An iterative two-step algorithm for linear ... - Semantic Scholar
Recommend Documents
Placement (IMP) algorithm for the FOFSM with zero deadspace constraint. .... module; constraint (3) indicates that all the modules should be placed with no ...
The novel algorithm is based on an iterative scheme, exploiting a timing error function sampled at symbol rate. The symbol timing adjustment is implemented.
Jan 10, 2010 - Some methods have been proposed to solve the mixed equilibrium problem and the equilibrium problem. In 1997, Flaim and Antipen 4.
Dec 16, 2010 - the computerized ionospheric tomography (CIT) technique to recover a 2-D ...... toward the Ph.D. degree in geodesy and surveying engineering ...
module, and builds up a slicing tree in a bottom-up hierarchy. The second stage ... I. INTRODUCTION. Floorplanning is a critical phase in the physical design of.
[16] V. Solo, âThe limiting behavior of LMS,â IEEE Trans. Acoust., Speech, ... tion of the Wiener filter based on orthogonal projections,â IEEE Trans. Inform. Theory ...
solution of the original problem is obtained from numerical solutions of these ... There are certain disadvantages of the traditional splitting procedures and due to this .... Then, we will derive an algorithm for the new iterative splitting scheme.
Frequency Modulated Signal Parameters. Christophe De Luigi and Eric Moreau. AbstractâIn this letter, we consider the problem of estimation of a nonstationary ...
Leibler distance has appeared in various fields: statistics [8, 9], pattern ... 2. Problem statement. The algorithm described in this paper can be applied to any ... We first introduce definitions to be used throughout this manuscript. Let {x(t) : ..
Robert M. Freund. Sloan WP# 3559-93-MSA ... the set of LP feasible and optimal solutions (using these and other standard measures), and also on n (the ...
CTXk+l _ bTyk+1 ~ (1 _ 2/(nnk »(cTxk _ bTyk), nk+l _ 2 ~ (1 - l/(n + l»(nk -. 2) if nk > 2, nk+l ~ 2 ifnk ~ 2. (Corollary 2.2). The first inequality ensures that the duality ...
d à n transformation matrix that maximizes the Fisher criterion is determined. ... certain linear transformation, a measure of the between-class scatter over the ...
Non-Iterative Heteroscedastic Linear Dimension Reduction for. Two-Class Data. From Fisher to Chernoff. M. Loog1 and R. P. W. Duin2. 1 Image Sciences ...
1 School of Engineering and Computer Science, The Hebrew University of Jerusalem, Israel. 2 Mount Sinai ... 3 Dept. of Radiology, Hadassah Hebrew University Medical Center, Jerusalem, Israel. ... Israeli Ministry of Trade and Industry.
models, the computation cost of task (process) pi on processing element pej is .... the application on the target platform, an estimated Op needs to be used to ...
Dec 5, 2017 - Definition 1 (Independence Assumption) In an iterative algorithm for .... Algorithm 1 Phase Retrieval via randomized Kaczmarz method for real ...
Because the exact position of the boundary of the objects is unknown when using ... distance condition, the distance in y direction is a-1, a or a+1 (Figure 3).
In contrast, KPP assumes an integer-valued delay function. 1The fact that BSMA also spells \Banana Slug Multicast Algorithm" and that the authors' a liation is.
Moreover, our method gets higher score than the other three methods: Gibbs ..... Zare-Mirakabad F, Ahrabian H, Sadeghi M, Mohammadzadeh J, Hashemifar S, Nowzari-Dalini A, Goliaei B. ... Thompson W, Rouchka EC, Lawrence CE. Gibbs ...
Dec 24, 2007 - An iterative algorithm for state determination is presented that uses as physical input the ... whether the knowledge of the probability density functions for the position and ... The general problem of the determination of a quantum s
Jun 11, 2011 - the accurate recovery of the lost data without checkpoint- ing. .... a very good potential to scale to extreme scale computing and beyond.
May 30, 2016 - variational inequality problems and to find the zero points of ... coercive Legendre function, which is bounded, uniformly Fréchet differentiable.
