Pricing Pandemic Bonds under Hull–White & Stochastic Logistic Growth Model
Abstract
:1. Introduction
2. Literature Review
3. The World Bank Issued Pandemic Bond
4. The Future of Pandemic Bonds
5. Materials and Methods
5.1. Proposed CAT Bond
5.2. Trigger
5.2.1. Trigger of World Bank Issued Pandemic Bond
- Total confirmed deaths should be greater than or equal to 2500.
- The rolling total case () amount must be greater than or equal to 250.
- The growth rate () must be positive.
5.2.2. Trigger of Our Model
- The seven-day moving average(MA) for daily new death, , should exceed before the bond maturity time T AND
- At the time when the seven-day moving average for the daily new death, , exceeds , the seven-day moving average for the daily new infection, , should exceed AND
- When seven-day average for the daily new death exceeds and the seven-day average for the daily new infection exceeds , the growth rate, , need to be positive. The outbreak growth rate is defined using the following equation.
5.3. Interest Rate Process
Calibration vs. MLE Estimation of Parameters of Hull–White Model
5.4. Payout Structure
5.5. Pricing Model
5.6. Probability Distribution for the Pandemic Risk
5.7. Pandemic Bond Price
6. Stochastic Logistic Growth Model
The Model
- The zero solution is globally asymptotically stable almost surely if
- The positive equilibrium solution K is globally asymptotically stable almost surely if
7. Numerical Simulation 1
7.1. Bond Coupons
- Model Calibration: In order to calibrate the Hull–White one-factor model, both the term structure of spot rates and implied volatilities are required. Unlike some other interest rate models, which uses historical series data to calculate parameters, the Hull–White model utilizes cross-sectional data from a single point in time Kladívko and Rusý (2023) to calibrate the model. For our calibration, we utilized LIBOR spot rates with various tenors (1D, 1W, 1M, 2M, 3M, and 6M) on July 7, 2017, as well as ICE Swap rates with tenors (1Y, 2Y, 3Y, 4Y, 5Y, 6Y, 7Y, 8Y, 9Y, 10Y, and 15Y) to obtain the full term structure of interest rates for that date ICE Benchmark Administration (2023). Normally, implied volatilities for 7 July 2017 would be obtained using interest rate derivatives such as swaptions. However, since we lack access to these data, we derived historical volatilities from forward rate curves constructed using daily ICE Swap rate curves from 14 August 2014 to 7 July 2017. These historical volatilities were used in place of implied volatilities. The parameter in Equation (8) was established as , based on the values in Table 5 for 2014, 2015, and 2016 in Kladívko and Rusý (2023).
- Simulation: Post-calibration, the model is employed to simulate short rates (instantaneous interest rates at specific points in time) 5000 times within the designated time interval. Our focus lies on the 6-month USD LIBOR rates. For each simulated short rate path, we can obtain the short rate values for the subsequent 6 months and compute the average rate during that period. This average rate can be called as the approximated 6M USD LIBOR rate for that particular date within that path. Since we possess 5000 such rates for that date (derived from 5000 sample paths), we once again calculate the average. This average is considered as the 6M USD LIBOR rate for that date, utilized for subsequent computations. When simulating paths, we assumed that an year is 252 days (trading days) and used 126 days for 6 months.
