Chapter 5:ย Continuous Random Variables

studied byStudied by 3 people
0.0(0)
get a hint
hint

Probability density function

1 / 22

23 Terms

1

Probability density function

a statistical measure used to gauge the likely outcome of a discrete value

New cards
2

Cumulative distribution function

a function whose value is the probability that a corresponding continuous random variable has a value less than or equal to the argument of the function.

New cards
3

Continuous probability distributions

PROBABILITY = AREA

New cards
4

Continuous probability density function

gives the relative likelihood of any outcome in a continuum occurring

New cards
5

The uniform distribution

is a continuous probability distribution and is concerned with events that are equally likely to occur.

New cards
6

Uniform Mean

๐œ‡=(๐‘Ž+๐‘) / 2

New cards
7

Uniform Standard deviation

๐œŽ=โˆš((๐‘โˆ’๐‘Ž)^2 / 12)

New cards
8

Uniform pdf

๐‘“(๐‘ฅ)=1 / ๐‘โˆ’๐‘Ž for a โ‰ค x โ‰ค b

New cards
9

Uniform cdf

P(X โ‰ค x) = ๐‘ฅโˆ’๐‘Ž / ๐‘โˆ’๐‘Ž

New cards
10

Probability density function

๐‘“(๐‘ฅ)=(1 / bโˆ’a) for ๐‘Ž โ‰ค ๐‘‹ โ‰ค ๐‘

New cards
11

Area to the Left of x**

** P(X < x) = (x โ€“ a)(1 / ๐‘โˆ’๐‘Ž)

New cards
12

Area to the Right of x**

** P(X > x) = (b โ€“ x)(1 / ๐‘โˆ’๐‘Ž)

New cards
13

Area Between c and d**

** P(c < x < d) = (base)(height) = (d โ€“ c)(1 / ๐‘โˆ’๐‘Ž)

New cards
14

Memoryless property

the independence of events or, more specifically, the independence of event-to-event times or P (X > r + t | X > r) = P (X > t) for all r โ‰ฅ 0 and t โ‰ฅ 0

New cards
15

Exponential Distribution

X ~ Exp(m) where m = the decay parameter

New cards
16

decay parameter

m = 1 / ฮผ and we write X โˆผ Exp(m) where x โ‰ฅ 0 and m > 0

New cards
17

exponential pdf

f(x) = me^(โ€“mx) where x โ‰ฅ 0 and m > 0

New cards
18

exponential cdf

P(X โ‰ค x) = 1 โ€“ e^(โ€“mx)

New cards
19

exponential mean

ยต = 1/๐‘š

New cards
20

exponential standard deviation

ฯƒ = ยต

New cards
21

exponential percentile k

k = ๐‘™๐‘›(1โˆ’๐ด๐‘Ÿ๐‘’๐‘Ž๐‘‡๐‘œ๐‘‡โ„Ž๐‘’๐ฟ๐‘’๐‘“๐‘ก๐‘‚๐‘“๐‘˜) / (โˆ’๐‘š)

New cards
22

Poisson probability

๐‘ƒ(๐‘‹=๐‘˜)=๐œ†^๐‘˜ ๐‘’^โˆ’๐‘˜ / ๐‘˜!ย P(X=k) with mean ฮป

New cards
23

k!

k*(k-1)(k-2)(k-3)โ€ฆ32*1

New cards

Explore top notes

note Note
studied byStudied by 5 people
Updated ... ago
5.0 Stars(1)
note Note
studied byStudied by 8 people
Updated ... ago
5.0 Stars(1)
note Note
studied byStudied by 11 people
Updated ... ago
5.0 Stars(2)
note Note
studied byStudied by 96 people
Updated ... ago
4.5 Stars(4)
note Note
studied byStudied by 14 people
Updated ... ago
5.0 Stars(1)
note Note
studied byStudied by 2 people
Updated ... ago
5.0 Stars(1)
note Note
studied byStudied by 3 people
Updated ... ago
5.0 Stars(1)
note Note
studied byStudied by 4465 people
Updated ... ago
4.7 Stars(15)

Explore top flashcards

flashcards Flashcard175 terms
studied byStudied by 1 person
Updated ... ago
5.0 Stars(1)
flashcards Flashcard49 terms
studied byStudied by 2 people
Updated ... ago
5.0 Stars(1)
flashcards Flashcard30 terms
studied byStudied by 4 people
Updated ... ago
5.0 Stars(1)
flashcards Flashcard31 terms
studied byStudied by 28 people
Updated ... ago
5.0 Stars(1)
flashcards Flashcard91 terms
studied byStudied by 4 people
Updated ... ago
5.0 Stars(1)
flashcards Flashcard189 terms
studied byStudied by 19 people
Updated ... ago
5.0 Stars(2)
flashcards Flashcard115 terms
studied byStudied by 4 people
Updated ... ago
5.0 Stars(1)
flashcards Flashcard33 terms
studied byStudied by 414 people
Updated ... ago
5.0 Stars(6)