cs.AI updates on arXiv.org 07月29日 12:22
Learning from Expert Factors: Trajectory-level Reward Shaping for Formulaic Alpha Mining
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本文提出一种名为TLRS的新方法,通过提供密集的中间奖励和奖励中心机制,显著提高强化学习在投资策略挖掘中的效率,实验表明其预测能力提升9.29%,计算效率也有显著提升。

arXiv:2507.20263v1 Announce Type: cross Abstract: Reinforcement learning (RL) has successfully automated the complex process of mining formulaic alpha factors, for creating interpretable and profitable investment strategies. However, existing methods are hampered by the sparse rewards given the underlying Markov Decision Process. This inefficiency limits the exploration of the vast symbolic search space and destabilizes the training process. To address this, Trajectory-level Reward Shaping (TLRS), a novel reward shaping method, is proposed. TLRS provides dense, intermediate rewards by measuring the subsequence-level similarity between partially generated expressions and a set of expert-designed formulas. Furthermore, a reward centering mechanism is introduced to reduce training variance. Extensive experiments on six major Chinese and U.S. stock indices show that TLRS significantly improves the predictive power of mined factors, boosting the Rank Information Coefficient by 9.29% over existing potential-based shaping algorithms. Notably, TLRS achieves a major leap in computational efficiency by reducing its time complexity with respect to the feature dimension from linear to constant, which is a significant improvement over distance-based baselines.

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强化学习 投资策略 奖励塑造
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