Claims
- 1. A computer-implemented method for calculating pricing information of a financial instrument comprising a plurality of underlying financial instruments, the method comprising:
calculating in a computer system, a default time vector for each of a plurality of default scenarios wherein each default time vector includes a measure of a likelihood of default for each of said plurality of underlying financial instruments; calculating in the computer system, one or more cash flows for a subset of said default scenarios; training in the computer system, a neural network with said subset of said default scenarios; and using said neural network in the computer system, to estimate one or more cash flows for a remaining number of said plurality of default scenarios.
- 2. The method of claim 1, further comprising the steps of:
determining in the computer system, a tranche impact parameter for one or more of said default scenarios in said subset of said default scenarios; training in the computer system, a support vector machine with said tranche impact parameters associated with said default scenarios in said subset of said default scenarios; and using a support vector machine in the computer system, to estimate a tranche impact parameter for one or more of said remaining number of said plurality of default scenarios; wherein the step of training in the computer system, a neural network with said subset of said default scenarios includes the step of: training in the computer system, a neural network with said tranche impact parameters associated with said default scenarios in said subset of said default scenarios; and wherein the step of using said neural network in the computer system, to estimate one or more cash flows for a remaining number of said plurality of default scenarios includes the step of: using said neural network in the computer system, to estimate one or more cash flows for said remaining number of said plurality of default scenarios based on said tranche impact parameters.
- 3. A computer-implemented method for calculating pricing information of a financial instrument comprising a plurality of underlying financial instruments, the method comprising:
calculating in a computer system, a default vector for each of a plurality of default scenarios, wherein the default vector represents an aggregation of defaults occurring during a finite time interval; calculating in the computer system, one or more cash flows for a subset of said default scenarios; training in the computer system, a neural network with said subset of said default scenarios; and using said neural network in the computer system, to estimate one or more cash flows for a remaining number of said plurality of default scenarios.
- 4. A computer-implemented method for calculating pricing information of a financial instrument comprising a plurality of underlying financial instruments, the method comprising:
calculating in a computer system, a default time vector for each of a plurality of default scenarios wherein each default time vector includes a measure of a likelihood of default for each of said plurality of underlying financial instruments; calculating in the computer system, one or more cash flows for a subset of said default scenarios; using in a computer system, a first method selected from the group comprising linear regression, kernel methods, and regression trees to estimate one or more cash flows for a remaining number of said plurality of default scenarios.
- 5. The method of claim 4, further comprising the steps of:
determining in the computer system, a tranche impact parameter for one or more of said default scenarios in said subset of said default scenarios; using in the computer system, a second method selected from the group comprising linear regression, kernel methods, and regression trees to estimate a tranche impact parameter for one or more of said remaining number of said plurality of default scenarios; and using in the computer system, the first method selected to estimate one or more cash flows for a remaining number of said plurality of default scenarios based on said tranche impact parameters.
- 6. The method of claim 1, wherein the number of default scenarios comprising the subset is increased.
- 7. The method of claim 1, wherein the number of default scenarios comprising the subset is decreased.
- 8. The method of claim 2, wherein the default impact parameter for a default scenario is set to 1 when a level of default falls within a level of subordination associated with a tranche within the default scenario; and the parameter is set to 0 when the level of default falls outside the level of subordination.
- 9. The method of claim 1, wherein said neural network is implemented in software.
- 10. The method of claim 1, wherein said neural network is implemented in hardware.
- 11. A computer system for calculating pricing information of a financial instrument comprising of a plurality of underlying financial instruments, the system comprising:
a programmable processor; a computer software executable on the computer system; a data storage system; at least one input device; and at least one output device; the computer software operative with the processor to cause the data storage system to receive a plurality of default scenarios via the at least one input device; and cause the processor to: calculate a default time vector for each of the plurality of default scenarios wherein each default time vector includes a measure of a likelihood of default for each of said plurality of underlying financial instruments; calculate one or more cash flows for a subset of said default scenarios; train a neural network with said subset of said default scenarios; use the neural network to estimate one or more cash flows for a remaining number of said plurality of default scenarios; and forward said one or more cash flows to the at least one output device.
- 12. The computer system of claim 11, wherein the computer software is further operative with the processor to further cause the processor to:
determine a tranche impact parameter for one or more of said default scenarios in said subset of said default scenarios; train a support vector machine with said tranche impact parameters associated with said default scenarios in said subset of said default scenarios; use the support vector machine to estimate a tranche impact parameter for one or more of said remaining number of said plurality of default scenarios; train the neural network with said tranche impact parameters associated with said default scenarios in said subset of said default scenarios; and use said neural network to estimate one or more cash flows for said remaining number of said plurality of default scenarios based on said tranche impact parameters.
- 13. A computer system for calculating pricing information of a financial instrument comprising of a plurality of underlying financial instruments, the system comprising:
a programmable processor; a computer software executable on the computer system; a data storage system; at least one input device; and at least one output device; the computer software operative with the processor to cause the data storage system to receive a plurality of default scenarios via the at least one input device; and cause the processor to: calculate a default vector for a plurality of default scenarios, wherein the default vector represents an aggregation of defaults occurring during a finite time interval; calculate one or more cash flows for a subset of said default scenarios; train a neural network with said subset of said default scenarios; use the neural network to estimate one or more cash flows for a remaining number of said plurality of default scenarios; and forward said one or more cash flows to the at least one output device.
- 14. A computer system for calculating pricing information of a financial instrument comprising of a plurality of underlying financial instruments, the system comprising:
a programmable processor; a computer software executable on the computer system; a data storage system; at least one input device; and at least one output device; the computer software operative with the processor to cause the data storage system to receive a plurality of default scenarios via the at least one input device; and cause the processor to: calculate a default time vector for each of the plurality of default scenarios wherein each default time vector includes a measure of a likelihood of default for each of said plurality of underlying financial instruments; calculate one or more cash flows for a subset of said default scenarios; use a first method selected from the group comprising linear regression, kernel methods, and regression trees to estimate one or more cash flows for a remaining number of said plurality of default scenarios; and forward said one or more cash flows to the at least one output device.
- 15. The system of claim 14, wherein the computer software is further operative with the processor to further cause the processor to:
determine a tranche impact parameter for one or more of said default scenarios in said subset of said default scenarios; use a second method selected from the group comprising linear regression, kernel methods, and regression trees to estimate a tranche impact parameter for one or more of said remaining number of said plurality of default scenarios; and use the first method selected to estimate one or more cash flows for a remaining number of said plurality of default scenarios based on said tranche impact parameters.
- 16. The system of claim 11, wherein the number of default scenarios comprising the subset is increased.
- 17. The system of claim 11, wherein the number of default scenarios comprising the subset is decreased.
- 18. The system of claim 12, wherein the default impact parameter for a default scenario is set to 1 when a level of default falls within a level of subordination associated with a tranche within the default scenario; and the parameter is set to 0 when the level of default falls outside the level of subordination.
- 19. The system of claim 11, wherein said neural network is implemented in software.
- 20. The system of claim 11, wherein said neural network is implemented in hardware.
CROSS REFERENCE TO RELATED APPLICATIONS
[0001] The following application claims priority to U.S. Provisional Patent Application No. 60/452,239 filed Mar. 5, 2003 and entitled “Intelligent Simulation Analysis Method and System”.
Provisional Applications (1)
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Number |
Date |
Country |
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60452239 |
Mar 2003 |
US |