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Solution Manual for Linear Algebra and Optimization for Machine Learning 1st Edition by Charu Aggarwal, All 11 Chapters Covered, Verified Latest Edition

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Solution Manual for Linear Algebra and Optimization for Machine Learning 1st Edition by Charu Aggarwal, All 11 Chapters Covered, Verified Latest Edition Solution Manual for Linear Algebra and Optimization for Machine Learning 1st Edition by Charu Aggarwal, All 11 Chapters Covered, Verified Latest Edition Test bank and solution manual pdf free download Test bank and solution manual pdf Test bank and solution manual pdf download Test bank and solution manual free download Test Bank solutions Test Bank Nursing Test Bank PDF Test bank questions and answers

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Written in
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SOLUTION MANUAL
Linear Algebra and Optimization for Machine
Learning
1st Edition by Charu Aggarwal. Chapters 1 – 11




vii

,Contents


1 Linearx Algebrax andx Optimization:x Anx Introduction 1


2 Linearx Transformationsx andx Linearx Systems 17


3 Diagonalizablex Matricesx andx Eigenvectors 35


4 OptimizationxBasics:xAxMachinexLearningxView 47


5 Optimizationx Challengesx andx Advancedx Solutions 57


6 Lagrangianx Relaxationx andx Duality 63


7 Singularx Valuex Decomposition 71


8 Matrixx Factorization 81


9 Thex Linearx Algebrax ofx Similarity 89


10 Thex Linearx Algebrax ofx Graphs 95


11 Optimizationx inx Computationalx Graphs 101




viii

,Chapterx 1

LinearxAlgebraxandxOptimization:xAnxIntroduction




1. Forx anyx twox vectorsx xx andx y,x whichx arex eachx ofx lengthx a,x showx thatx (i)x
xx−xyx isxorthogonalxtoxxx+xy,x andx(ii)x thexdotxproductxofxxx−x3yx andxxx+x3
yx isx negative.
(i)xThexfirstxisxsimply
·x −xx
x ·x x x yx yxusingxthexdistributivexpropertyxofxmatrixx

multiplication.xThexdotxproductxofxaxvectorxwithxitselfxisxitsxsquaredxlen
gth.xSincexbothxvectorsxarexofxthexsamexlength,xitxfollowsxthatxthexresult
xisx0.x(ii)xInxthexsecondxcase,xonexcanxusexaxsimilarxargumentxtoxshowxtha

txthexresultxisxa2x−x9a2,xwhichxisxnegative.
2. Considerx ax situationx inx whichx youx havex threex matricesx A,x B,x andx C,x ofx size
sx 10x×x2,x2x×x10,xandx10x×x10,xrespectively.
(a) SupposexyouxhadxtoxcomputexthexmatrixxproductxABC.xFromxanxefficien
cyxper-
xspective,xwouldxitxcomputationallyxmakexmorexsensextoxcomputex(AB)Cxor

xwouldxit xmake xmore xsense xtoxcompute xA(BC)?


(b) IfxyouxhadxtoxcomputexthexmatrixxproductxCAB,xwouldxitxmakexmorexse
nsextoxcomputex (CA)Bx orx C(AB)?
Thexmainxpointxisxtoxkeepxthexsizexofxthexintermediatexmatrixxasxsma
llxasxpossiblex inxorderxtoxreducexbothxcomputationalxandxspacexrequir
ements.xInxthexcasexofxABC,xitxmakesxsensextoxcomputexBCxfirst.xInxth
excasexofxCABxitxmakesxsensextoxcomputexCAxfirst.xThisxtypexofxassoci
ativityxpropertyxisxusedxfrequentlyxinxmachinexlearningxinxorderxtoxre
ducexcomputationalxrequirements.
3. Showx thatx ifx ax matrixx Ax satisfiesx—Ax =
ATx,x thenx allx thex diagonalx elementsx of
x the xmatrix xare x0.


NotexthatxAx+xATx=x0.xHowever,xthisxmatrixxalsoxcontainsxtwicexthexd
iagonalxelementsxofxAxonxitsxdiagonal.xTherefore,xthexdiagonalxeleme
ntsxofxAxmustxbex0.
4. Showxthatxifxwexhavexaxmatrixxsatisfying
— xAx=
1

, ATx,xthenxforxanyxcolumnxvectorxx,
wexhavex x xAxx=x0.
x
T


Notex thatx thex transposex ofx thex scalarx xTxAxx remainsx unchanged.x Therefore,x
wex have

xTxAxx=x(xTxAx)Tx =xxTxATxxx=x−xTxAx.x Therefore,x wex havex 2xTxAxx=x0.




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