Leon Simon1598298011, 9781598298017
The text is designed for use in a forty-lecture introductory course covering linear algebra, multivariable differential calculus, and an introduction to real analysis. The core material of the book is arranged to allow for the main introductory material on linear algebra, including basic vector space theory in Euclidean space and the initial theory of matrices and linear systems, to be covered in the first ten or eleven lectures, followed by a similar number of lectures on basic multivariable analysis, including first theorems on differentiable functions on domains in Euclidean space and a brief introduction to submanifolds. The book then concludes with further essential linear algebra, including the theory of determinants, eigenvalues, and the spectral theorem for real symmetric matrices, and further multivariable analysis, including the contraction mapping principle and the inverse and implicit function theorems. There is also an appendix which provides a nine-lecture introduction to real analysis. There are various ways in which the additional material in the appendix could be integrated into a course–for example in the Stanford Mathematics honors program, run as a four-lecture per week program in the Autumn Quarter each year, the first six lectures of the nine-lecture appendix are presented at the rate of one lecture per week in weeks two through seven of the quarter, with the remaining three lectures per week during those weeks being devoted to the main chapters of the text. It is hoped that the text would be suitable for a quarter or semester course for students who have scored well in the BC Calculus advanced placement examination (or equivalent), particularly those who are considering a possible major in mathematics. The author has attempted to make the presentation rigorous and complete, with the clarity and simplicity needed to make it accessible to an appropriately large group of students. Table of Contents: Linear Algebra / Analysis in R / More Linear Algebra / More Analysis in R / Appendix: Introductory Lectures on Real Analysis |
Table of contents : Preface……Page 6 Vectors in Rn……Page 12 Dot product and angle between vectors in Rn……Page 13 Subspaces and linear dependence of vectors……Page 16 Gaussian Elimination and the Linear Dependence Lemma……Page 18 The Basis Theorem……Page 22 Matrices……Page 23 Rank and the Rank-Nullity Theorem……Page 26 Orthogonal complements and orthogonal projection……Page 29 Row Echelon Form of a Matrix……Page 33 Inhomogeneous systems……Page 38 Analysis in Rn……Page 41 Open and closed sets in Euclidean Space……Page 42 Bolzano-Weierstrass, Limits and Continuity in Rn……Page 44 Differentiability……Page 46 Directional Derivatives, Partial Derivatives, and Gradient……Page 48 Chain Rule……Page 52 Higher-order partial derivatives……Page 53 Second derivative test for extrema of multivariable function……Page 55 Curves in Rn……Page 59 Submanifolds of Rn and tangential gradients……Page 64 More Linear Algebra……Page 71 Permutations……Page 72 Determinants……Page 75 Inverse of a Square Matrix……Page 80 Computing the Inverse……Page 83 Orthonormal Basis and Gram-Schmidt……Page 84 Matrix Representations of Linear Transformations……Page 86 Eigenvalues and the Spectral Theorem……Page 87 More Analysis in Rn……Page 91 Contraction Mapping Principle……Page 92 Inverse Function Theorem……Page 93 Implicit Function Theorem……Page 95 Lecture 1: The Real Numbers……Page 98 Lecture 2: Sequences of Real Numbers and the Bolzano-Weierstrass Theorem……Page 102 Lecture 3: Continuous Functions……Page 107 Lecture 4: Series of Real Numbers……Page 111 Lecture 5: Power Series……Page 116 Lecture 6: Taylor Series Representations……Page 119 Lecture 7: Complex Series, Products of Series, and Complex Exponential Series……Page 124 Lecture 8: Fourier Series……Page 127 Lecture 9: Pointwise Convergence of Trigonometric Fourier Series……Page 132 Index……Page 136 |
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