Probability and Distributions A Brief Introduction.

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Presentation transcript:

Probability and Distributions A Brief Introduction

Random Variables Random Variable (RV): A numeric outcome that results from an experiment For each element of an experiment’s sample space, the random variable can take on exactly one value Discrete Random Variable: An RV that can take on only a finite or countably infinite set of outcomes Continuous Random Variable: An RV that can take on any value along a continuum (but may be reported “discretely”) Random Variables are denoted by upper case letters (Y) Individual outcomes for RV are denoted by lower case letters (y)

Probability Distributions Probability Distribution: Table, Graph, or Formula that describes values a random variable can take on, and its corresponding probability (discrete RV) or density (continuous RV) Discrete Probability Distribution: Assigns probabilities (masses) to the individual outcomes Continuous Probability Distribution: Assigns density at individual points, probability of ranges can be obtained by integrating density function Discrete Probabilities denoted by: p(y) = P(Y=y) Continuous Densities denoted by: f(y) Cumulative Distribution Function: F(y) = P(Y≤y)

Discrete Probability Distributions

Continuous Random Variables and Probability Distributions Random Variable: Y Cumulative Distribution Function (CDF): F(y)=P(Y≤y) Probability Density Function (pdf): f(y)=dF(y)/dy Rules governing continuous distributions:  f(y) ≥ 0  y   P(a≤Y≤b) = F(b)-F(a) =  P(Y=a) = 0  a

Expected Values of Continuous RVs

Means and Variances of Linear Functions of RVs

Normal (Gaussian) Distribution Bell-shaped distribution with tendency for individuals to clump around the group median/mean Used to model many biological phenomena Many estimators have approximate normal sampling distributions (see Central Limit Theorem) Notation: Y~N(  2 ) where  is mean and  2 is variance Obtaining Probabilities in EXCEL: To obtain: F(y)=P(Y≤y) Use Function: =NORMDIST(y, , ,1) Virtually all statistics textbooks give the cdf (or upper tail probabilities) for standardized normal random variables: z=(y-  )/  ~ N(0,1)

Normal Distribution – Density Functions (pdf)

Integer part and first decimal place of z Second Decimal Place of z

Chi-Square Distribution Indexed by “degrees of freedom ( )” X~   Z~N(0,1)  Z 2 ~    Assuming Independence: Obtaining Probabilities in EXCEL: To obtain: 1-F(x)=P(X≥x) Use Function: =CHIDIST(x, ) Virtually all statistics textbooks give upper tail cut-off values for commonly used upper (and sometimes lower) tail probabilities

Chi-Square Distributions

Critical Values for Chi-Square Distributions (Mean=, Variance=2 )

Student’s t-Distribution Indexed by “degrees of freedom ( )” X~t Z~N(0,1), X~   Assuming Independence of Z and X: Obtaining Probabilities in EXCEL: To obtain: 1-F(t)=P(T≥t) Use Function: =TDIST(t, ) Virtually all statistics textbooks give upper tail cut-off values for commonly used upper tail probabilities

Critical Values for Student’s t-Distributions (Mean=, Variance=2 )

F-Distribution Indexed by 2 “degrees of freedom (    )” W~F  X 1 ~   , X 2 ~    Assuming Independence of X 1 and X 2 : Obtaining Probabilities in EXCEL: To obtain: 1-F(w)=P(W≥w) Use Function: =FDIST(w, 1  2 ) Virtually all statistics textbooks give upper tail cut-off values for commonly used upper tail probabilities

Critical Values for F-distributions P(F ≤ Table Value) = 0.95