YoVDO

Probability for Actuarial Science

Offered By: YouTube

Tags

Actuarial science Courses Statistics & Probability Courses Set Theory Courses Conditional Probability Courses Probability Distributions Courses Inequality Courses Probability Theory Courses Moment Generating Functions Courses

Course Description

Overview

Prepare for the actuarial probability exam with this comprehensive 11-hour course covering essential topics in probability theory. Learn set theory basics, sample spaces, events, Kolmogorov axioms, counting techniques, conditional probability, and multiplication law. Explore independent events, total probability law, Bayes' rule, random variables, discrete and continuous distributions, expectation, variance, and moment-generating functions. Study specific probability distributions including Bernoulli, binomial, geometric, negative binomial, hypergeometric, Poisson, exponential, gamma, uniform, normal, beta, and chi-squared. Delve into Markov's and Chebyshev's inequalities, and conclude with an introduction to multivariate probability distributions, joint probability mass functions, and probability density functions.

Syllabus

Probability: Lesson 1- Basics of Set Theory.
Probability: Lesson 2 - Sample Space, Events and Compound Events.
Probability Lesson 3 - Basics of Probability Theory/ Kolmogorov Axioms.
Inclusion Exclusion Principle, DeMorgan's Law Examples.
Probability Lesson 4 Part 1: Counting Techniques.
Probability Lesson 4 part 2 Counting Techniques.
Probability Lesson 5: Conditional Probability and Multiplication Law of Probability.
Probability Lesson 6: Independent Events.
Lesson 7 Law of Total Probability.
Lesson 8: Bayes rule.
Bayes rule Example.
Lesson 9 :Random Variables - Introduction.
Discrete Random Variables.
Lesson 11 Continuous Random Variables.
Lesson 12 The Expectation of Random Variables.
Lesson 13: Variance of a Random Variable.
Lesson 14: Properties of Expectation and Variance.
Lesson 15: Moment Generating Functions.
Lesson 16 Bernoulli and Binomial Distribution Part 1.
Lesson 16 Binomial Distribution Part 2.
Lesson 17: Geometric Distribution Part 1.
Lesson 17: Geometric Distribution part II.
Lesson 18: Negative Binomial Distribution - Part 1.
Lesson 18: Negative Binomial distribution Part II.
Lesson 19 Hypergeometric Distribution - Introduction.
Poisson Distribution.
Exponential Distribution.
Poisson Process and Gamma Distribution.
Gamma Distribution.
Univariate transformation of a random variable.
Uniform Distribution.
Normal Distribution.
Beta Distribution.
Chi Squared Distribution.
Markov's Inequality - Intuitively and visually explained.
Proof of Markov's Inequality.
Chebyshev’s Inequality.
Introduction to Multivariate Probability Distributions.
Joint Probability Distribution Of Discrete Random Variables.
Joint Probability Mass Function Example.
Probability Density Function Explained.


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