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REFERENCES.bib
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REFERENCES.bib
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NOTE: This list is both incredibly out of date and incredibly incomplete;
Please ignore it until the inlined citations within the implementations
are incorporated
// TODO: Add the (large) list of convex optimization references recently
// referenced, e.g.,
//
// [1] Scott S. Chen, David L. Donoho, and Michael A. Saunders,
// "Atomic Decomposition by Basis Pursuit",
// SIAM Review, Vol. 43, No. 1, pp. 129--159, 2001
//
Pseudospectra
=============
Two-norm Pseudospectra
----------------------
Single-input single-pass algorithm for shifted Hessenberg system solves.
Cited as the impetus for BischofDattaPurkayastha-1994
@article{Datta-1989,
author={Biswa N. Datta},
title={Parallel and large-scale matrix computations in control: some ideas},
journal={Linear Algebra and its Applications},
volume=121,
pages={243--264},
year=1989
}
Introduced single-pass shifted Hessenberg solves for A X - X H = C and a
blocked extension. This computational kernel is the basis for Elemental's
proposed interleaved Lancozs pseudospectra algorithm.
@article{BischofDattaPurkayastha-1994,
author={Christian H. Bischof and Biswa N. Datta and Avijit Purkayastha},
title={A parallel algorithm for the Sylvester-Observer Equation},
journal={SIAM Journal on Scientific Computing},
volume=17,
number=3,
pages={686--698},
year=1994
}
Numerically-robust extensions of BischofDattaPurkayastha-1994's
multiplication-based shifted Hessenberg solver (discussed in the
upper-Hessenberg setting)
@techreport{Henry-1994,
author={Greg Henry},
title={The shifted Hessenberg system solve computation},
type={{T}echnical {R}eport},
institution={Cornell University},
year=1994
}
Introduced the triangularization + inverse iteration approach
@article{Lui-1997,
author={Shiu-Hong Lui},
title={Computation of pseudospectra by continuation},
journal={SIAM Journal on Scientific Computing},
volume=18,
number=2,
pages={567--573},
year=1997
}
A comprehensive review paper on computing pseudospectra.
@article{Trefethen-1999,
author={Lloyd N. Trefethen},
title={Computation of pseudospectra},
journal={Acta Numerica},
volume=8,
pages={247--295},
year=1999
}
By far the most comprehensive overview of pseudospectra and their applications
@book{TrefethenEmbree-2005,
author={Lloyd N. Trefethen and Mark Embree},
title={Spectra and {P}seudospectra: {T}he {B}ehavior of {N}onnormal
{M}atrices and {O}perators},
publisher={Princeton University Press},
year=2005
}
One-norm Pseudospectra
----------------------
A simple variant of the power method for computing 1-norm estimates
@article{Hager-1984,
author={W. W. Hager},
title={Condition estimates},
journal={SIAM Journal on Scientific and Statistical Computing},
volume=5,
number=2,
pages={311--316},
year=1984
}
A practical version of the 1-norm estimation routine from Hager-1984
@article{Higham-1988,
author={Nicholas J. Higham},
title={{FORTRAN} codes for estimating the one-norm of a real or complex
matrix, with applications to condition estimation},
journal={{ACM} Transactions on Mathematical Software},
volume=14,
number=4,
pages={381--396},
year=1988
}
An efficient (and typically more accurate) blocked variant of the algorithm
from Higham-1988
@article{HighamTisseur-2000,
author={Nicholas J. Higham and Francoise Tisseur},
title={A block algorithm for matrix 1-norm estimation, with an application
to 1-norm pseudospectra},
journal={SIAM Journal on Matrix Analysis and Applications},
volume=21,
number=4,
pages={1185--1201},
year=2000
}
Multiple examples of the application of one-norm pseudospectra
@book{TrefethenEmbree-2005,
author={Lloyd N. Trefethen and Mark Embree},
title={Spectra and {P}seudospectra: {T}he {B}ehavior of {N}onnormal
{M}atrices and {O}perators},
publisher={Princeton University Press},
year=2005
}
Schur decomposition
===================
Spectral Divide and Conquer
---------------------------
Elemental contains preliminary implementations of spectral divide and conquer