7.2. Probability of a Pandemic Event
7.3. Trigger Event
Algorithm 1 The algorithm to calculate bond price under the 2009 H1N1 Influenza pandemic scenario | |
Require: Predicted bond coupon payments | ▹ see Section 7.1 and Table 3 |
Require: Investors expected annual return rate y (calculated as 8.2837%) | ▹ see |
Equation (32) | |
▹ see Table 4 | |
▹ see Table 4 | |
▹ see Table 4 | |
▹ we set both rates to be same, since it is not possible to calculate without | |
real data | |
▹ we set both rates to be same | |
▹ time step of the simulation is set to 1 day | |
▹ Number of steps. This is the number of days between 7 July 2017–15 July 2020. | |
▹ This is the trigger for number of infected | |
▹ This is the trigger for number of death | |
▹ and are correlated stochastic processes. See Equation (29) | |
▹ Number of simulation paths | |
▹ Number of triggered events | |
▹ The time, triggering event occurred, place holder | |
▹ Price of the pandemic bond(triggered), place holder | |
▹ the price of the bond investor willing to pay if no pandemic occur. | |
This is the selling price of World Bank pandemic bond | |
▹ probability of Pandemic. See Equation (34) | |
for to M do | |
Simulate solution to stochastic differential equations with time step size and number of steps N. Solution paths are and Calculate daily increments using and Starting day 7 to day 1104, calculate past seven day average for daily new infections and deaths. | |
Seven day average paths are | ▹ see Section 5.2.2 |
Calculate standard deviation of past seven day daily new infections | |
Calculate growth rate | ▹ see Equation (6) |
if then | |
▹ Add time of the trigger event to the set | |
Bond Value based on coupons paid until time t | ▹ see Equation (33) |
end if | |
end for | |
average of values in set | |
▹ P(H) from above. See Equation (15) | |
8. Numerical Simulation 2
- The investor want to know the fair price based on future interest rate movements, opposed to setting fixed required yield rate.
- Some model parameters are calibrated using COVID-19 data. Most other past pandemics do not have day to day records of number of infections, death, etc. But COVID-19 may be the first pandemic where humans were able to record day-to-day statistics. Therefore, the model can be calibrated using daily data instead of using aggregate numbers.
8.1. Bond Parameters
8.2. Interest Rate Model Parameters
8.3. Calculating Probability of a Pandemic Event and Estimating Parameters for and
- Calculate the maximum. This gives and .
- Calculate the average of nonzero growth rates. This gives and .
- Calculate the average of growth rates up to certain date such as right before the growth rates become close to zero. If we use first the 50 days, then and .
- Fit a parametric distribution such as log normal or gamma and use statistics such as mean or median of the fitted distribution as the growth rate.
9. Discussion
- We proposed a pandemic bond pricing framework based on the stochastic logistic model and the Hull–White interest rate model.
- We review the details of the World Bank-issued pandemic bond.
- We used past four influenza pandemics to price World Bank issued pandemic bond, and hence demonstrating how to use the model when aggregate information of past pandemics is available. Even though we used information from four pandemics, the example shows how to use all available past pandemic scenarios in the modeling process.
- We used COVID-19 data to calibrate the model parameters using a data-driven approach and price a pandemic bond. Therefore, we demonstrate how to use the model when detailed data are available. The purpose of using COVID-19 data is not to claim that future pandemics would be look like COVID -19 but to demonstrate a data-driven approach.
- We showed how to use a parameter grid to remove any restrictions for and calculate across all possible combinations to obtain the fair price of a pandemic bond.
- We calculate the price of the bond under two different scenarios. First, when an investor knows the required yield, find the price he/she is willing to pay. Second, the fair price of the pandemic bond under the model.
- We created an algorithm to implement the model and made R codes and other data sets available for future research/testing and reproducibility.
10. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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i | |
---|---|
1 | |
2 | |
3 | |
4 | |
5 |
Face Value | Settl. Date | Maturity Date | Issue Price | Bond Coupon | Day Count | Coupon Payment Dates |
---|---|---|---|---|---|---|
USD 225M | 7 July 2017 | 15 July 2020 | 100% | 6 month USD LIBOR +6.50% | Actual/360 | 15th day of each month |
including 15 August 2017 | ||||||
to 15 July 2020 |
Date | Real 6M.LIBOR | Real.Coupon (USD Million) | Predicted 6M.LIBOR | Pred.Coupon (USD Million) | |
---|---|---|---|---|---|
2017-07-07 | 1.40000 | NA | NA | NA | |
1 | 2017-08-15 | 1.45333 | 1.941576 | 1.514160 | 1.941576 |
2 | 2017-09-15 | 1.47111 | 1.540958 | 1.541704 | 1.552743 |
3 | 2017-10-16 | 1.53316 | 1.544403 | 1.547542 | 1.558080 |
4 | 2017-11-15 | 1.61810 | 1.506217 | 1.534158 | 1.508914 |
5 | 2017-12-15 | 1.77443 | 1.522144 | 1.501944 | 1.506405 |
6 | 2018-01-15 | 1.89875 | 1.603171 | 1.481613 | 1.550377 |
7 | 2018-02-15 | 2.09644 | 1.627258 | 1.519304 | 1.546438 |
8 | 2018-03-15 | 2.34175 | 1.504377 | 1.556905 | 1.403378 |
9 | 2018-04-16 | 2.50313 | 1.768350 | 1.598791 | 1.611381 |
10 | 2018-05-15 | 2.49250 | 1.631817 | 1.644671 | 1.467906 |
11 | 2018-06-15 | 2.50375 | 1.742297 | 1.700423 | 1.578030 |
12 | 2018-07-16 | 2.51850 | 1.744477 | 1.751601 | 1.588832 |
13 | 2018-08-15 | 2.51063 | 1.690969 | 1.783887 | 1.547175 |
14 | 2018-09-17 | 2.57075 | 1.858442 | 1.815619 | 1.708552 |
15 | 2018-10-15 | 2.65375 | 1.587381 | 1.844416 | 1.455233 |
16 | 2018-11-15 | 2.86019 | 1.773539 | 1.877727 | 1.616731 |
17 | 2018-12-17 | 2.90463 | 1.872038 | 1.909304 | 1.675545 |
18 | 2019-01-15 | 2.84581 | 1.704589 | 1.931655 | 1.524186 |
19 | 2019-02-15 | 2.75375 | 1.810751 | 1.950721 | 1.633633 |
20 | 2019-03-15 | 2.67175 | 1.619406 | 1.966666 | 1.478876 |
21 | 2019-04-15 | 2.63763 | 1.777027 | 1.982977 | 1.640417 |
22 | 2019-05-15 | 2.55088 | 1.713306 | 1.996944 | 1.590558 |
23 | 2019-06-17 | 2.30875 | 1.866744 | 2.012034 | 1.752495 |
24 | 2019-07-15 | 2.21713 | 1.541531 | 2.027451 | 1.489606 |
25 | 2019-08-15 | 2.01400 | 1.688944 | 2.054883 | 1.652194 |
26 | 2019-09-16 | 2.07800 | 1.702800 | 2.080081 | 1.710977 |
27 | 2019-10-15 | 1.97725 | 1.554763 | 2.105046 | 1.555140 |
28 | 2019-11-15 | 1.91850 | 1.642467 | 2.132781 | 1.667228 |
29 | 2019-12-16 | 1.89338 | 1.631084 | 2.157987 | 1.672601 |
30 | 2020-01-15 | 1.86500 | 1.573759 | 2.176524 | 1.623373 |
31 | 2020-02-17 | 1.72488 | 1.725281 | 2.189160 | 1.789533 |
32 | 2020-03-16 | 0.84375 | 1.439354 | 2.199016 | 1.520603 |
33 | 2020-04-15 | 1.15013 | 1.376953 | 2.207977 | 1.631066 |
34 | 2020-05-15 | 0.65900 | 1.434399 | 2.216058 | 1.632746 |
35 | 2020-06-15 | 0.43088 | 1.387056 | 2.223039 | 1.688736 |
36 | 2020-07-15 | NA | 1.299540 | NA | 1.635570 |
2017-07-07 | real yield (no COVID): 8.8978% | pred. yield (no COVID): 8.6734% |
Year | Virus Type | Estimated Reproduction Number () | Estimated Total Death | Case Fatality Rate (%) | Average Infectious Period () | Growth Rate for Infection () | Estimated Total Infections |
