Skip to main content
  • el
  • en
Home
  • The Department
    • Mission and Objectives
    • Location
  • Undergraduate
    • Undergraduate Programme
    • Programme Tracks
    • Courses
    • Student Placement
    • Erasmus+
  • Postgraduate
    • Economics and Management for Engineers
    • Scolarships
    • Tracks
    • PhD Programme
    • Programme Courses
    • Cost and duration
    • Evaluation
    • Teaching Staff
  • Staff
    • Adjunct Professors
    • Laboratory Technical Staff
    • Administrative Staff
  • Research
    • Management and Decision Engineering (MDE-Lab)
    • Design, Operations & Production Systems Lab
    • Intelligent Data Exploration and Analysis Laboratory
    • Applied Physical and Computational Sciences Laboratory
    • Information Management Lab
    • Environmental Quality and Technology Laboratory - EQTL
    • Postdoctoral Researchers
    • PhDs
    • PhD Candidates
    • Research Associates
  • Student Groups
    • ESTIEM
    • My Aegean

Breadcrumb

  1. Home

Computational Methods for Decision Making

Module Title: Computational Methods for Decision Making

  • Type of Module:

Χ

PC (Prescribed Core Module)

PS (Prescribed Stream Module)

ES (Elective Stream Module)

E (Elective Module)

  • Level of Module: MSc

Α’


  • Year of Study

Β’


  • Semester

6


  • Number of credits allocated

  • Name of lecturer / lecturers : Jan Jantzen / Nikolaos Ampazis

  • Description :

This course introduces students to algorithms and techniques for automated computational methods and information systems that support decision making. Emphasis is given on information processing methods that can successfully and securely execute a variety of missions in complex environments while exploiting multiple sources of sensor and open domain data. Case studies are presented, along with the lectures, in areas such as resource optimization, renewable sources of energy, financial analysis and web content personalization such as recommender systems.

  • Prerequisites : None

  • Module Contents ( Syllabus) :

#

Contents

1

· Introduction to decision making - Decision examples of engineering projects related to renewable energy

2

· Decision Support and Cumulative Cash-Flow Diagrams

3

· Decisions Based in Engineering Economy Principles – Case Study: “Ground Heat”

4

  • Decision Making using Fuzzy Logic – Non technical Barriers and their influence in real world decisions

5

  • Regression Models – Training/Test/Validation in Data Analysis – Case Studies: Home Energy Efficiency & Home Energy Savings

6

  • Decisions Based in Cluster Analysis and Fuzzy C-Means

7

  • Algorithms for statistical classification – Case studies in continuous and discrete problems

8

  • Computational intelligence methods (neural networks – genetic algorithms)

9

  • Financial data predictions

10

  • Recommender Systems

  • Recommended Reading :

1) Principal Reference :

2) Additional References :

  • Teaching Methods :

In class teaching, case studies, decision making software hands-on

---------------------------------------------------------------------------------------------------------------------------------------

---------------------------------------------------------------------------------------------------------------------------------------

---------------------------------------------------------------------------------------------------------------------------------------

---------------------------------------------------------------------------------------------------------------------------------------

---------------------------------------------------------------------------------------------------------------------------------------

  • Assessment Methods :

- Final Exam 100%

  • Language of Instruction: English / Greek

  • Module Objective (preferably expressed in terms of learning outcomes and competences):

- Understand the process of decision making

- Have a working knowledge of different decision making tools and techniques.

- Have an understanding of various methods for decision making through the use of classification and clustering algorithms

- Be able to effectively apply a number of algorithms to solve decision making problems from various problem domains, e.g. Financial Engineering.

- Be familiar with several successful applications of decision mining in renewable energy systems.

ΠΑΝΕΠΙΣΤΗΜΙΟ ΑΙΓΑΙΟΥ

Πολυτεχνική Σχολή
Τμήμα Μηχανικών Οικονομίας και Διοίκησης 

Κουντουριώτου 41
82132 ΧΙΟΣ

22710 - 35400 (Κέντρο)
22710 - 35402 Προϊσταμένη Γραμματείας
22710 - 35412 Ακαδημαϊκή Γραμματεία
22710 - 35422 Γραμματεία Μεταπτυχιακών Φοιτητών
22710 - 35403 Γραφείο Πρακτικής Άσκησης
22710 - 35430 Γραμματεία Προπτυχιακών Φοιτητών
(ώρες εξυπηρέτησης: 11:00-13:00)

Email: Chios-tmod @ aegean.gr

Το Τμήμα

  • Χαιρετισμός Προέδρου
  • Φιλοσοφία και Στόχοι
  • Τοποθεσία και Πρόσβαση

Προσωπικό

  • Faculty
  • Διδακτικό Προσωπικό επί συμβάσει
  • Μέλη Ε.ΔΙ.Π - Ε.Τ.Ε.Π.
  • Διοικητικό
εθααε
ΠΑΝΕΠΙΣΤΗΜΙΟ ΑΙΓΑΙΟΥ - Τμήμα Μηχανικών Οικονομίας και Διοίκησης . Με την επιφύλαξη παντός νομίμου δικαιώματος.  N3T
  • The Department
    • Mission and Objectives
    • Location
  • Undergraduate
    • Undergraduate Programme
    • Programme Tracks
    • Courses
    • Student Placement
    • Erasmus+
  • Postgraduate
    • Economics and Management for Engineers
    • Scolarships
    • Tracks
    • PhD Programme
    • Programme Courses
    • Cost and duration
    • Evaluation
    • Teaching Staff
  • Staff
    • Adjunct Professors
    • Laboratory Technical Staff
    • Administrative Staff
  • Research
    • Management and Decision Engineering (MDE-Lab)
    • Design, Operations & Production Systems Lab
    • Intelligent Data Exploration and Analysis Laboratory
    • Applied Physical and Computational Sciences Laboratory
    • Information Management Lab
    • Environmental Quality and Technology Laboratory - EQTL
    • Postdoctoral Researchers
    • PhDs
    • PhD Candidates
    • Research Associates
  • Student Groups
    • ESTIEM
    • My Aegean