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COURSE UNIT TITLECOURSE UNIT CODESEMESTERTHEORY + PRACTICE (Hour)ECTS
PROBABILITY KAL533 - 3 + 0 10

TYPE OF COURSE UNITElective Course
LEVEL OF COURSE UNITMaster's Degree With Thesis
YEAR OF STUDY-
SEMESTER-
NUMBER OF ECTS CREDITS ALLOCATED10
NAME OF LECTURER(S)-
LEARNING OUTCOMES OF THE COURSE UNIT At the end of this course, the students;
1) will have an ability on understanding the importance of probability in Industrial Engineering
2) will have an ability on interpreting statistical data sets by using numerical and graphical techniques
3) will have an ability on learning the probability definition and its rules to be able to solve problems
4) will have an ability on learning the concept of random variables and their probability and distribution functions
5) will have an ability on choosing suitable probability distributions to apply and interrelate with the real life problems.
6) will have an ability on determination of the probability distributions for the functions of random variables and an ability to interrelate with sampling distributions
7) will have an ability to describe the basic concepts of statistics (population, sample, random sample, sampling distribution etc.)
MODE OF DELIVERYFace to face
PRE-REQUISITES OF THE COURSENo
RECOMMENDED OPTIONAL PROGRAMME COMPONENTNone
COURSE DEFINITIONBasic concepts and theorems of probability. Independence, Conditional probability and Baye's rule. Rando variables and realted functions. Basic probability and density functions.Fundamental discrete and contiuous distributions. Distributions of functions of random variables. Sampling distributions.
COURSE CONTENTS
WEEKTOPICS
1st Week Probability as a scientific activity and extensions
2nd Week Fundamentals of Probability
3rd Week Definition of Probability, Conditional Probability, Bayes' Theorem and Independent Events
4th Week Concept of Random Variable, Probability Distributions
5th Week Discrete and Continuous Probability Distributions
6th Week Joint Probability Distributions, Statistical Independence
7th Week Mathematical Expectation, Variance and Covariance
8th Week Some Discrete Probability Distributions
9th Week Examination Week
10th Week Some Continuous Probability Distributions
11th Week Fuctions of Random Variables, Distribution Function Technique
12th Week Change of Variables Techique (For one and two random variables)
13th Week Moment Generating Function Technique, Definition of Random Sampling
14th Week Concept of Random Sampling, Sampling Distributions for Some Statistics
RECOMENDED OR REQUIRED READINGWalpole R.E., Myers R.H. Myers Sh. L. Ye K. Probability and Statistics or Engineers and Scientists Prentice Hall. 7th edition;
İ. Kara. Olasılık, Bilim Teknik, 2000
PLANNED LEARNING ACTIVITIES AND TEACHING METHODSLecture,Questions/Answers,Problem Solving,Experiment,Other
ASSESSMENT METHODS AND CRITERIA
 QuantityPercentage(%)
Mid-term135
Assignment315
Quiz315
Total(%)65
Contribution of In-term Studies to Overall Grade(%)65
Contribution of Final Examination to Overall Grade(%)35
Total(%)100
ECTS WORKLOAD
Activities Number Hours Workload
Midterm exam122
Preparation for Quiz3412
Individual or group work1414196
Preparation for Final exam12020
Course hours14342
Preparation for Midterm exam12020
Laboratory (including preparation)
Final exam122
Homework3618
Total Workload312
Total Workload / 3010,4
ECTS Credits of the Course10
LANGUAGE OF INSTRUCTIONTurkish
WORK PLACEMENT(S)No
  

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