Submitted:
21 July 2025
Posted:
24 July 2025
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Abstract
Keywords:
1. Introduction
2. State Space Model and Its Estimation
| Algorithm 1 Recursive Bayesian Algorithm |
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2.1. Kalman Filter and Smoother
| Algorithm 2 Kalman Filter |
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| Algorithm 3 Kalman Smoother |
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2.2. Parameter Estimation using EM algorithm
| Algorithm 4 EM algorithm |
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2.3. Particle Filter
2.3.1. SIS Particle Filter
| Algorithm 5 SIS Particle Filter |
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2.3.2. SIR Particle Filter
| Algorithm 6 SIR Particle Filter |
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2.3.3. Auxiliary Particle Filter
| Algorithm 7 Auxiliary Particle Filter |
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2.4. Particle Filter with Parameter Learning
2.4.1. Particle Learning
- the sufficient statistics of the parameter vector ,
- the sufficient statistics of hidden states , , and
- the current value of the parameter vector, :
| Algorithm 8 Particle Learning |
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3. Statistical Factor Analysis
3.1. MLE Factor Analsis
| Algorithm 9 EM algorithm for Statistical Factor Analysis |
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3.2. Mixture of Factor Analyzer
| Algorithm 10 EM algorithm for Mixture of Factor Analyzer |
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3.3. Regime Switching Dynamic Factor Model
3.3.1. Methods
| Algorithm 11 PL for Regime Switching Dynamic Factor Model |
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3.3.2. Simulation Analysis



4. Results in Statistical Arbitrage Strategy
4.1. Market Neutral Strategy
4.2. Performance Comparison


5. Discussion
Appendix A. Probability Density Function of p(yt ∣zt−1)
Appendix B. Probability Density Function of p(xt ∣xt−1,θ t−1, yt
Appendix C. Conjugate Prior of Categorical Distribution
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