algorithms derived from the following paper:
@article{BaiEtAl-1997,
author={Zhaojun Bai and James Demmel and Jack Dongarra and Antoine Petitet
and Howard Robinson and Ken Stanley},
title={The spectral decomposition of nonsymmetric matrices on distributed
memory parallel computers},
journal={SIAM Journal on Scientific Computing},
volume=18,
number=5,
pages={1446--1461},
year=1997
}
The randomized approach from the following paper is used in order to avoid a
pivoted QR decomposition:
@article{DemmelDumitriuHoltz-2007,
author={James Demmel and Ioana Dumitriu and Olga Holtz},
title={Fast linear algebra is stable},
journal={Numerische Mathematik},
volume=108,
number=1,
pages={59--91},
year=2007
}
Subsequent developments and refinement of the randomized approach from
"Fast linear algebra is stable"
@techreport{BallardDemmelDumitiu-2011,
author={Grey Ballard and James Demmel and Ioana Dumitiu},
title={Minimizing communication for eigenproblems and the {S}ingular {V}alue
{D}ecomposition},
type={{T}echnical {R}eport},
institution={University of California at Berkeley},
number={UCB/EECS-2011-14},
year=2011
}
SDC algorithms based upon QWDH
@article{NakatsukasaHigham-2013,
author={Yuji Nakatsukasa and Nicholas J. Higham},
title={Stable and efficient {S}pectral {D}ivide and {C}onquer algorithms for
the symmetric eigenvalue decomposition and the {SVD}},
journal={SIAM Journal on Scientific Computing},
volume=35,
number=3,
pages={A1325--A1349},
year=2013
}
Hessenberg QR algorithm
-----------------------
Cited by HenryWatkinsDongarra-2002 as the inspiration for Watkins-1994
@techreport{Dubrulle-1992,
author={A. Dubrulle},
title={The multishift QR algorithm -- Is it worth the trouble?},
type={{T}echnical {R}eport},
institution={IBM Scientific Center, Palo Alto, CA},
year=1992
}
@article{Watkins-1994,
author={David S. Watkins},
title={Shifting strategies for the parallel QR algorithm},
journal={SIAM Journal on Scientific Computing},
volume=15,
pages={953--958},
year=1994
}
@article{HenryVanDeGeijn-1997,
author={Greg Henry and Robert van de Geijn},
title={Parallelizing the QR algorithm for the unsymmetric algebraic
eigenvalue problem: Myths and reality},
journal={SIAM Journal on Scientific Computing},
volume=17,
pages={870--883},
year=1997
}
@article{HenryWatkinsDongarra-2002,
author={Greg Henry and David S. Watkins and Jack J. Dongarra},
title={A parallel implementation of the nonsymmetric QR algorithm for
distributed memory architectures},
journal={SIAM Journal on Scientific Computing},
volume=24,
number=1,
pages={284--311},
year=2002
}
@article{BramanByersMathias-2002-I,
author={Karen Braman and Ralph Byers and Roy Mathias},
title={The multishift {QR} algorithm. {P}art {I}: {M}aintaining well-focused
shifts and level 3 performance},
journal={SIAM Journal on Matrix Analysis and Applications},
volume=23,
number=4,
pages={929--947},
year=2002
}
@article{BramanByersMathias-2002-II,
author={Karen Braman and Ralph Byers and Roy Mathias},
title={The multishift {QR} algorithm. {P}art {II}: {A}ggressive {E}arly
{D}eflation},
journal={SIAM Journal on Matrix Analysis and Applications},
volume=23,
number=4,
pages={948--973},
year=2002
}
The resulting TOMS publication from LAWN 153 on extending ScaLAPACK's
pdlahqr to complex arithmetic (pzlahqr)
@article{Fahey-2003,
author={Mark R. Fahey},
title={A parallel eigenvalue routine for complex Hessenberg matrices},
journal={{ACM} Transactions on Mathematical Software},
volume=29,
number=3,
pages={326--336},
year=2003
}
Introduced a parallel and high-performance "computational window" scheme for
reordering eigenvalues in Schur form
@article{GranatKagstromKressner-2009,
author={Robert Granat and Bo Kagstrom and Daniel Kressner},
title={Parallel eigenvalue reordering in real Schur forms},
journal={Concurrency and Computation: Practice and Experience},
volume=21,
number=9,
pages={1225--1250},
year=2009
}
The following two publications of Granat et al. led to the ScaLAPACK
implementation of the Hessenberg QR algorithm via intra and inter-block packet
chases that Elemental's implementation loosely mirrors.
