QuantBench: Benchmarking AI Methods for Quantitative Investment
QuantBench: Benchmarking AI Methods for Quantitative Investment
The field of artificial intelligence (AI) in quantitative investment has seen significant advancements, yet it lacks a standardized benchmark aligned with industry practices. This gap hinders research progress and limits the practical application of academic innovations. We present QuantBench, an industrial-grade benchmark platform designed to address this critical need. QuantBench offers three key strengths: (1) standardization that aligns with quantitative investment industry practices, (2) flexibility to integrate various AI algorithms, and (3) full-pipeline coverage of the entire quantitative investment process. Our empirical studies using QuantBench reveal some critical research directions, including the need for continual learning to address distribution shifts, improved methods for modeling relational financial data, and more robust approaches to mitigate overfitting in low signal-to-noise environments. By providing a common ground for evaluation and fostering collaboration between researchers and practitioners, QuantBench aims to accelerate progress in AI for quantitative investment, similar to the impact of benchmark platforms in computer vision and natural language processing.
Hao Kong、Saizhuo Wang、Fengrui Hua、Yiyan Qi、Wanyun Zhou、Jiahao Zheng、Xinyu Wang、Lionel M. Ni、Jian Guo、Jiadong Guo
财政、金融计算技术、计算机技术自动化技术、自动化技术设备
Hao Kong,Saizhuo Wang,Fengrui Hua,Yiyan Qi,Wanyun Zhou,Jiahao Zheng,Xinyu Wang,Lionel M. Ni,Jian Guo,Jiadong Guo.QuantBench: Benchmarking AI Methods for Quantitative Investment[EB/OL].(2025-04-24)[2025-06-06].https://arxiv.org/abs/2504.18600.点此复制
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