1 / 10

Variance Reduction Fall 2012

Variance Reduction Fall 2012. By Yaohang Li, Ph.D. Review. Last Class Numerical Integration Monte Carlo Integration Crude Monte Carlo Hit-or-Miss Monte Carlo Comparison General Principle of Monte Carlo This Class Variance Reduction Methods Assignment #2 Next Class Random Numbers.

Download Presentation

Variance Reduction Fall 2012

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Variance ReductionFall 2012 By Yaohang Li, Ph.D.

  2. Review • Last Class • Numerical Integration • Monte Carlo Integration • Crude Monte Carlo • Hit-or-Miss Monte Carlo • Comparison • General Principle of Monte Carlo • This Class • Variance Reduction Methods • Assignment #2 • Next Class • Random Numbers

  3. Variance Reduction Methods • Variance Reduction Techniques • Employs an alternative estimator • Unbiased • More deterministic • Yields a smaller variance • Methods • Stratified Sampling • Importance Sampling • Control Variates • Antithetic Variates

  4. Stratified Sampling • Idea • Break the range of integration into several pieces • Apply crude Monte Carlo sampling to each piece separately • Analysis of Stratified Sampling • Estimator • Variance • Conclusion • If the stratification is well carried out, the variance of stratified sampling will be smaller than crude Monte Carlo

  5. Importance Sampling • Idea • Concentrate the distribution of the sample points in the parts of the interval that are of most importance instead of spreading them out evenly • Importance Sampling • where g and G satisfying • G(x) is a distribution function

  6. Importance Sampling • Variance • How to select a good sampling function? • How about g=cf? • g must be simple enough for us to know its integral theoretically.

  7. Control Variates • Control Variates • (x) is the control variate with known integral • Estimator • t-t’+’ is the unbiased estimator • ’ is the first integral • Variance • var(t-t’+’)=var(t)+var(t’)-2cov(t,t’) • if 2cov(t,t’)<var(t’), then the variance is smaller than crude Monte Carlo • t and t’ should have strong positive correlation

  8. Antithetic Variates • Main idea • Select a second estimate that has a strong negative correlation with the original estimator • t’’ has the same expectation of t • Estimator • [t+t’’]/2 is an unbiased estimator of  • var([t+t’’]/2)=var(t)/4+var(t’’)/4+cov(t,t’’)/2 • Commonly used antithetic variate • (t+t’’)/2=f()/2+ f(1-)/2 • If f is a monotone function, f() and f(1-) are negatively correlated

  9. Summary • Analysis of Monte Carlo Integration • Curse of Dimensionality • Error Analysis of Monte Carlo Integration • Variance Reduction Methods • Stratified Sampling • Importance Sampling • Control Variates • Antithetic Variates

  10. What I want you to do? • Review Slides • Work on your Assignment 1 if you haven’t finished • Work on your Assignment 2

More Related