LINEAR AND STATISTICAL OPTIMIZATION (UNIT 1)
cod. 1006040

Academic year 2018/19
3° year of course - First semester
Professor
Lorenzo NICOLODI
Academic discipline
Geometria (MAT/03)
Field
Matematica, informatica e statistica
Type of training activity
Basic
48 hours
of face-to-face activities
6 credits
hub: PARMA
course unit
in ITALIAN

Integrated course unit module: LINEAR AND STATISTICAL OPTIMIZATION

Learning objectives

The goal of this course is to introduce linear programming as a
mathematical technique to model decision and optimization problems
relevant in engineering, management science and other applications, as
well as methods for solving the resulting models and interpret the
solutions.

Prerequisites

Basic knowledge of linear algebra and geometry.

Course unit content

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Full programme

1. LINEAR PROGRAMMING. Linear programming (LP) problems and their
formulation: the diet and blending problem, the activity-analysis
(product-mix) problem, the transportation problem, investment problems;
two-variables problems and their graphic solution; LP terminology. The
geometry ol LP: polyhedra, convex sets, basic feasible solutions and
vertices. The Fundamental Theorem of LP. Applications to problems of
production: optimum product lines and production processes in presence
of limited resources, transportation routing, meeting product
specifications, satisfaction of demand. General cases and examples
Techniques of LP: the simplex method and its implementation; geometric
and economic interpretations of the simplex method. Examples. Duality
theory: the dual problem; relations between the primal and the dual
problem: weak and strong duality; economoc interpretation of the dual
problem; duality theory and the simplex method; sensitivity analysis. 2.
NETWORK OPTIMIZATION PROBLEMS. Graphs, trees and networks. The
maximum flow problem and the minimum cost flow problem. Applications
to the assignment problem, the transportation problem, the shortest path
problem. Some network algorithms

Bibliography

- Course lecture notes.
Other books:
- R. Dorfman, P. A. Samuelson, R. M. Solow, Linear programming and
economic analysis, Dover Publications, Inc., New York, 1987, reprint of
the 1958 edition.
- D. Gale, The theory of linear economic models, McGraw-Hill Book Co.,
Inc., New York-Toronto-London, 1960.
- F. S. Hillier, G. J. Lieberman, Introduzione alla ricerca operativa, Ottava
edizione, McGraw-Hill, Milano, 2006.
- D. G. Luenberger, Linear and nonlinear programming, Second edition,
Springer, New York, 2003.
- R. J. Vanderbei, Linear progamming: Foundations and

Teaching methods

The theoretical topics of the course are presented during class lectures
and illustrated with significant examples, applications and several
exercises. Homework assignments are proposed during the course, which
are then discussed in recitation sessions during class time.

Assessment methods and criteria

The final exam consists of a written part, where students are required to
solve some exercises, and of an oral part about the theoretical topics and
the applications discussed during the course.

Other information

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2030 agenda goals for sustainable development

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Contacts

Toll-free number

800 904 084

Student registry office

E. segreteria.ingarc@unipr.it
T. +39 0521 905111

Quality assurance office

Education manager:
Lucia Orlandini

T.+39 0521 906542
Office E. dia.didattica@unipr.it
Manager E. lucia.orlandini@unipr.it
 

President of the degree course

Barbara Bigliardi
E. barbara.bigliardi@unipr.it

Faculty advisor

Fabrizio Moroni
E. fabrizio.moroni@unipr.it

Career guidance delegate

Fabrizio Moroni
E. fabrizio.moroni@unipr.it

Tutor professor

Fabrizio Moroni
E. fabrizio.moroni@unipr.it