---|---|---|---|---|---|---|---|
1918 | H1N1 | 1.2–3.0 | 20–50 M | 2.5 | 4.1 days | 0.049–0.488 | 800–2000 M |
1957 | H2N1 | 1.5 | 1–4 M | 0.1–0.4 | 4 days | 0.125 | 1000 M |
1968 | H3N2 | 1.3–1.6 | 1–4 M | 0.1–0.4 | 4 days | 0.075–0.150 | 1000 M |
2009 | H1N1 | 1.1–1.8 | 0.1–0.4 M | 0.048 | 2.5 days | 0.040–0.320 | 208–833 M |
Scenario | Spanish Flu (1918) | Asian Flu (1957) | HongKong Flu (1968) | Swine Flu (2009) |
---|---|---|---|---|
2000 M | 1000 M | 1000 M | 833 M | |
50 M | 4 M | 4 M | 0.4 M | |
0.049 | 0.125 | 0.075 | 0.04 | |
Bond Price | 195.5866 | 194.2548 | 194.8468 | 201.4460 M |
0.1392 | 0.1393 | 0.1391 | 0.1132 | |
Average price: 196.5335 |
0.04 | 0.08 | 0.12 | 0.16 | 0.20 | 0.24 | 0.28 | 0.32 | 0.36 | 0.40 | |
---|---|---|---|---|---|---|---|---|---|---|
Bond.Price | 195.70 | 198.92 | 203.54 | 207.80 | 212.93 | 220.20 | 224.46 | 224.99 | 225.00 | 225.00 |
Prob.Trigger | 0.14 | 0.12 | 0.10 | 0.08 | 0.06 | 0.02 | 0.00 | 0.00 | 0.00 | 0.00 |
Parameter | Value |
---|---|
Settle Date | 6 January 2023 |
Maturity Date | 15 January 2026 |
Term | 3 years |
M | USD 225M |
Coupons | 6 month USD LIBOR + 6.5% |
Payment Date | 15th day of each month including 15 February 2023 to 15 January 2026 |
Day convention | Actual/360 |
Hull–White Model | Calibrated to 6 January 2023 |
Stochastic-logistic growth model | Calibrated using COVID-19 data |
5000 | |
2500 |
Scenario | I | II | III |
---|---|---|---|
# Simulations | 5000 | 5000 | 5000 |
100.46 M | 100.46 M | 100.46 M | |
1.1 M | 1.1 M | 1.1 M | |
1 | 1 | 1 | |
1 | 1 | 1 | |
0.4842 | 0.0147 | 0.2064 | |
0.0521 | 0.0522 | 0.1309 | |
0.0020 | 0.0020 | 0.0067 | |
0.5 | 0.5 | 0.5 | |
Bond Price | 192.3830 | 205.3894 | 192.4687 |
0.1468 | 0.1161 | 0.1468 | |
0.1468 | 0.1468 | 0.1468 | |
Average price: USD 196.747 million |
0.1, 0.2, 0.3, 0.4 | |
0.1, 0.2, 0.3, 0.4 | |
0.02, 0.04, 0.06, 0.08, 0.10, 0.12, 0.14, 0.16, 0.18, 0.20 | |
0.02, 0.04, 0.06, 0.08, 0.10, 0.12, 0.14, 0.16, 0.18, 0.20 | |
0.1, 0.2, 0.3, 0.4, 0.5, 0.6, 0.7, 0.8, 0.9 | |
# of parameter combinations | 14,400 |
# Simulations | each combination 100 times |
Average bond price under this grid | USD 205.3762 million |
Average probability for trigger activation | 0.0887 |
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Manathunga, V.; Deng, L. Pricing Pandemic Bonds under Hull–White & Stochastic Logistic Growth Model. Risks 2023, 11, 155. https://doi.org/10.3390/risks11090155
Manathunga V, Deng L. Pricing Pandemic Bonds under Hull–White & Stochastic Logistic Growth Model. Risks. 2023; 11(9):155. https://doi.org/10.3390/risks11090155
Chicago/Turabian StyleManathunga, Vajira, and Linmiao Deng. 2023. "Pricing Pandemic Bonds under Hull–White & Stochastic Logistic Growth Model" Risks 11, no. 9: 155. https://doi.org/10.3390/risks11090155
APA StyleManathunga, V., & Deng, L. (2023). Pricing Pandemic Bonds under Hull–White & Stochastic Logistic Growth Model. Risks, 11(9), 155. https://doi.org/10.3390/risks11090155