Submitted:
07 September 2025
Posted:
09 September 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Methodology
2.1. GARCH for Volatility Estimation
2.2. BiLSTM for Bidirectional Temporal Learning
2.3. KAN for Nonlinear Refinement
2.4. Hybrid Model Integration of GARCH–BiLSTM–KAN
3. Data Description
4. Empirical Results




5. Discussion
6. Conclusion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A. Additional Training Curves and Details
| Distribution | Distribution-Specific Param | Log-Likelihood | AIC | ||
|---|---|---|---|---|---|
| Conditional Normal | 0.979 | — | |||
| Conditional Student-t | 0.976 | ||||
| GED | 0.977 |






| Competitor | Mean Loss Difference | DM Statistic | p-value |
|---|---|---|---|
| EGARCH | |||
| GARCH | |||
| GARCH-LSTM | |||
| LSTM-KAN | |||
| LSTM | |||
| CNN-LSTM | |||
| CNN–LSTM–KAN |
Appendix B. Robustness to Return Definitions
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| 1 | Periods of high volatility are often followed by high volatility, and low volatility tends to persist. |
| 2 | The assumption that the variance of error terms is constant over time. |
| 3 | |
| 4 |






| Component | Key Parameters | Values |
|---|---|---|
| GARCH | Order | (1,1) |
| Distribution | Conditional Normal | |
| BiLSTM | Hidden Units (per direction) | 32 |
| Number of Layers | 2 | |
| Optimizer | Adam | |
| Learning Rate | 0.01 | |
| KAN | Basis Functions | Cubic B-splines (5 knots) |
| Width Structure | [64,1] | |
| Optimizer | Adam | |
| Learning Rate | 0.01 | |
| Training | Loss Function | MSE |
| Epochs | 100 | |
| Lookback Window | 20 (Among 10/20/30/40, 20 has the lowest RMSE) |
|
| Evaluation Metrics | Primary Metrics | RMSE, MAE, |
| Train-Test Split | 80%–20% | |
| Feature Scaling | MinMaxScaler () |
| Statistic | Count | Mean | Std | Min | 25% | 50% | 75% | Max |
|---|---|---|---|---|---|---|---|---|
| Value | 9,866 | 47.73 | 29.64 | -36.98 | 20.22 | 40.69 | 71.47 | 145.31 |
| Model | RMSE | MAE | |
|---|---|---|---|
| GBK-Net | 2.4876 | 1.5156 | 0.9810 |
| CNN–LSTM–KAN | 2.6047 | 1.6464 | 0.9792 |
| CNN-LSTM | 2.7639 | 1.7693 | 0.9765 |
| LSTM | 2.8802 | 1.8445 | 0.9745 |
| LSTM-KAN | 2.9223 | 1.8780 | 0.9738 |
| GARCH-LSTM | 3.0753 | 1.9996 | 0.9710 |
| GARCH | 4.8921 | 3.2157 | 0.9235 |
| EGARCH | 5.1236 | 3.4589 | 0.9187 |
| Model | RMSE | MAE | |
|---|---|---|---|
| GBK-Net | 2.4876 | 1.5156 | 0.9810 |
| GARCH-KAN (Ablated BiLSTM) | 9.2605 | 8.3800 | 0.7367 |
| GARCH-BiLSTM-FC (Ablation of KAN) | 5.0026 | 3.6244 | 0.9232 |
| BiLSTM-KAN (Ablated GARCH) | 3.4220 | 2.4248 | 0.9640 |
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