1 / 20

A Complete Catalog of Geometrically non-isomorphic OA18

A Complete Catalog of Geometrically non-isomorphic OA18. Kenny Ye Albert Einstein College of Medicine. June 10, 2006, 南開大學. Outline. Construction of the Complete Catalog of OA18 Design Properties of OA18 for Response Surface Studies Model-Discrimination Model-Estimation.

Download Presentation

A Complete Catalog of Geometrically non-isomorphic OA18

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. A Complete Catalog of Geometrically non-isomorphic OA18 Kenny Ye Albert Einstein College of Medicine June 10, 2006, 南開大學

  2. Outline • Construction of the Complete Catalog of OA18 • Design Properties of OA18 for Response Surface Studies • Model-Discrimination • Model-Estimation

  3. Geometric Isomorphism, Cheng and Ye (AOS 2004) • For experiments with quantitative factors, properties of factorial designs depends on their geometric structure • Two designs are geometrically isomorphic if one can be obtained by a series of two kinds of operations: • Variable Exchange • Level Reversing • Tsai, Gilmore, Mead (Biometrika 2000) • Clark and Dean (Statistica Sinica 2001)

  4. Two geometric non-isomorphic designs

  5. Construction of the complete catalog of OA18 • Construct all geometrically non-isomorphic cases of OA(18,3m) • Check geometric isomorphism • Adding one factor at a time • Add the two-level column to the OA(18,3m). • Main difficulty: isomorphism checking

  6. Determine Geometric Isomorphism using Indicator Function • Indicator Function, Cheng and Ye(2004) • A factorial design is uniquely represented by a linear combination of orthonormal contrasts defined on a full factorial design • Variable exchange rearranges the position of the coefficients within sub-groups • level reversal changes the sign of the coefficients

  7. The Indicator Function Variable Exchange: Exchange A & B Level Reversing on factor B Example

  8. Grouping of the coefficientsExample:

  9. Total Number of Geometrically Non-Isomorphic OA18s

  10. Comparison to incomplete classification

  11. Combinatorial Non-isomorphic OA18s • Indicator function approach is not efficient for isomorphism checking • Subset of the geometrically non-isomorphic OA18s • In practice, the larger catalog is enough • Currently working with AM Dean to further classify into combinatorial isomorphism

  12. Response Surface Method • Original two-step approach • Factor screening • Response surface exploration • 3-level factorial designs for selecting response surface models - Cheng and Wu(2001 Statistica Sinica)

  13. Design properties for response surface studies • Three-level factorial designs can be used by response surface studies (Cheng and Wu, SS 2001) • Fitting second order polynomial model on projections • Estimation efficiency (Xu, Cheng, Wu Technometrics 2004) • Estimation Capacity • Information Capacity (Average Efficiency) • Model Discrimination Criteria (Jones, Li, Nachtsheim, Ye, JSPI, 2005)

  14. MDP: a measure of (linear) model discrimination • Maximum difference of predictions • Computation: Find the largest absolute eigenvalues of H1 – H2 • MDP is no greater than 1.

  15. EDP: another measure of (linear) model discrimination • Expected Distance of Predictions • D=(H1 – H2)(H1 – H2) • Maximize trace(D)

  16. MMPD and AEPD • Min-Max Prediction Difference (MMPD) • Average Expected Prediction Difference (AEPD)

  17. Model Discrimination Properties • Three-factor 2nd order models • MMPD > 0.75 in all the design • Complete Aliasing of 4-factor 2nd order models

  18. Estimation Capacity, OA(18,3m) • Number of full capacity designs

  19. Estimation Capacity, OA(18,213m) • Number of full capacity designs

  20. Acknowledgement • Joint work with Ko-Jen Tsai and William Li • Much of the work is in the Ph.D. dissertation of Ko-Jen Tsai

More Related