Probability Distributions and Density Functions PDF
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Summary
This document provides a comprehensive explanation of probability distributions and probability density functions for continuous random variables. It includes definitions, formulas, and examples, covering topics such as cumulative distribution functions, mean and variance calculations, and expected values. The document seems to be suitable for an undergraduate-level statistics or probability course.
Full Transcript
(4.1) Probability Distributions and Probability Density Functions Definition: A continuous random variable X is a random variable with an interval of real numbers (finite or infinite) for its range. Definition: For a continuous random variable X , a probability density function (PDF) is a function...
(4.1) Probability Distributions and Probability Density Functions Definition: A continuous random variable X is a random variable with an interval of real numbers (finite or infinite) for its range. Definition: For a continuous random variable X , a probability density function (PDF) is a function such that 1. f ( x ) ≥ 0 ∞ 2. ∫ f ( x ) dx = 1 −∞ b 3. P ( a ≤ X = ≤ b) ( x ) dx ∫ f= area under f ( x ) from a to b for any a and b a Note: For a continuous random variable X , the following are true: ) 0 1. P ( X= x= 2. P ( x1 ≤ X ≤ x2 )= P ( x1 < X ≤ x2 )= P ( x1 ≤ X < x2 )= P ( x1 < X < x2 ) (4.2) Cumulative Distribution Functions Definition: The cumulative distribution function (CDF) of a continuous random variable X is x F ( x= ) P ( X ≤ x =) ∫ f ( u ) du −∞ PDF from the CDF: If the derivative of F ( x ) exists, d f ( x ) F= = '( x) F ( x ) . dx (4.3) Mean and Variance of a Continuous Random Variable -Mean and Variance- Suppose that X is a continuous random variable with probability density function f ( x ). The mean or expected value of X , denoted as µ or E ( X ) , is ∞ µ E ( X= = ) ∫ x ⋅ f ( x ) dx −∞ The variance of X , denoted as V ( X ) or σ 2 , is ∞ ∞ σ2 = V (X ) = ∫ (x − µ) ⋅ f ( x ) dx = ⋅ f ( x ) dx − µ 2 2 ∫x 2 −∞ −∞ The standard deviation of X is σ = σ 2 -Expected Value- Expected Value of a Function of a Continuous Random Variable: If X is a continuous random variable with probability density function f ( x ) , ∞ ( X ) E h= ∫ h ( x ) ⋅ f ( x ) dx −∞ Problems that f ( x ) e ( ) for 4 < x. Determine the following: − x−4 1) Suppose= a) P (1 < x ) b) P ( 5 < x ) c) P ( 4 < x ≤ 8 ) d) x such that P ( X < x ) = 0.90 2) Suppose that the cumulative distribution function of the random variable X is 0 x < −2 ( x ) 0.25 x + 0.5 −2 ≤ x < 2 F= 1 x≥2 Determine the following: a) f ( x ) b) P ( X < 1.8 ) c) P ( X > −1.5 ) d ) P ( X < −2 ) e) P ( −1 < X < 1) = 3) Suppose that f ( x ) 0.125 x for 0 < x < 4. a) Determine the mean and variance of X. Y 3 X + 1 , find E (Y ) and V (Y ). b) If = 70 = 4) Suppose that f ( x) for 1 < x < 70. Determine the following: 69 x 2 a) P ( X > 50 ) b) The mean and variance of X. c) If Y = 2.50 X , find E (Y ) and V (Y ).