of stock movement prediction-remains underexplored. We study a three-class classification problem (up, hold, down) and, by analyzing existing reasoning responses, observe that: (1) LLMs follow analysts' opinions rather than exhibit a systematic, independent analytical logic (CoTs). (2) LLMs list summaries from different sources without weighing adversarial evidence, yet such counterevidence is crucial for reliable prediction. It shows that the model does not make good use of its reasoning ability to complete the task. To address this, we propose Reflective Evidence Tuning (RETuning), a cold-start method prior to reinforcement learning, to enhance prediction ability. While generating CoT, RETuning encourages dynamically constructing an analytical framework from diverse information sources, organizing and scoring evidence for price up or down based on that framework-rather than on contextual viewpoints-and finally reflecting to derive the prediction. This approach maximally aligns the model with its learned analytical framework, ensuring independent logical reasoning and reducing undue influence from context. We also build a large-scale dataset spanning all of 2024 for 5,123 A-share stocks, with long contexts (32K tokens) and over 200K samples. In addition to price and news, it incorporates analysts' opinions, quantitative reports, fundamental data, macroeconomic indicators, and similar stocks. Experiments show that RETuning successfully unlocks the model's reasoning ability in the financial domain. Inference-time scaling still works even after 6 months or on out-of-distribution stocks, since the models gain valuable insights about stock movement prediction.
title RETuning: Upgrading Inference-Time Scaling for Stock Movement Prediction with Large Language Models
topic Computation and Language
url https://arxiv.org/abs/2510.21604