目录 Part Ⅰ Chapter 1 Background and Fundamentals of Mathematics 1.1 Basic Concepts 1.2 Relations 1.3 Functions 1.4 The Integers 1.4.1 Long Division 1.4.2 Relatively Prime 1.4.3 Prime 1.4.4 The Unique Factorization Theorem Chapter 2 Groups 2.1 Groups 2.2 Subgroups 2.3 Normal Subgroups 2.4 Homomorphisms 2.5 Permutations 2.6 Product of Groups Chapter 3 Rings 3.1 Commutative Rings 3.2 Units 3.3 The Integers Mod N 3.4 Ideals and Quotient Rings 3.5 Homomorphism 3.6 Polynomial Rings 3.6.1 The Division Algorithm 3.6.2 Associate 3.7 Product of Rings 3.8 Characteristic 3.9 Boolean Rings Chapter 4 Matrices and Matrix Rings 4.1 Elementary Operations and Elementary Matrices 4.2 Systems of Equations 4.3 Determinants 4.4 Similarity Part Ⅱ Chapter 5 Vector Spaces 5.1 The Axioms for a Vector Space 5.2 Linear Independence,Dimension,and Basis 5.3 Intersection,Sum and Direct Sum of Subspaces 5.4 Factor Space 5.5 Inner Product Spaces 5.6 Orthonormal Bases and Orthogonal Complements 5.7 Reciprocal Basis and Change of Basis Chapter 6 Linear Transformations 6.1 Definition of Linear Transformation 6.2 Sums and Products of Liner Transformations 6.3 Spe Types of Linear Transformations 6.4 The Adjoint of a Linear Transformation 6.5 Component Formulas Chapter 7 Determinants And Matrices 7.1 The Generalized Kronecker Deltas and the Summation Convention 7.2 Determinants 7.3 The Matrix of a Linear Transformation 7.4 Solution of Systems of Linear Equation 7.5 Spe Matrices Chapter 8 Spectral Decompositions 8.1 Direct Sum of Endomorphisms 8.2 Eigenvectors and Eigenvalues 8.3 The Characteristic Polynomial 8.4 Spectral Decomposition for Hermitian Endomorphisms 8.5 Illustrative Examples 8.6 The Minimal Polynomial 8.7 Spectral Decomposition for Arbitrary Endomorphisms Chapter 9 Tensor Algebra 9.1 Linear Functions,the Dual Space 9.2 The Second Dual Space, Canonical Isomorphisms Part Ⅲ Chapter 10 Linear Programming 10.1 Basic Properties of Linear Programs 10.2 Many Computational Procedures to Simplex Method 10.3 Duality 10.3.1 Dual Linear Programs 10.3.2 The Duality Theorem 10.3.3 Relations to the Simplex Procedure 10.4 Interior-point Methods 10.4.1 Elements of Complexity Theory 10.4.2 The Analytic Center 10.4.3 The Central Path 10.4.4 Solution Strategies Chapter 11 Unconstrained Problems 11.1 Transportation and Network Flow Problems 11.1.1 The Transportation Problem 11.1.2 The Northwest Comer Rule 11.1.3 Basic Network Concepts 11.1.4 Maximal Flow 11.2 Basic Properties of Solutions and Algorithms 11.2.1 First-order Necessary Conditions 11.2.2 Second-order Conditions 11.2.3 Minimization and Maximization of Convex Functions 11.2.4 Zeroth-order Conditions 11.2.5 Global Convergence of Descent Algorithms 11.2.6 Speed of Convergence 11.3 Basic Descent Methods 11.3.1 Fibonacci and Golden Section Search 11.3.2 Closedness of Line Search Algorithms 11.3.3 Line Search 11.3.4 The Steepest Descent Method 11.3.5 Coordinate Descent Methods 11.4 Conjugate Direction Methods 11.4.1 Conjugate Directions 11.4.2 Descent Properties of the Conjugate Direction Method 11.4.3 The Conjugate Gradient Method 11.4.4 The C -G Method as an Optimal Process Chapter 12 Constrained Minimization 12.1 Quasi-Newton Methods 12.1.1 Modified Newton Method 12.1.2 Scaling 12.1.3 Memoryless Quasi-Newton Methods 12.2 Constrained Minimization Conditions 12.2.1 Constraints 12.2.2 Tangent Plane 12.2.3 First-order Necessary Conditions ( Equality Constraints) 12.2.4 Second-order Conditions 12.2.5 Eigenvalues in Tangent Subspace 12.2.6 Inequality Constraints 12.2.7 Zeroth-order Conditions and Lagrange Multipliers 12.3 Primal Methods 12.3.1 Feasible Direction Methods 12.3.2 Active Set Methods 12.3.3 The Gradient Projection Method 12.3.4 Convergence Rate of the Gradient Projection Method 12.3.5 The Reduced Gradient Method 12.4 Penalty and Barrier Methods 12.4.1 Penalty Methods 12.4.2 Barrier Methods 12.4.3 Properties of Penalty and Barrier Functions 12.5 Dual and Cutting Plane Methods 12.5. 1 Global Duality 12.5.2 Local Duality 12.5.3 Dual Canonical Convergence Rate 12.5.4 Separable Problems 12.5.5 Decomposition 12.5.6 The Dual Viewpoint 12.5.7 Cutting Plane Methods 12.5.8 Kelley s Convex Cutting Plane Algorithm 12.5.9 Modifications 12.6 Primal-dual Methods 12.6.1 The Standard Problem 12.6.2 Strategies 12.6.3 A Simple Merit Function 12.6.4 Basic Primal-dual Methods 12.6.5 Modified Newton Methods 12.6.6 Descent Properties 12.6.7 Interior Point Methods Bibliography
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