All Study Guides Intro to Mathematical Economics Unit 9
💰 Intro to Mathematical Economics Unit 9 – Probability Theory & Expected UtilityProbability theory and expected utility form the backbone of decision-making under uncertainty in economics. These concepts provide tools to quantify risk, model preferences, and analyze strategic interactions. They're essential for understanding everything from individual choices to market behavior.
Applications range from portfolio optimization in finance to game theory in strategic decision-making. While these models offer powerful insights, they also have limitations. Real-world behavior often deviates from theoretical predictions, highlighting the need for nuanced interpretation and ongoing research.
Key Concepts
Probability theory provides a mathematical framework for quantifying and analyzing uncertainty
Random variables assign numerical values to outcomes of random experiments
Probability distributions describe the likelihood of different values of a random variable
Expected value represents the average outcome of a random variable over many repetitions
Variance measures the spread or dispersion of a random variable around its expected value
Utility theory models decision-making preferences and risk attitudes of individuals
Von Neumann-Morgenstern utility theorem establishes a framework for rational decision-making under uncertainty
Applications of probability and utility theory in economics include game theory, finance, and insurance
Probability Basics
Probability is a measure of the likelihood of an event occurring, expressed as a number between 0 and 1
0 represents an impossible event, while 1 represents a certain event
Sample space is the set of all possible outcomes of a random experiment
Events are subsets of the sample space, representing specific outcomes or combinations of outcomes
Probability of an event A is denoted as P(A) and can be calculated using the following methods:
Classical approach: P(A) = (number of favorable outcomes) / (total number of possible outcomes)
Empirical approach: P(A) = (frequency of event A) / (total number of trials)
Conditional probability P(A|B) measures the probability of event A occurring given that event B has occurred
Independent events have probabilities that do not depend on the occurrence of other events
For independent events A and B, P(A and B) = P(A) × P(B)
Random Variables and Distributions
A random variable is a function that assigns a numerical value to each outcome in a sample space
Discrete random variables take on a countable number of distinct values (integers)
Examples include the number of defective items in a production batch or the number of customers in a queue
Continuous random variables can take on any value within a specified range (real numbers)
Examples include the weight of a randomly selected product or the time until a machine fails
Probability mass function (PMF) describes the probability distribution of a discrete random variable
PMF gives the probability of each possible value of the random variable
Probability density function (PDF) describes the probability distribution of a continuous random variable
PDF gives the relative likelihood of the random variable taking on a specific value
Cumulative distribution function (CDF) gives the probability that a random variable is less than or equal to a given value
CDF is defined for both discrete and continuous random variables
Expected Value and Variance
Expected value (or mean) of a random variable X, denoted as E(X), is the weighted average of all possible values
For discrete random variables: E ( X ) = ∑ x x ⋅ P ( X = x ) E(X) = \sum_{x} x \cdot P(X = x) E ( X ) = ∑ x x ⋅ P ( X = x )
For continuous random variables: E ( X ) = ∫ − ∞ ∞ x ⋅ f ( x ) d x E(X) = \int_{-\infty}^{\infty} x \cdot f(x) dx E ( X ) = ∫ − ∞ ∞ x ⋅ f ( x ) d x
Linearity of expectation states that for random variables X and Y: E ( X + Y ) = E ( X ) + E ( Y ) E(X + Y) = E(X) + E(Y) E ( X + Y ) = E ( X ) + E ( Y )
Variance, denoted as Var(X) or σ 2 \sigma^2 σ 2 , measures the average squared deviation from the mean
V a r ( X ) = E [ ( X − E ( X ) ) 2 ] = E ( X 2 ) − [ E ( X ) ] 2 Var(X) = E[(X - E(X))^2] = E(X^2) - [E(X)]^2 Va r ( X ) = E [( X − E ( X ) ) 2 ] = E ( X 2 ) − [ E ( X ) ] 2
Standard deviation σ \sigma σ is the square root of the variance and has the same units as the random variable
Chebyshev's inequality provides a bound on the probability of a random variable deviating from its mean
For any k > 0: P ( ∣ X − E ( X ) ∣ ≥ k σ ) ≤ 1 k 2 P(|X - E(X)| \geq k\sigma) \leq \frac{1}{k^2} P ( ∣ X − E ( X ) ∣ ≥ kσ ) ≤ k 2 1
Utility Theory
Utility is a measure of satisfaction or preference that an individual derives from consuming goods or services
Cardinal utility assigns numerical values to represent the level of satisfaction
Allows for interpersonal comparisons of utility
Ordinal utility ranks preferences without assigning specific numerical values
Only the relative ordering of preferences matters
Utility functions U(x) map the consumption of goods or wealth levels to utility values
Monotonicity: more is preferred to less, so utility functions are non-decreasing
Marginal utility is the additional satisfaction gained from consuming one more unit of a good
Diminishing marginal utility: the additional satisfaction decreases as more units are consumed
Risk attitudes describe an individual's preferences for uncertain outcomes
Risk-averse individuals prefer a certain outcome to a risky one with the same expected value
Risk-neutral individuals are indifferent between a certain outcome and a risky one with the same expected value
Risk-seeking individuals prefer a risky outcome to a certain one with the same expected value
Decision Making Under Uncertainty
Von Neumann-Morgenstern (VNM) utility theorem provides a foundation for decision-making under uncertainty
Axioms: completeness, transitivity, continuity, and independence
Expected utility theory states that a rational decision-maker chooses the option with the highest expected utility
Expected utility of an option: E U = ∑ i p i ⋅ U ( x i ) EU = \sum_{i} p_i \cdot U(x_i) E U = ∑ i p i ⋅ U ( x i ) , where p i p_i p i is the probability of outcome x i x_i x i
Certainty equivalent is the guaranteed amount that provides the same utility as a risky option
Risk premium is the difference between the expected value of a risky option and its certainty equivalent
Measures the amount an individual is willing to pay to avoid risk
Allais paradox demonstrates violations of the independence axiom in the VNM utility theorem
Highlights the limitations of expected utility theory in describing actual human behavior
Applications in Economics
Game theory models strategic interactions between decision-makers
Players' payoffs are represented by utility functions
Nash equilibrium: a set of strategies where no player can improve their expected utility by unilaterally changing strategy
Portfolio theory in finance uses probability and utility to optimize investment decisions
Mean-variance analysis balances the expected return and risk (variance) of a portfolio
Efficient frontier represents the set of portfolios with the highest expected return for a given level of risk
Insurance markets rely on probability theory to calculate premiums and manage risk
Law of large numbers ensures the long-run stability of insurance companies
Adverse selection and moral hazard are key challenges in insurance markets
Auction theory applies probability and utility to design and analyze auction mechanisms
Different auction formats (first-price, second-price, all-pay) lead to different bidding strategies and outcomes
Common Pitfalls and Misconceptions
Gambler's fallacy: believing that past events influence the probability of future independent events
Example: thinking that a coin is "due" for heads after a series of tails
Confusion between correlation and causation
Correlation does not imply a causal relationship between variables
Neglecting base rates when evaluating conditional probabilities
Base rate fallacy: focusing on specific information and ignoring the underlying probability of an event
Misinterpreting the meaning of expected value
Expected value is a long-run average, not a guaranteed outcome
Assuming that all individuals have the same risk preferences
Risk attitudes can vary significantly between individuals and contexts
Overreliance on expected utility theory to describe real-world decision-making
Behavioral economics highlights systematic deviations from the predictions of expected utility theory