研究生: |
簡嘉佑 Chien, Chia-Yu |
---|---|
論文名稱: |
Entropy-Based Importance Sampling for Lévy Processes 在Lévy 隨機過程下的相對熵重要抽樣法 |
指導教授: |
韓傳祥
Han, Chuan-Hsiang |
口試委員: |
吳慶堂
顏如儀 許順吉 |
學位類別: |
碩士 Master |
系所名稱: |
科技管理學院 - 計量財務金融學系 Department of Quantitative Finance |
論文出版年: | 2016 |
畢業學年度: | 104 |
語文別: | 英文 |
論文頁數: | 44 |
中文關鍵詞: | 重要抽樣法 |
外文關鍵詞: | Levy Process |
相關次數: | 點閱:2 下載:0 |
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重要抽樣法是一種主要的變異數縮減技術之一。藉由適當選擇新的機率測度,可以有效降低估計的標準誤差。然而,選擇新的機率測度的方式不只一種,所以我選擇最小熵測度作為新測度。此種方法稱為相對熵重要抽樣法。
本篇論文將會討論四種Lévy 隨機過程下的相對熵重要抽樣法。最後會討論模型的參數估計。
Importance sampling the approach of variance reduction is one of the most important methods to estimate the probability of rare events. By properly changing of measure, this method can reduce the variance of new estimator. However, there are several ways of choosing the appropriate probability measure to implement importance sampling. The “Minimal Entropy Measure” is chosen as suitable probability measure, which is entropy-based importance sampling.
This article takes the Lévy Processes as examples, such as jump diffusion process, variance gamma process and normal inverse Gaussian process. Moreover, our method works on stochastic volatility jump model. We compare the numerical results with basic Monte Carlo and other distance function to demonstrate that this method is effective. Finally, we estimate the parameters by method of moment on examples of Lévy Process, and briefly describe estimation of parameters of stochastic volatility jump model by Markov chain Monte Carlo method.
[1] J.-W. Lee, “Portfolio Risk Management with Entropy-Based Importance Sampling,” Institute of Mathematical modeling and Scientific Computing, National Chiao Tung University, July.2013.
[2] C.-H. Cheng, “Explanation of Design-point Importance Sampling in a New Framework”, Master Thesis, National Taiwan University.
[3] C.-H. Han, W.-H. Liu, and T.-Y. Chen, “VaR/CVaR Estimation under Stochastic Volatility Model”, International Journal of Theoretical & Applied Finance. Volume 17, Issue 02, March 2014
[4] Steven E. Shreve, “Stochastic Calculus for Finance ll: Continuous-time Model”, Chapter 11, Springer Finance.
[5] Dilip B. Madan, Peter P. Carr, and Eric C. Chang, “The Variance Gamma Process and Option Pricing”, European Finance Review 2, 79-105, 1998.
[6] Yoshio Miyahara, “Option Pricing in Incomplete Markets: Modeling Based on Geometric Lévy Processes and Minimal Entropy Martingale Measures”, Imperial College Press, 2012.
[7] Rama Cont, and Peter Tankov, “Financial Modeling with Jump Processes”, Chapman & Hall/CRC, 2004.
[8] R. Korn, E. Korn, and G. Kroisandt, “Monte Carlo Methods and Models in Finance and Insurance”, Chapman & Hall/CRC, 2010.
[9] Hans U. Gerber, and Elias S.W. Shiu, “Option Pricing by Esscher Transform,” Transactions of Society of Actuaries VOL. 46, 94-135, 1994
[10] Barndorff-Nielsen, and Ole E., “Process of normal inverse Gaussian type,” Finance and Stochastics, Volume 2, Issue 1, 41-68, November 1997.
[11] Robert C. Merton, “Option pricing when underlying stock returns are discontinuous,” Journal of Financial Economics Vol 3, 125-144, March 1976.
[12] C. Y. Yang, “Importance Sampling via The Cross-Entropy for Portfolio Credit Risk,” Master Thesis, Department of Applied Mathematics, National Chiao Tung University, 2016.
[13] B. Eraker, “Do Stock Prices and Volatility Jump? Reconciling Evidence from Spot and Option Prices,” The Journal of Finance VOL. LIX, NO. 3, 1367-1403, 2004.
[14] B. Eraker, M. Johannes, and N. Polson, “The Impact of Jumps in Volatility and Returns,” The Journal of Finance Vol. 58 Issue 3, 1269-1300, 2003.