Simulation-Based Estimation of Contingent-Claims Prices
A new methodology is proposed to estimate theoretical prices of financial contingent claims whose values are dependent on some other underlying financial assets. In the literature, the preferred choice of estimator is usually maximum likelihood (ML). ML has strong asymptotic justification but is not...
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sg-smu-ink.soe_research-13852020-02-24T07:48:06Z Simulation-Based Estimation of Contingent-Claims Prices PHILLIPS, Peter C. B. YU, Jun A new methodology is proposed to estimate theoretical prices of financial contingent claims whose values are dependent on some other underlying financial assets. In the literature, the preferred choice of estimator is usually maximum likelihood (ML). ML has strong asymptotic justification but is not necessarily the best method in finite samples. This paper proposes a simulation-based method. When it is used in connection with ML, it can improve the finite-sample performance of the ML estimator while maintaining its good asymptotic properties. The method is implemented and evaluated here in the Black-Scholes option pricing model and in the Vasicek bond and bond option pricing model. It is especially favored when the bias in ML is large due to strong persistence in the data or strong nonlinearity in pricing functions. Monte Carlo studies show that the proposed procedures achieve bias reductions over ML estimation in pricing contingent claims when ML is biased. The bias reductions are sometimes accompanied by reductions in variance. Empirical applications to U.S. Treasury bills highlight the differences between the bond prices implied by the simulation-based approach and those delivered by ML. Some consequences for the statistical testing of contingent-claim pricing models are discussed. 2009-09-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/soe_research/386 info:doi/10.1093/rfs/hhp009 https://ink.library.smu.edu.sg/context/soe_research/article/1385/viewcontent/Simulation_based_Estimation_of_Contingent_claims_Prices_sv.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Economics eng Institutional Knowledge at Singapore Management University Bias Reduction Bond Pricing Indirect Inference Option Pricing Simulation-based Estimation Econometrics Finance |
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Bias Reduction Bond Pricing Indirect Inference Option Pricing Simulation-based Estimation Econometrics Finance PHILLIPS, Peter C. B. YU, Jun Simulation-Based Estimation of Contingent-Claims Prices |
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A new methodology is proposed to estimate theoretical prices of financial contingent claims whose values are dependent on some other underlying financial assets. In the literature, the preferred choice of estimator is usually maximum likelihood (ML). ML has strong asymptotic justification but is not necessarily the best method in finite samples. This paper proposes a simulation-based method. When it is used in connection with ML, it can improve the finite-sample performance of the ML estimator while maintaining its good asymptotic properties. The method is implemented and evaluated here in the Black-Scholes option pricing model and in the Vasicek bond and bond option pricing model. It is especially favored when the bias in ML is large due to strong persistence in the data or strong nonlinearity in pricing functions. Monte Carlo studies show that the proposed procedures achieve bias reductions over ML estimation in pricing contingent claims when ML is biased. The bias reductions are sometimes accompanied by reductions in variance. Empirical applications to U.S. Treasury bills highlight the differences between the bond prices implied by the simulation-based approach and those delivered by ML. Some consequences for the statistical testing of contingent-claim pricing models are discussed. |
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PHILLIPS, Peter C. B. YU, Jun |
author_facet |
PHILLIPS, Peter C. B. YU, Jun |
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PHILLIPS, Peter C. B. |
title |
Simulation-Based Estimation of Contingent-Claims Prices |
title_short |
Simulation-Based Estimation of Contingent-Claims Prices |
title_full |
Simulation-Based Estimation of Contingent-Claims Prices |
title_fullStr |
Simulation-Based Estimation of Contingent-Claims Prices |
title_full_unstemmed |
Simulation-Based Estimation of Contingent-Claims Prices |
title_sort |
simulation-based estimation of contingent-claims prices |
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Institutional Knowledge at Singapore Management University |
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2009 |
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https://ink.library.smu.edu.sg/soe_research/386 https://ink.library.smu.edu.sg/context/soe_research/article/1385/viewcontent/Simulation_based_Estimation_of_Contingent_claims_Prices_sv.pdf |
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