Jun 6, 2006 - Bong Yeol CHOI. â ..... of gravity of the triangle. The weighing factors .... [4] R. He, C.G. Xie, R.C. Waterfall, M.S. Beck, and M.C. Beck, âEn-.
An iterative two-step algorithm for linear ... - Semantic Scholar
As test example we consider the obstacle problem with di erent obstacles. ..... obstacle functions corresponding to 1 and 2, respectively. We implemented and ...
Numer. Math. 68: 95{106 (1994)
Numerische Mathematik
c Springer-Verlag 1994 Electronic Edition
An iterative two-step algorithm for linear complementarity problems? Michal Kocvara?? , Jochem Zowe
Mathematisches Institut, Universitat Jena, Germany Received July 14, 1993 / Revised version received February 1994
Dedicated to Professor Josef Stoer on the occasion of his 60th birthday
Summary. We propose an algorithm for the numerical solution of large-scale symmetric positive-de nite linear complementarity problems. Each step of the algorithm combines an application of the successive overrelaxation method with projection (to determine an approximation of the optimal active set) with the preconditioned conjugate gradient method (to solve the reduced residual systems of linear equations). Convergence of the iterates to the solution is proved. In the experimental part we compare the eciency of the algorithm with several other methods. As test example we consider the obstacle problem with dierent obstacles. For problems of dimension up to 24 000 variables, the algorithm nds the solution in less then 7 iterations, where each iteration requires about 10 matrix-vector multiplications. Mathematics Subject Classi cation (1991): 65K10
1. Introduction We consider the symmetric linear complementarity problem (LCP): Find x 2 Rn such that (1) Ax ? b 0; x c; (x ? c)T (Ax ? b) = 0; here A is a given n n real symmetric positive de nite matrix and b; c are vectors in Rn . For completeness let us mention that (1) is equivalent to the convex quadratic programming problem ((1) are the Karush{Kuhn{Tucker conditions for (2)) min f (x) := 21 xT Ax ? xT b (2) s.t. x 2 S; where S = fy 2 Rn j yi ci ; i = 1; 2; : : :; ng: ? This research was supported by the German Scienti c Foundation (DFG) and the German-
Israeli Foundation for Scienti c Research and Development (GIF)
?? The author is on leave from the Czech Academy of Sciences, Prague, Czech Republic
Numerische Mathematik Electronic Edition { page numbers may dier from the printed version page 95 of Numer. Math. 68: 95{106 (1994)
96
M. Kocvara and J. Zowe
In the applications we have in mind, the matrix A will be large and sparse and thus iterative methods are well suited for the solution of (1). Many such methods are discussed in the literature. We mention three of them which are widely used in practice: (i) The successive overrelaxation method with projection (SORP) [7]; this method is quite popular due to its simplicity and robustness. (ii) The preconditioned conjugate gradient method combined with an active set strategy (PCGA) [8, 10]; this method is faster than SORP provided we start with a \good" active set. (iii) Multigrid methods (MG) [2, 5, 6]; these are the fastest ones but they need additional data for the auxiliary problem(s). In this paper we present a method which, for several large examples, proved to be faster than the SORP and PCGA ideas mentioned in (i) and (ii). The underlying idea copies the philosophy of the MG methods from (iii). Each iteration combines a relaxation step (which, in the multigrid terminology, is used to smooth the error and to nd an approximation of the set of active indices) with the approximate solution of an auxiliary problem (which aims at reducing the low-frequency components of the error). A similar two-step idea was proposed by More and Toraldo [9]; they couple at each step the gradient projection method with the conjugate gradient method. Our idea replaces the gradient projection method by SORP. The reason for this change is the smoothing eect which is attributed to SORP and which is wellknown from the multigrid context. The numerical results in Sect. 3.2 strongly support our approach. We use the following notation: small italics x,y,b,c,: : : denote vectors, xi means the ith component of x, while xk is the kth successive iterate of a particular method. So xki is the ith component of the kth iteration vector xk . Similarly, Aij is the (i; j )?component of the matrix A.
2. Algorithms We recall the de nition of the algorithm SORP (successive overrelaxation with projection): SORP ([7]) Choose x0 2 Rn and put for k = 0; 1; 2; : : :