@article{GranatKagstromKressner-2010,
author={Robert Granat and Bo Kagstrom and Daniel Kressner},
title={A novel parallel QR algorithm for hybrid distributed memory HPC
systems},
journal={SIAM Journal on Scientific Computing},
volume=32,
number=4,
pages={2345--2378},
year=2010
}
@article{GranatKagstromKressnerShao-2015,
author={Robert Granat and Bo Kagstrom and Daniel Kressner and Meiyue Shao},
title={Parallel library software for the multishift {QR} algorithm with
{A}ggressive {E}arly {D}eflation},
journal={ACM Transactions on Mathematical Software},
volume=41,
number=4,
pages={1--29},
year=2015
}
Pivoted QR
==========
Introduced the Businger-Golub algorithm for column-pivoted QR decompositions.
@article{BusingerGolub-1965,
author={Peter A. Businger and Gene H. Golub},
title={Linear least squares solutions by {H}ouseholder transformations},
journal={Numerische Mathematik},
volume=7,
number=3,
pages={269--276},
year=1965
}
Introduced GKS matrix, which the greedy RRQR fails on.
@techreport{GolubKlemaStewart-1976,
author={Gene H. Golub and Virginia Klema and G.W. Stewart},
title={Rank degeneracy and least squares problems},
institution={Stanford University},
number={STAN-CS-76-559},
year=1976
}
Standard reference for (strong) RRQR factorizations, which will hopefully be
added to Elemental in the near future.
@article{GuEisenstat-1996,
author={Ming Gu and Stanley Eisenstat},
title={Efficient algorithms for computing a strong rank-revealing {QR}
factorization},
journal={SIAM Journal on Scientific Computing},
volume=17,
number=4,
pages={848--869},
year=1996
}
Elemental uses the same norm updating strategy as this paper and the
corresponding LAPACK implementation of dgeqpf.f
@article{DrmacBujanovic-2008,
author={Zlatko Drmac and Zvonimir Bujanovic},
title={On the failure of {R}ank-{R}evealing {QR} factorization software --
a case study},
journal={{ACM} Transactions on Mathematical Software},
volume=35,
number=2,
pages={12:1--12:28},
year=2008
}
Up-/downdating LU factorizations
================================
Elemental's LUMod closely follows the discussion of Algorithm I from the
following paper, which is attributed to the textbook
"Numerische lineare Algebra" by A. Kielbasinski and H. Schwetlick.
@article{StangeGriewankBollhofer-2007,
author={Peter Stange and Andreas Griewank and Matthias Bollhofer},
title={On the efficient update of rectangular {LU}-factorizations subject
to low rank modifications},
journal={Electronic Transactions on Numerical Analysis},
volume=26,
pages={161--177},
year=2007
}
Up-/downdating Cholesky factorizations
======================================
It is demonstrated that downdated Cholesky factorizations can be an
ill-conditioned function of the original Cholesky factor and the update vector.
@article{Stewart-1979,
author={G.W. Stewart},
title={The effects of rounding error on an algorithm for downdating a
Cholesky factorization},
journal={IMA Journal of Applied Mathematics},
volume=23,
number=2,
pages={203--213},
year=1979
}
A general analysis of the stability of triangularizing matrices via
hyperbolic Householder transformations.
@article{StewartStewart-1998,
author={Michael Stewart and G.W. Stewart},
title={On hyperbolic triangularization: stability and pivoting},
journal={SIAM Journal on Matrix Analysis and Applications},
volume=19,
number=4,
pages={847--860},
year=1998
}
A review of generalized/hyperbolic Householder transforms which also introduces
blocked algorithms for up-/downdating via accumulated generalized Householder
transforms.
@article{VanDeGeijnVanZee-2011,
author={Robert A. van de Geijn and Field G. van Zee},
title={High-performance up-and-downdating via Householder-like
transformations},
journal={{ACM} Transactions on Mathematical Software},
volume=38,
number=1,
pages={4:1--4:17},
year=2011
}
Singular Value Decomposition
============================
This paper introduced the standard algorithm for computing the SVD.
