Chapter 5:ย Continuous Random Variables

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Probability density function

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23 Terms

1

Probability density function

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

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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.

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3

Continuous probability distributions

PROBABILITY = AREA

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4

Continuous probability density function

gives the relative likelihood of any outcome in a continuum occurring

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5

The uniform distribution

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

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6

Uniform Mean

๐œ‡=(๐‘Ž+๐‘) / 2

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7

Uniform Standard deviation

๐œŽ=โˆš((๐‘โˆ’๐‘Ž)^2 / 12)

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8

Uniform pdf

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

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9

Uniform cdf

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

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10

Probability density function

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

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11

Area to the Left of x**

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

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12

Area to the Right of x**

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

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13

Area Between c and d**

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

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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

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15

Exponential Distribution

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

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16

decay parameter

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

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17

exponential pdf

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

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18

exponential cdf

P(X โ‰ค x) = 1 โ€“ e^(โ€“mx)

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19

exponential mean

ยต = 1/๐‘š

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20

exponential standard deviation

ฯƒ = ยต

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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)

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22

Poisson probability

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

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23

k!

k*(k-1)(k-2)(k-3)โ€ฆ32*1

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