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Autori principali: Zeng, Yilong, Tang, Boyan, Ren, Xuanhao, Zhou, Sherry Zhefang, Wu, Jianghua, Lee, Raymond
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2511.10365
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author Zeng, Yilong
Tang, Boyan
Ren, Xuanhao
Zhou, Sherry Zhefang
Wu, Jianghua
Lee, Raymond
author_facet Zeng, Yilong
Tang, Boyan
Ren, Xuanhao
Zhou, Sherry Zhefang
Wu, Jianghua
Lee, Raymond
contents This paper introduces the Fractal-Chaotic Oscillation Co-driven (FCOC) framework, a novel paradigm for financial volatility forecasting that systematically resolves the dual challenges of feature fidelity and model responsiveness. FCOC synergizes two core innovations: our novel Fractal Feature Corrector (FFC), engineered to extract high-fidelity fractal signals, and a bio-inspired Chaotic Oscillation Component (COC) that replaces static activations with a dynamic processing system. Empirically validated on the S\&P 500 and DJI, the FCOC framework demonstrates profound and generalizable impact. The framework fundamentally transforms the performance of previously underperforming architectures, such as the Transformer, while achieving substantial improvements in key risk-sensitive metrics for state-of-the-art models like Mamba. These results establish a powerful co-driven approach, where models are guided by superior theoretical features and powered by dynamic internal processors, setting a new benchmark for risk-aware forecasting.
format Preprint
id arxiv_https___arxiv_org_abs_2511_10365
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle FCOC: A Fractal-Chaotic Co-driven Framework for Financial Volatility Forecasting
Zeng, Yilong
Tang, Boyan
Ren, Xuanhao
Zhou, Sherry Zhefang
Wu, Jianghua
Lee, Raymond
Risk Management
This paper introduces the Fractal-Chaotic Oscillation Co-driven (FCOC) framework, a novel paradigm for financial volatility forecasting that systematically resolves the dual challenges of feature fidelity and model responsiveness. FCOC synergizes two core innovations: our novel Fractal Feature Corrector (FFC), engineered to extract high-fidelity fractal signals, and a bio-inspired Chaotic Oscillation Component (COC) that replaces static activations with a dynamic processing system. Empirically validated on the S\&P 500 and DJI, the FCOC framework demonstrates profound and generalizable impact. The framework fundamentally transforms the performance of previously underperforming architectures, such as the Transformer, while achieving substantial improvements in key risk-sensitive metrics for state-of-the-art models like Mamba. These results establish a powerful co-driven approach, where models are guided by superior theoretical features and powered by dynamic internal processors, setting a new benchmark for risk-aware forecasting.
title FCOC: A Fractal-Chaotic Co-driven Framework for Financial Volatility Forecasting
topic Risk Management
url https://arxiv.org/abs/2511.10365