20.08.2023, 21:52
Exam P For Actuariess
Published 11/2022
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 10.51 GB | Duration: 19h 0m
The first actuary exam
What you'll learn
The Candidate will understand basic probability concepts, combinatorics, and discrete mathematics.
The Candidate will understand key concepts concerning discrete and continuous univariate random variables
The Candidate will understand key concepts concerning multivariate discrete random variables and the distribution of order statistics
Guide candidate to complete the first actuary exam
Requirements
Basic calculus. (differentiate and integration)
Basic algrebra
Description
Exam P is a three hour multiple choice examination and is offered via computer based testing (CBT). It's the first step toward being an actuary.The syllabus for Exam P develops the candidate's knowledge of the fundamental probability tools for quantitatively assessing risk. The application of these tools to problems encountered in actuarial science is emphasized. A thorough command of the supporting calculus is assumed. Additionally, a very basic knowledge of insurance and risk management is assumed.Candidates are expected to spend more than 300 hours studing and practice on this exam. The pass rate is around 45%This course is taught by Yodharin Monplub. Professor Yodharin Monplub has an almost ASA qualification from the SOA, with only FAP left. The following are his exams qualification:SOA: P FM IFM SRM STAM LTAMCAS: 1 2 3/F MAS1 MAS2 At a young age of 22, he is now a full time teacher with over 4 years of teaching experience. There are 7 sections on this exam.This will cover all of exam P syllabusExam P Section 1 Basic probability, Conditional probability, Independence, Combinatoric and PermutationExam P Section 2 Random variable, PDF and CDFExam P Section 3 Expectation and VarianceExam P Section 4 Frequently use discrete distributionExam P Section 5 Frequently use continuous distributionExam P Section 6 Joint, Marginal and Conditional distributionExam P Section 7 Transformation of variable Practice QuestionsMany practice questions to prepare students for exam P. The difficulty is similar to the real exam P sitting.
Overview
Section 1: Basic probability, conditional probability, independence and combinatoric
Lecture 1 Event and Venn Euler.mp4
Lecture 2 Union of events
Lecture 3 intersect of events
Lecture 4 Mutually exclusive outcome
Lecture 5 Complement of event
Lecture 6 Subset and subevent
Lecture 7 Independent of event A and B
Lecture 8 Conditional probability 1
Lecture 9 Conditional probability 2
Lecture 10 Conditional probability 3 4
Lecture 11 Conditional probability 5 6
Lecture 12 Conditional probability 7
Lecture 13 Conditional probability 8 9
Lecture 14 Conditional probability 10 11
Lecture 15 Permutation
Lecture 16 Combinatoric
Lecture 17 Permutation with duplicate objects
Lecture 18 Question 1
Lecture 19 Question 2
Lecture 20 Question 3
Lecture 21 Question 4
Lecture 22 Question 5
Lecture 23 Question 6
Section 2: Random variable, PDF and CDF
Lecture 24 Random variable
Lecture 25 Discrete 1
Lecture 26 Discrete 2
Lecture 27 Discrete 3
Lecture 28 Discrete 4
Lecture 29 Continuous 1
Lecture 30 Continuous 2
Lecture 31 Property of continuous distribution
Lecture 32 CDF and Survival function 1
Lecture 33 CDF and Survival function 2
Lecture 34 Hazard rate
Lecture 35 Hazard rate question 1
Lecture 36 Hazard rate question 2
Lecture 37 Hazard rate question 3
Lecture 38 Relationship between function
Lecture 39 Quiz 1 and 2
Lecture 40 Quiz 3
Lecture 41 Quiz 4
Lecture 42 Quiz 5
Section 3: Expectation and variance
Lecture 43 Expected value
Lecture 44 Expected value of h(x)
Lecture 45 Moments of random variables
Lecture 46 Quiz Question 1
Lecture 47 Quiz Question 2
Lecture 48 Variance
Lecture 49 Variance question 1
Lecture 50 Variance question 2
Lecture 51 Variance property
Lecture 52 Moment generetion function
Lecture 53 Moment generation function
Lecture 54 Moment generation function
Lecture 55 Probability generation function
Lecture 56 Percentile
Lecture 57 Percentile
Lecture 58 Percentile discrete
Lecture 59 Mode
Lecture 60 Minimun of variables
Lecture 61 Minimun of variables
