Regime Tracking in Markets with Markov Switching
Abstract
:1. Introduction
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- –
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2. Market with Markov Regime Switching
2.1. Market Description and Arising Problems
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- is an -measurable initial condition with the distribution function ;
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- is an -adapted standard Wiener process;
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- and are - and -dimensional functions of the instant interest rate and volatility (here is a symmetric non-negative matrix-valued function, and the notation stands for its symmetric square root);
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- is an -adapted process, describing the effect of the uncontrolled exogenous factors on the market.
- i.
- is a cádlág process [26].
- ii.
- Without loss of generality, . This condition also guarantees that the filtration is continuous from the right.
- iii.
- The TRM consists of cádlág elements on . All off-diagonal elements of are strictly positive, i.e., . All elements of the initial distribution are also strictly positive.
- iv.
- ; hence, the functions a and b have the form
- v.
- and are mutually independent; .
2.2. Market Regime Tracking as Optimal Filtering Problem
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- The process with a.s. continuous trajectories;
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- The process with counting components;
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- The piecewise constant process with jumps, occurred at nonrandom instants.
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- is a discontinuity set of the process , ;
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- is a Moore–Penrose pseudoinverse matrix;
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- 1 is a row vector of an appropriate dimensionality, formed by units:
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3. Market Completion by Derivatives
3.1. Fair Derivative Price
- The process is a martingale with respect to .
- Under , the price process is the unique strong solution to the SDS
3.2. Market Completion
- vi.
- The matrix
4. Algorithms of Markov Regime Tracking
4.1. Algorithm of Numerical Solution to Generalized Black–Scholes Equation for Markov Regime Switching Market
- A1.
- All coefficients in (20) are time invariant:The condition is non-restrictive: the coefficients could be piecewise constant on the time steps. Actually, if we normalize the time to one year, treating it as 250 trading days per 8 h each, then the time increment 0.0005 would correspond to 1 h, and r, , , and would look like the constants on on the time steps.
- A2.
- Each contingent claim refers only to single underlying security, i.e., for some . This condition excludes the case of the compound contingent claims.
4.2. Algorithm of Regime Tracking by Discrete Time Observations
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- Noiseless prices of N underlying securities
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- Indirect noisy observations of M derivative security prices
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- are algebras generated by all available observations obtained till the moment ;
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- are algebras, generated only by observations of the derivative prices;
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- are algebras generated by the underlying security and market regime, available on the time grid till the moment .
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- is the Gaussian pdf with the mean M and non-degenerate covariance matrix K;
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- are the midpoints of the smaller intervals of the length , , (here and below is an integer part of a);
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- is an auxiliary function with , .
4.3. Algorithm of Regime Tracking by High-Frequency Multivariate Point Observations
- , i.e., at the increasing sequence of the random moments traders observe the exact price of the basic security.
- Given the market regime Z, the random inter-arrival times are mutually independent. The distribution of depends on the regime state with the known conditional moments
- , where are multiplicative random errors, which are conditionally independent, given the market regime Z. This means that the noisy observations of the derivatives are available to the traders at the increasing sequence of the random moments . The distribution of depends on the regime state with the known conditional moments
- Given the market regime Z, the random inter-arrival times are mutually independent. The distribution of depends on the regime state and has the known conditional moments
- Given the market regime Z, the sequences , , and are mutually independent.
- The mean values and are much less than the time step h:
- The initial condition:
- The prediction step:
- The correction step:
5. Numerical Examples
5.1. Regime Tracking by Time-Discretized Continuous Observations
- C1.
- The precise security price is obtained with the time step h.
- C2.
- The combination of and the option price is corrupted by a multiplicative noise , where is a sequence of independent identically distributed lognormal random values with the parameters and .
- C3.
- The combination of and indirect observations of the option price . The latter ones represent a chain with values in the set of the possible option prices . The observations possess the Markov property, given the trajectory Z. The conditional transition matrices are formed by the probabilities . Here, , () are matrix exponentials , calculated by the following TRMs:
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- The precise price of the underlying security (indicated on the left axis);
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- The precise option price (indicated on the left axis);
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- The number of the market regime State No. (indicated on the right axis).
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- The exact regime state ;
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- The regime filtering estimate , calculated by observation complex C1;
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- The regime filtering estimate , calculated by observation complex C2;
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- The regime filtering estimate , calculated by observation complex C3.
5.2. Regime Tracking by High-Frequency Multivariate Point Observations
- C4.
- There are only the noiseless observations of the underlying security, received at the random instants . Given the fixed regime-switching trajectory, the inter-arrival times are mutually independent exponentially distributed values [46]. The distribution parameter depends on the current market regime and is set by the vector 100,000, 95,000, 80,000, 90,000).
- C5.
- In addition to the underlying prices , there are available noisy option price observations , received at the random instants . As well as , the inter-arrival times between the option observations are mutually independent exponentially distributed values, given the fixed regime-switching trajectory. The distribution parameter depends on the current market regime and is set by the vector 90,000, 88,000, 85,000, 89,000). The multiplicative noise in has the lognormal distribution with the mean 0 and the variance , which are common for all market regimes.
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- The transformed inter-arrival times between the underlying price observations (on the left ordinate axis);
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- The transformed inter-arrival times between the option price observations (on the right ordinate axis);
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- The transformed underlying asset prices (on the left ordinate axis);
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- The transformed option price observations (on the left ordinate axis);
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- The market regime “State No.” (on the right ordinate axis).
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- The exact regime state ;
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- The regime-filtering estimate , calculated by observation complex C4;
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- The regime-filtering estimate , calculated by observation complex C5.
6. Conclusions
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- Discrete-time noiseless observations of the basic securities and noisy observations of the derivatives;
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- The observations of underlying and derivative prices in the form of the MPPs.
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
CLT | Central Limit Theorem |
HMM | Hidden Markov Model |
MJP | Markov Jump Process |
MPP | Multivariate Point Process |
MPR | Market Price of Risk |
Probability Density Function | |
SDS | Stochastic Differential System |
TRM | Transition Rate Matrix |
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Borisov, A. Regime Tracking in Markets with Markov Switching. Mathematics 2024, 12, 423. https://doi.org/10.3390/math12030423
Borisov A. Regime Tracking in Markets with Markov Switching. Mathematics. 2024; 12(3):423. https://doi.org/10.3390/math12030423
Chicago/Turabian StyleBorisov, Andrey. 2024. "Regime Tracking in Markets with Markov Switching" Mathematics 12, no. 3: 423. https://doi.org/10.3390/math12030423
APA StyleBorisov, A. (2024). Regime Tracking in Markets with Markov Switching. Mathematics, 12(3), 423. https://doi.org/10.3390/math12030423