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A Risk-Aware Hybrid Ensemble Approach For Aex Index Forecasting: Integrating Aparch-T Volatility With Lstm-Cnn-Rf Architectures

Author

Listed:
  • AMAN SHREEVASTAVA

    (P.G. DEPARTMENT OF COMMERCE AND MANAGEMENT, PURNEA UNIVERSITY, PURNEA, BIHAR, INDIA-854301)

  • BHARAT KUMAR MEHER

    (P.G. DEPARTMENT OF COMMERCE AND MANAGEMENT, PURNEA UNIVERSITY, PURNEA, BIHAR, INDIA-854301)

  • RAMONA BIRAU

    (UNIVERSITY OF CRAIOVA, "EUGENIU CARADA" DOCTORAL SCHOOL OF ECONOMIC SCIENCES, CRAIOVA, ROMANIA & CONSTANTIN BRANCUSI UNIVERSITY OF TARGU JIU, FACULTY OF ECONOMIC SCIENCE, TG-JIU, ROMANIA)

  • VIRGIL POPESCU

    (FACULTY OF ECONOMICS AND BUSINESS ADMINISTRATION, UNIVERSITY OF CRAIOVA, CRAIOVA, ROMANIA)

  • SHAHIL RAZA

    (DEPARTMENT OF COMMERCE, ALIGARH MUSLIM UNIVERSITY, ALIGARH, UTTAR PRADESH 202001, INDIA)

  • GABRIELA ANA MARIA LUPU (FILIP)

    (UNIVERSITY OF CRAIOVA, “EUGENIU CARADA” DOCTORAL SCHOOL OF ECONOMIC SCIENCES, CRAIOVA, ROMANIA)

  • STEFAN MARGARITESCU

    (DOCTORAL SCHOOL OF ECONOMIC SCIENCES ”EUGENIU CARADA”, UNIVERSITY OF CRAIOVA, CRAIOVA, ROMANIA)

Abstract

The accurate prediction of financial time-series remains a formidable challenge due to inherent non-linearity, heteroskedasticity, and the presence of "fat-tailed" distributions. This study proposes a novel, risk-augmented hybrid ensemble framework designed to enhance the forecasting precision of the Amsterdam Exchange (AEX) index. Departing from conventional monolithic models, the research methodology integrates an asymmetric power autoregressive conditional heteroskedasticity (APARCH) model with a Student-t distribution to extract robust volatility features. These econometric inputs are subsequently fed into a tripartite deep learning ensemble comprising Long Short-Term Memory (LSTM) networks for temporal dependencies, Convolutional Neural Networks (CNN) for spatial feature extraction, and Random Forest (RF) for non-linear regression refinement. Empirical results demonstrate that the proposed architecture significantly outperforms baseline models, achieving a high predictive accuracy characterized by an $R^{2}$ of 0.9408 and a Mean Absolute Error (MAE) of 4.9542. A critical finding of this research is the significance of the leptokurtic nature of AEX returns (Kurtosis: 12.64); by anchoring the machine learning engine with APARCH-derived conditional volatility, the model effectively mitigates the impact of market noise and transient shocks. Furthermore, Value-at-Risk (VaR) backtesting validates the model’s reliability for risk management, revealing that actual violations (181) remained well below the theoretical expectations (249.4) at a 95% confidence interval. The study concludes with a 30-day forward volatility projection, offering actionable insights for institutional investors and policy-makers during periods of market transition. By bridging the gap between classical econometrics and advanced computational intelligence, this research provides a robust template for multi-stage financial forecasting in volatile global markets.

Suggested Citation

  • Aman Shreevastava & Bharat Kumar Meher & Ramona Birau & Virgil Popescu & Shahil Raza & Gabriela Ana Maria Lupu (Filip) & Stefan Margaritescu, 2026. "A Risk-Aware Hybrid Ensemble Approach For Aex Index Forecasting: Integrating Aparch-T Volatility With Lstm-Cnn-Rf Architectures," Annals - Economy Series, Constantin Brancusi University, Faculty of Economics, vol. 1, pages 7-25, February.
  • Handle: RePEc:cbu:jrnlec:y:2026:v:1:p:7-25
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