@article{GolubReinsch-1970,
author={Gene H. Golub and Christian Reinsch},
title={Singular value decomposition and least squares solutions},
journal={Numerische Mathematik},
volume=14,
number=5,
pages={403--420},
year=1970
}
This paper introduced the idea of using a QR decomposition as a first
step in the SVD of a non-square matrix in order to accelerate the
computation (well, an earlier Golub paper mentioned it as well).
@article{Chan-1982,
author={Tony F. Chan},
title={An improved algorithm for computing the {S}ingular {V}alue
{D}ecomposition},
journal={{ACM} Transactions on Mathematical Software},
volume=8,
number=1,
pages={72--83},
year=1982
}
This could serve as a foundation for achieving high absolute accuracy
in a cross-product based algorithm for computing the SVD. Such an
approach should be more scalable than the current
bidiagonalization-based approach.
@article{Jia-2006,
author={Zhongxiao Jia},
title={Using cross-product matrices to compute the {SVD}},
journal={Numerical Algorithms},
volume=42,
number=1,
pages={31--61},
year=2006
}
Symmetric positive-definite inversion
=====================================
The variant 2 single-sweep algorithm from Fig. 9 was parallelized for
Elemental's HPD inversion.
@article{BientinesiGunterVanDeGeijn-2008,
author={Paolo Bientinesi and Brian Gunter and Robert A. van de Geijn},
title={Families of algorithms related to the inversion of a {S}ymmetric
{P}ositive {D}efinite matrix},
journal={{ACM} Transactions on Mathematical Software},
volume=35,
number=1,
pages={3:1--3:22},
year=2008
}
Interpolative and skeleton decompositions
=========================================
Standard reference for (pseudo-)skeleton approximations, which are also referred
to as CUR decompositions, especially when the center matrix is non-square.
@article{GoreinovTyrtyshnikovZamarashkin-1997,
author={S.A. Goreinov and E.E. Tyrtyshnikov and N.L. Zamarashkin},
title={A theory of pseudoskeleton approximations},
journal={Linear Algebra and Appl},
volume=261,
number=1--3,
pages={1--21},
year=1997
}
Introduced effective randomized approximations of interpolative decompositions
@article{LibertyEtAl-2007,
author={Edo Liberty and Franco Woolfe and Per-Gunnar Martinsson and
Vladimir Rokhlin and Mark Tygert},
title={Randomized algorithms for the low-rank approximation of matrices},
journal={Proceedings of the National Academy of Sciences, USA},
volume=104,
pages={20167--20172},
year=2007
}
Contains a thorough analysis of many randomized algorithms for (pseudoskeleton)
decompositions using RRQR factorizations.
@article{ChiuDemanet-2013,
author={Jiawei Chiu and Laurent Demanet},
title={Sublinear randomized algorithms for skeleton decompositions},
journal={SIAM Journal on Matrix Analysis and Applications},
volume=34,
number=3,
pages={1361--1383},
year=2013
}
Householder tridiagonalization
==============================
Contains the algorithm used for Elemental's square-grid tridiagonalization.
@techreport{Stanley-1997,
author={Ken Stanley},
title={Execution time of symmetric eigensolvers},
type={{Ph.D.} {D}issertation},
institution={University of California at Berkeley},
number={CSD-99-1039},
pages=183,
year=1997
}
One of the origins for the square-grid tridiagonalization algorithm used in
Elemental (which was later refined by Stanley et al.).
@article{HendricksonJessupSmith-1999,
author={Bruce Hendrickson and Elizabeth Jessup and Christopher Smith},
title={Towards an efficient parallel eigensolver for dense symmetric
matrices},
journal={SIAM Journal on Scientific Computing},
volume=20,
number=3,
pages={1132--1154},
year=1999
}
Two-sided triangular transformations
====================================
Contains the main algorithm used for Elemental's two-sided triangular solves.
