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v2007.11.26 - Convex Optimization

v2007.11.26 - Convex Optimization

v2007.11.26 - Convex Optimization

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484 CHAPTER 7. PROXIMITY PROBLEMScone and because the objective function‖D − H‖ 2 F = ∑ i,j(d ij − h ij ) 2 (1216)is a strictly convex quadratic in D ; 7.15∑minimize d 2 ij − 2h ij d ij + h 2 ijDi,j(1217)subject to D ∈ EDM NOptimal solution D ⋆ is therefore unique, as expected, for this simpleprojection on the EDM cone.7.3.1.1 Equivalent semidefinite program, Problem 3, convex caseIn the past, this convex problem was solved numerically by means ofalternating projection. (Example 7.3.1.1.1) [106] [99] [134,1] We translate(1217) to an equivalent semidefinite program because we have a good solver:Assume the given measurement matrix H to be nonnegative andsymmetric; 7.16H = [h ij ] ∈ S N ∩ R N×N+ (1189)We then propose: Problem (1217) is equivalent to the semidefinite program,for∂ = ∆ [d 2 ij ] = D ◦D (1218)7.15 For nonzero Y ∈ S N h and some open interval of t∈R (3.2.3.0.2,D.2.3)d 2dt 2 ‖(D + tY ) − H‖2 F = 2 trY T Y > 07.16 If that H given has negative entries, then the technique of solution presented herebecomes invalid. Projection of H on K (1133) prior to application of this proposedtechnique, as explained in7.0.1, is incorrect.

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