Teaching GuideTerm Faculty of Economics and Business |
Grao en Administración e Dirección de Empresas |
Subjects |
Mathematics II |
Contents |
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Identifying Data | 2019/20 | |||||||||||||
Subject | Mathematics II | Code | 611G02010 | |||||||||||
Study programme |
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Descriptors | Cycle | Period | Year | Type | Credits | |||||||||
Graduate | 2nd four-month period |
First | Basic training | 6 | ||||||||||
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Topic | Sub-topic |
1. The euclidean space IRn. | The vector space IRn. Inner product. Norm. Distance. Interior, closure, isolated, limit and boundary points. Open and closed sets. Compact sets. |
2. Functions of several variables. | Basic concepts. Graphical representation of real functions. Level sets. Limit of a function at a point. Continuity. Linear functions. Quadratic forms. Classification. Constrained quadratic forms. |
3. Derivatives of functions of several variables. | Partial derivatives. Partial derivatives of higher order. Class one function Chain's Rule. Taylor's theorem. Implicit function theorem. |
4. Convexity of sets and functions. | Convex sets. Properties. Convex functions. Properties. Characterization of twice continuously differentiable convex functions. |
5. Introduction to mathematical programming. | Formulation of a mathematical program. Local and global optima. Graphic solving. Basic Theorems in optimization. |
6. Unconstrained optimization. | First-order necessary conditions. Second-order conditions. The convex case. Sensitivity analysis. |
7. Equality-constrained optimization | Formulation. First-order necessary conditions: the Lagrange theorem. Second-order conditions. The convex case. Sensitivity analysis. |
8. Linear programming. | Formulation of linear programs. Basic feasible solutions. Fundamental theorems. The simplex algorithm. |
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