Building robust actuarial models is at the heart of both the SOA Exam P (Probability) and Exam FM (Financial Mathematics). These exams are foundational for aspiring actuaries, testing your understanding of probability concepts and financial mathematics principles, respectively. In this article, we’ll explore how to apply fundamental actuarial assumptions to create robust models for both exams, focusing on practical examples and actionable advice.
Let’s start with Exam P. This exam assesses your grasp of probability theory and its application in actuarial science. It covers topics like combinatorics, univariate and multivariate distributions, and risk management concepts[3][5]. A key assumption in Exam P is that candidates have a basic understanding of calculus and insurance principles. For instance, consider a scenario where a company is pricing hurricane insurance. The probability of a hurricane occurring in any given year is 0.05, and the number of hurricanes in different years is independent. This scenario involves binomial probability distributions, where the probability of fewer than three hurricanes in a 20-year period can be calculated using the binomial distribution formula[6].