@inproceedings{SearsStanleyHenry-1998,
author={Mark P. Sears and Ken Stanley and Greg Henry},
title={Application of a high performance parallel eigensolver to electronic
structure calculation},
booktitle={Proceedings of the ACM/IEEE Conference on Supercomputing},
publisher={IEEE Computer Society},
year=1998
}
Matrix functions
================
Heavily used for Elemental's Sign implementation
TODO: Cite paper(s) instead
@book{Higham-2008,
author={Nicholas J. Higham},
title={Functions of {M}atrices: {T}heory and {C}omputation},
publisher={SIAM},
year=2008
}
Algorithm for the polar decomposition which typically converges in less than
seven iterations
@article{NakatsukasaBaiGygi-2010,
author={Yuji Nakatsukasa and Zhaojun Bai and Francois Gygi},
title={Optimizing {H}alley's iteration for computing the matrix polar
decomposition},
journal={SIAM Journal on Matrix Analysis and Applications},
volume=31,
number=5,
pages={2700--2720},
year=2010
}
Fast Haar generation
====================
Useful for randomized rank-revealing factorizations of rank-deficient matrices
@article{Stewart-1980,
author={G.W. Stewart},
title={The efficient generation of random orthogonal matrices with an
application to condition estimators},
journal={SIAM Journal on Numerical Analysis},
volume=17,
number=3,
pages={403--409},
year=1980
}
Convex optimization
===================
The line search reference for the L-BFGS algorithm of ByrdEtAl-1995
@article{MoreThuente-1994,
author={Jorge J. Mor\'e and David J. Thuente},
title={Line search algorithms with guaranteed sufficient decrease},
journal={{ACM} Transactions on Mathematical Software},
volume=20,
number=3,
pages={286--307},
year=1994
}
Introduced the lasso
@article{Tibshirani-1995,
author={Robert Tibshirani},
title={Regression shrinkage and selection via the lasso},
journal={Journal of the Royal Statistical Society, Series B (Methodological)},
volume=58,
number=1,
pages={267--288},
year=1996
}
The basis for Elemental's (upcoming) L-BFGS implementation
@article{ByrdEtAl-1995,
author={Richard H. Byrd and Peihuang Lu and Jorge Nocedal and Ciyou Zhu},
title={A limited memory algorithm for bound constrained optimization},
journal={SIAM Journal on Scientific Computing},
volume=16,
number=5,
pages={1190--1208},
year=1995
}
Section 4 contains the sparse covariance selection experiment used in
examples/convex/SparseInvCov.cpp
@article{dAspremontBanerjeeElGhaoui-2008,
author={Alexandre d'Aspremont and Onureena Banerjee and Laurent El Ghaoui},
title={First-order methods for sparse covariance selection},
journal={SIAM Journal on Matrix Analysis and Applications},
volume=30,
number=1,
pages={56--66},
year=2008
}
Introduces techniques for L+S decompositions and proves that exact recovery
is often possible
@article{CandesEtAl-2011,
author={Emmanuel J. Cand\`es and Xiaodong Li and Yi Ma and John Wright},
title={Robust principal component analysis?},
journal={Journal of the {ACM}},
volume=58,
number=3,
pages={11:1--11:37},
year=2011
}
Contains a wide variety of ADMM solvers which can be mapped to parallel
architectures via parallel factorizations/SVD/etc.
@article{BoydEtAl-2011,
author={Stephen Boyd and Neal Parikh and Eric Chu and Borja Peleato and
Jonathan Eckstein},
title={Distributed optimization and statistical learning via the
Alternating Direction Method of Multipliers},
journal={Foundations and Trends in Machine Learning},
volume=3,
number=1,
pages={1--122},
year=2011
}
Basic Linear Algebra Subprograms
================================
@article{LawsonEtAl-1979,
author={C. L. Lawson and R. J. Hanson and D. R. Kincaid and F. T. Krogh},
title={{B}asic linear algebra subprograms for {F}ortran usage},
journal={{ACM} Transactions on Mathematical Software},
volume=5,
number=3,
pages={308--323},
year=1979
}
@article{DongarraEtAl-1990,
author={Jack J. Dongarra and Jeremy Du Croz and Sven Hammarling and
Iain S. Duff},
title={A set of level 3 basic linear algebra subprograms},
journal={{ACM} Transactions on Mathematical Software},
volume=16,
number=1,
pages={1--17},
year=1990
}
Miscellaneous
=============
Added for definition of Kahan matrix (pg. 260)
@book{GolubVanLoan-1996,
author={Gene H. Golub and Charles F. van Loan},
title={Matrix {C}omputations},
edition={3rd},
publisher={Johns Hopkins University Press},
address={Baltimore},
year=1996
}