Eskisehir Technical University Info Package Eskisehir Technical University Info Package
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About the Program Educational Objectives Key Learning Outcomes Course Structure Diagram with Credits Field Qualifications Matrix of Course& Program Qualifications Matrix of Program Outcomes&Field Qualifications
  • Faculty of Engineering
  • Dept.of Electrical and Electronics Engineering(Eng)
  • Course Structure Diagram with Credits
  • Engineering Probability
  • Description
  • Description
  • Learning Outcomes
  • Course's Contribution to Prog.
  • Learning Outcomes & Program Qualifications

Course Introduction Information

Code - Course Title İST2044 - Engineering Probability
Course Type Required Courses
Language of Instruction İngilizce
Laboratory + Practice 3+1
ECTS 5.0
Course Instructor(s) PROFESÖR DOKTOR TANSU FİLİK
Mode of Delivery Face to Face
Prerequisites The course has no prerequisites or co-requisites.
Courses Recomended
Required or Recommended Resources 1) Bertsekas, D., & Tsitsiklis, J. N. (2008). Introduction to Probability (Vol. 1). Athena Scientific.2) Ross, S. M. (2019). A First Course in Probability (10th ed., Global Edition).3) Mosteller, F. (1987). Fifty Challenging Problems in Probability with Solutions. Courier Corporation.4) Stark, H., & Woods, J. W. (2002). Probability and Random Processes with Applications to Signal Processing. Prentice Hall.
Recommended Reading List
Assessment methods and criteria 2 Midterm, 1 Final
Work Placement
Sustainability Development Goals

Content

Weeks Topics
Week - 1 Sample Space and Probability: Introduction to probability theory, Review of set theory, Probability spaces, Axioms and properties of probability
Week - 2 Discrete and continuous probability laws, Conditional probability
Week - 3 Law of total probability and Bayes’ theorem, Independence and conditional independence, Independent trials and counting techniques
Week - 4 Discrete Random Variables: Introduction and examples of probability mass functions (PMFs), Expectation, mean, and variance
Week - 5 Properties of expectation and variance, Joint PMFs, Conditional PMFs,
Week - 6 Conditioning one random variable on another, Conditional expectation, Iterated expectation
Week - 7 Independence of a random variable from an event, Independence of random variables; General Random Variables: Continuous random variables and probability density functions (PDFs)
Week - 8 Expectation and the cumulative distribution function (CDF), The Gaussian CDF, Conditional PDFs and joint PDFs, Conditioning one random variable on another,
Week - 9 Independence and the continuous Bayes’ rule
Week - 10 Advanced Topics on Random Variables: Derived distributions, Functions of two random variables,
Week - 11 Correlation and covariance, Applications of covariance;
Week - 12 Conditional expectation and variance
Week - 13 EN: EN: Transforms (Moment Generating Functions), Introduction to statistics, Data Representation, Random Sampling, Point Estimation of Parameters
Week - 14 EN: EN: Confidence Intervals, Testing of Hypotheses (Decisions), Goodness of Fit, Nonparametric Tests, Regression, Fitting Straight Lines

Learning Activities and Teaching Methods

  • Teaching Methods
  • Lecture
  • Discussion
  • Question & Answer
  • Drill - Practise
  • Problem Solving
  • Report Preparation and/or Presentation
  • Competences
  • Effective use of a foreign language
  • Problem solving
  • To work autonomously
  • Elementary computing skills

Assessment Methods

Assessment Method and Passing Requirements
Quamtity Percentage (%)
Toplam (%) 0
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