Nov 21, 2024  
2023-2024 Undergraduate Academic Catalog-June Update 
    
2023-2024 Undergraduate Academic Catalog-June Update [ARCHIVED CATALOG]

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MTH 2610 - Probability for Actuarial Science I

4 lecture hours 0 lab hours 4 credits
Course Description
This course introduces elementary probability theory for single random variables, both discrete and continuous.  Basic probability concepts such as counting techniques, sets, axioms of probability, conditional probability and independence, Bayes’ theorem are discussed. Other topics of discussion are discrete random variables and common discrete distributions such as binomial, geometric, negative binomial, hypergeometric and Poisson. Continuous distributions, uniform, normal and exponential distributions are also considered. In addition, limit theorems, deductibles and caps in insurance are included. MTH 2610 is the first of the two-course Probability for Actuarial Science sequence that prepares students for Exam P/Exam I. (prereq: MTH 1120 , Actuarial Science major, or Actuarial Science program director consent) (quarter system prereq: MA 137, Actuarial Science major, or Actuarial Science program director consent)
Course Learning Outcomes
Upon successful completion of this course, the student will be able to:
  • Use combination and permutation to solve related problems
  • Apply basic set theory concepts to probability problems
  • Use basic probability rules
  • Use tree diagrams, Venn diagrams, Venn Box Diagrams to solve probability problems
  • Use DeMorgan’s Laws in probability problems
  • Identify and solve problems involving conditional probability
  • Identify and solve problems involving total probability, Bayes’ Theorem and independence
  • Define a discrete random variable and the probability mass function and use them in examples
  • Define the cumulative distribution function for discrete random variables and use it to solve related problems
  • Define expected value for discrete random variables and use it in related problems
  • Solve problems involving conditional expectations of discrete random variables 
  • Identify and apply the discrete uniform distribution 
  • Identify and apply the binomial distribution
  • Identify and apply the geometric distribution
  • Identify and apply the negative binomial distribution
  • Identify and apply the hypergeometric distribution
  • Identify and apply the Poisson distribution
  • Define a continuous random variable and the probability density function and use them in examples
  • Define the cumulative distribution function for continuous random variables and use it to solve related problems
  • Define expected value for continuous random variables and use it in related problems
  • Use measures of central tendency, including mean, median, midrange, mode, quartiles and percentiles of data sets, and for continuous random variables
  • Use measures of dispersion, including variance and standard deviation, both for discrete and continuous random variables
  • Define and apply Moment Generating Function of different discrete distributions
  • Use deductible and cap calculations in insurance problems
  • Identify and apply the continuous uniform distribution 
  • Identify and apply the normal distribution
  • Identify and apply the exponential distribution

Prerequisites by Topic
  • Derivatives of functions, Product Rule, Quotient Rule and Chain Rule
  • Integrals of functions, substitution, integration by parts
  • Geometric series, Taylor polynomials and Taylor series

Course Topics
  • Combinatorial probability: Tree diagrams, the multiplication principle, permutation, and combination
  • General probability: Set theory review, basic rules of probability, DeMorgan’s Laws, conditional probability, Bayes’ Theorem, independence
  • Discrete random variables and their distributions: Probability mass function, cumulative distribution function, expected value (mean)
  • Measures of central tendency: Median of a data set, midrange of a data set, mode of a data set, quartiles, and percentiles of a data set
  • Measures of dispersion: Variance and standard deviation
  • Conditional probabilities: Conditional expectation
  • Different types of discrete distributions: Discrete uniform, binomial, geometric, negative binomial, hypergeometric and Poisson
  • Continuous random variables and their distributions: Probability density function, cumulative distribution function, expected value, variance, mode, median, percentiles, moment generating function, conditional probabilities, conditional expectation
  • Deductibles and caps in insurance
  • Different types of continuous random variables: Continuous uniform, exponential, normal

Coordinator
Dr. Yvonne Yaz



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