MATH 2421: Lecture 15
Date: 2024-10-28 11:58:17
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Function of a Continuous Random Variable (cont.)
-
Theorem
- theorem: w/ being cont. r.v. having pdf
- suppose: strictly monotonic, differentiable function of
- π¨βπ« i.e. inverse function exists
- then r.v. has pdf given by
- : value of s.t.
- suppose: strictly monotonic, differentiable function of
- proof
- assume: increasing
- and same for
-
- and, from chain rule:
- β
- and, as non-decreasing, its derivative is non-negative
- when , either or : leading to
- and, from chain rule:
- assume: increasing
- Remarks: if cont. r.v. w/ strictly increasing cdf
-
- thus, we can perform inverse transformation method
- generating cont. r.v. w/ distribution from
- , then
- theorem: w/ being cont. r.v. having pdf
-
Example
- let , find cdf, pdf. of
- if :
- if
- actually
- aka Chi-squared distribution
- same , , aka lognormal r.v.
- define pdf
- for ,
- else:
- also, as strictly monotonic
- for
- also
- using formula, we obtain:
- : cont. r.v. w/ pdf
- and is odd
- find:
- π¨βπ« exercise
- let be cont. r.v. w/ cdf
- assume : strictly increasing function
- define the r.b. by
- possible values of
- for
- PDF of : for
- thus,
- generating an exponential r.v.
- for
- then : value s.t.
- and : also follows
- thus
- let , find cdf, pdf. of
Joint Distribution Functions
-
Introduction
- often: we are interested in multiple r.v. at the same time
- e.g. a student's age, gender, major, year of study
- on particular day, number of vehicle accidents, deaths, and major injuries
- generalizing distribution function: for multiple r.v.s
- joint distribution function
- often: we are interested in multiple r.v. at the same time
-
Joint distribution function
- for r.v. in same , define joint distribution function of aas
- generalization of
- often abbreviated: joint d.f.
- remarks
- distribution of : obtained from joint d.f. by:
- then : marginal distribution function of (= cdf)
- properties
- π¨βπ« all derived from:
- for any
- for any
- for any
- for any
- π¨βπ« all derived from:
- using joint d.f. to compute two r.v.
-
- think about it in geometry!
- inclusion matters here!
-
- proof
- then
- thus:
- for r.v. in same , define joint distribution function of aas
-
Joint probability mass function
- joint pmf of :
- marginal pmf
- conditions to check for validity
- useful calculations
-
Example
-
suppose: balls randomly selected from urn
- w/ red, white, and blue balls respectively
- : rn. of white balls chosen
- pmf of is:
r\w 0 1 2 3 0 10/220 40/220 30/220 4/220 84/220 1 30/220 60/220 18/220 0 108/220 2 15/220 12/220 0 0 27/220 3 1/220 0 0 0 1/220 56/220 112/220 48/220 4/220 - last row & column: marginal pmf
-
suppose: 15% of family in community w/ no children
- 20% w/ 1
- 35% w/ 2
- 30% w/ 3
- each child: equally likely to be a boy or girl
- : no. of boys, : no. of girls
\ 0 1 2 3 0 0.1500 0.1000 0.0875 0.0375 0.3750 1 0.1000 0.1750 0.1125 0 0.3875 2 0.0875 0.1125 0 0 0.2000 3 0.0375 0 0 0 0.0375 0.3750 0.3875 0.2000 0.0375
-
Joint Continuous Random Variables
-
Joint and marginal pdf
- : jointly continuous r.v. if there exists joint pdf for every set
- marginal pdf: given by
- conditions to check: same as discrete
- some useful calculations
- for , take
- for where
- β for
- thus:
-
Examples
- joint pdf: given by
- =
- joint pdf: given by