Lecture 62 Maximun of variables
Lecture 63 Input and Output
Lecture 64 Important notes
Lecture 65 Quiz Question 1
Lecture 66 Quiz Question 2
Lecture 67 Quiz Question 3
Lecture 68 Quiz Question 4
Section 4: Frequently use discrete distribution
Lecture 69 Discrete Uniform Distribution
Lecture 70 Discrete Uniform Distribution
Lecture 71 Binomial Distribution
Lecture 72 Binomial Distribution
Lecture 73 Binomial Distribution
Lecture 74 Binomial Distribution Expect and variance
Lecture 75 Binomial Distribution question 1
Lecture 76 Binomial Distribution question 2
Lecture 77 Poisson Distribution
Lecture 78 Poisson Distribution question 1 2 3
Lecture 79 Poisson Distribution question 4
Lecture 80 Poisson Distribution property
Lecture 81 Geometric Distribution
Lecture 82 Geometric Distribution question 1 2
Lecture 83 Negative binomial Distribution
Lecture 84 Negative binomial expect and variance
Lecture 85 Negative binomial question 1
Lecture 86 Hypergeometric Distribution
Lecture 87 Multinomial Distribution
Lecture 88 Question 1
Lecture 89 Question 2
Lecture 90 Question 3
Lecture 91 Question 4
Section 5: Frequently use continuous distribution
Lecture 92 Uniform Distribution
Lecture 93 Uniform Distribution question 1
Lecture 94 Normal Distribution
Lecture 95 Z-table
Lecture 96 Z-table question
Lecture 97 Z-table question
Lecture 98 Z-table question
Lecture 99 Normal approximation
Lecture 100 Normal approximation question 1
Lecture 101 Normal approximation question 2
Lecture 102 Normal approximation question 3
Lecture 103 Central Limit Theorem
Lecture 104 Exponential distribution
Lecture 105 Exponential Distribution question 1
Lecture 106 Exponential Distribution question 2
Lecture 107 Exponential lack of memory property
Lecture 108 Exponential lack of memory property
Lecture 109 Exponential lack of memory property
Lecture 110 Link between Poisson and Exponential distribution
Lecture 111 Link between Poisson and Exponential distribution
Lecture 112 Minimun of collection of exponential distribution
Lecture 113 Exponential Distribution quesiton 1 2
Lecture 114 Exponential Distribution question 3
Lecture 115 Gamma Distribution
Lecture 116 Quiz question 1
Lecture 117 Quiz question 2 and 3
Lecture 118 Quiz question 4
Section 6: joint, marginal and conditional distribution
Lecture 119 Joint Distribution
Lecture 120 Joint Distribution
Lecture 121 Joint Distribution question
Lecture 122 Double integration
Lecture 123 Double integration question
Lecture 124 Double integration question
Lecture 125 Double integration question
Lecture 126 Double integration question
Lecture 127 Double integration question
Lecture 128 Expectation of H(X)
Lecture 129 Expectation of H(X) question
Lecture 130 Expectation of H(X) question
Lecture 131 Expectation of H(X) question
Lecture 132 Joint Distribution question
Lecture 133 Marginal Distribution
Lecture 134 Marginal Distribution question
Lecture 135 Marginal Distribution question
Lecture 136 Marginal Distribution question
Lecture 137 Independent of event
Lecture 138 Independent of event question
Lecture 139 Independent of event question
Lecture 140 Independent of event question
Lecture 141 Independent of event question
Lecture 142 Expect value from joint and marginal
Lecture 143 Expect value from joint and marginal
Lecture 144 Conditional probability
Lecture 145 Conditional probability
Lecture 146 Conditional probability
Lecture 147 Conditional probability
Lecture 148 Double expectation rule
Lecture 149 Double expectation rule
Lecture 150 Double expectation rule
Lecture 151 Double expectation rule
Lecture 152 Covariance, Correlation and Variance
Lecture 153 Covariance and Correlation question
Lecture 154 Covariance and Correlation question
Lecture 155 Covariance and Correlation question
Lecture 156 Moment generation function of joint
Section 7: Transformation of variable
Lecture 157 one-to-one transformation
Lecture 158 one-to-one transformation
Lecture 159 one-to-one transformation
Lecture 160 one-to-one transformation
Lecture 161 one-to-one transformation
Lecture 162 Two-to-one transformation
Lecture 163 Two-to-one transformation
Lecture 164 Order statistic
For actuaries, actuary students and those who are interested in becoming an actuary