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Transcript
MAT 375 – Probability and Statistics for Engineers – sample syllabus
Class Times: TR 75 minutes, F 50 minutes
Room: Computer classroom
Student Learning Outcomes:
After successfully completing the course, the student will be able to do the following:
1.
2.
3.
4.
5.
Understand the basic rules of probability.
Determine the probability distribution, expected value, and variance of random variables.
Analyze and interpret data graphically and numerically.
Apply the Central Limit Theorem.
Construct confidence intervals to estimate a population mean and proportion (one and two
samples).
6. Determine an appropriate hypothesis test to apply to data and then successfully carry out the
test and interpret the results.
7. Perform and interpret the results of a simple linear regression analysis.
8. Use a statistical software package to analyze data and to solve probability and statistics
problems.
Course Work:



Graded work, completed in class or outside of class
Projects
Exams
List of Topics:
Measures of Location: Sample Mean and Median
Measures of Variability: Range, Standard deviation, Interquartile range
Discrete and Continuous Data
Sample Space and Events
Probability of an Event
Additive Rules
Conditional Probability, Independence and the Product Rule
Bayes Rule
Random Variables
Discrete and Continuous distributions
Joint probability Distributions & Conditional Distributions
Mathematical Expectation (Mean, Variance, Moments) and Their Properties
Chebyshev’s Theorem
Bernoulli trials and the Binomial Probability Distribution
Geometric and Negative Binomial Probability Distribution
Poisson Probability Distribution
Hypergeometric Probability Distribution
Gaussian (Normal) Probability Density Functions
Lognormal Probability Density Functions
Normal Approximation to the Binomial
Exponential Probability Density Function
Central Limit Theorem
Chi-square, T and F distributions
Covariance and Correlation
Estimation of Means and Difference of Means
Estimation of Proportions and Difference of Proportions
Hypothesis Testing for a Mean
Hypothesis Testing for a Proportion
Goodness of Fit Test and Test of Independence for Categorical Variables
ANOVA (one way)
Simple Linear Regression
Inference on Linear Regression Parameters
Utilize statistical software to study and apply probability theory through simulation of experiments with
random outcomes.