Lecturer: Prof. Herbert Enderton
College/University: University of California, Los Angeles (UCLA)
- Events, Sample Space, and Probability Function
- Basic Properties of the Probability Function, Multiplication Principle, Addition Principle, Permutation
- Combinations, Permutation of n Objects Not All Distinct
- Other Properties of the Probabilty Function
- Conditional Probability
- Law of Total Probability, Bayes' Rule, and Independent Events
- Independence of Two or More Events
- Discrete Random Variables, Probability Mass Function, Cumulative Distribution Function, and Expected Value
- Properties of Expected Value, Variance and Standard Deviation of a Random Variable
- Binomial Distribution, Joint Distributions, Independent Random Variables and Other Properties
- Review
- Multinomial Distribution, Geometric Distribution
- Expected Value and Standard Deviation of a Geometric Distribution, Negative Binomial Distribution
- Poisson Distribution
- Expected Value, Variance and Standard Deviation of the Poisson Distribution
- Continuous Random Variable, Probability Density Function
- Mean and Variance of Continuous Random Variable, Exponential Distribution
- Variance and Standard Deviation of an Exponential Distribution, Exponential Distribution with Parameter Lamda as a Function of Another Variable
- Standard Normal Distribution and Its Properties
- Normal Distribution with Mean "Mu" and Standard Deviation "Sigma"
- Central Limit Theorem
- Applications of Central Limit Theorem
- Review
- Confidence Interval (Part I)
- Confidence Interval (Part II)
- Markov's Inequality, Chebyshev's Inequality, Law of Large Numbers
- Determining Sample Size and Confidence Interval
- Review
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