Presentation is loading. Please wait.

Presentation is loading. Please wait.

Psyc 235: Introduction to Statistics DON’T FORGET TO SIGN IN FOR CREDIT!

Similar presentations


Presentation on theme: "Psyc 235: Introduction to Statistics DON’T FORGET TO SIGN IN FOR CREDIT!"— Presentation transcript:

1 Psyc 235: Introduction to Statistics DON’T FORGET TO SIGN IN FOR CREDIT! http://www.psych.uiuc.edu/~jrfinley/p235/

2 Independent vs. Dependent Events Independent Events: unrelated events that intersect at chance levels given relative probabilities of each event Dependent Events: events that are related in some way So... how to tell if two events are independent or dependent?  Look at the INTERSECTION: P(A  B) if P(A  B) = P(A)*P(B) --> independent if P(A  B)  P(A)*P(B) --> dependent

3 Random Variables Random Variable:  variable that takes on a particular numerical value based on outcome of a random experiment Random Experiment (aka Random Phenomenon):  trial that will result in one of several possible outcomes  can’t predict outcome of any specific trial  can predict pattern in the LONG RUN

4 Random Variables Example: Random Experiment:  flip a coin 3 times Random Variable:  # of heads

5 Random Variables Discrete vs Continuous  finite vs infinite # possible outcomes Scales of Measurement  Categorical/Nominal  Ordinal  Interval  Ratio

6 Data World vs. Theory World Theory World: Idealization of reality (idealization of what you might expect from a simple experiment)  Theoretical probability distribution  POPULATION  parameter: a number that describes the population. fixed but usually unknown Data World: data that results from an actual simple experiment  Frequency distribution  SAMPLE  statistic: a number that describes the sample (ex: mean, standard deviation, sum,...)

7 So far... Graphing & summarizing sample distributions (DESCRIPTIVE) Counting Rules Probability Random Variables one more key concept is needed to start doing INFERENTIAL statistics: SAMPLING DISTRIBUTION

8 Binomial Situation Bernoulli Trial  a random experiment having exactly two possible outcomes, generically called "Success" and "Failure”  probability of “Success” = p  probability of “Failure” = q = (1-p) HeadsTails Good Robot Bad Robot Examples: Coin toss: “Success”=Heads p=.5 Robot Factory: “Success”=Good Robot p=.75

9 Binomial Situation Binomial Situation:  n: # of Bernoulli trials  trials are independent  p (probability of “success”) remains constant across trials Binomial Random Variable:  X = # of the n trials that are “successes”

10 Binomial Situation: collect data! Population : Outcomes of all possible coin tosses (for a fair coin) Success=Heads p=.5 Let’s do 10 tosses n=10 (sample size) Bernoulli Trial: one coin toss Binomial Random Variable: X=# of the 10 tosses that come up heads (aka Sample Statistic) Sample: X =....

11 Binomial Distribution p=.5, n=10 This is the SAMPLING DISTRIBUTION of X!

12 Sampling Distribution Sampling Distribution: Distribution of values that your sample statistic would take on, if you kept taking samples of the same size, from the same population, FOREVER (infinitely many times). Note: this is a THEORETICAL PROBABILITY DISTRIBUTION

13 Binomial Situation: collect data! Population : Outcomes of all possible coin tosses (for a fair coin) Success=Heads p=.5 Let’s do 10 tosses n=10 (sample size) Bernoulli Trial: one coin toss Binomial Random Variable: X=# of the 10 tosses that come up heads (aka Sample Statistic) Sample: X =.... 3 56 Sampling Distribution

14 Binomial Situation: collect data! Population : Outcomes of all possible coin tosses (for a fair coin) Success=Heads p=.5 Let’s do 10 tosses n=10 (sample size) Bernoulli Trial: one coin toss Binomial Random Variable: X=# of the 10 tosses that come up heads (aka Sample Statistic) Sample: X = 3 Sampling Distribution

15 Binomial Formula Binomial Random Variable specific # of successes you could get combination called the Binomial Coefficient probability of success probability of failure specific # of failures

16 Binomial Formula 3 Sampling Distribution p(X=3) = Remember this idea.... Hmm... what if we had gotten X=0?... pretty unlikely outcome... fair coin? Population : Outcomes of all possible coin tosses (for a fair coin) p=.5 n=10

17 More on the Binomial Distribution X ~ B(n,p) these are the parameters for the sampling distribution of X # heads in 5 tosses of a coin: X~B(5,1/2) Expectation Variance Std. Dev. # heads in 5 tosses of a coin: 2.5 1.251.12 Ex:

18 Let’s see some more Binomial Distributions What happens if we try doing a different # of trials (n) ? That is, try a different sample size...

19

20

21

22

23

24 Whoah. Anyone else notice those DISCRETE distributions starting to look smoother as sample size (n) increased? Let’s look at a few more binomial distributions, this time with a different probability of success...

25 Binomial Robot Factory 2 possible outcomes: Good Robot 90% Bad Robot 10% You’d like to know about how many BAD robots you’re likely to get before placing an order... p =.10 (... “success”) n = 5, 10, 20, 50, 100

26

27

28

29

30

31 Normal Approximation of the Binomial If n is large, then X ~ B(n,p) {Binomial Distribution} can be approximated by a NORMAL DISTRIBUTION with parameters:

32

33 Normal Distributions (aka “Bell Curve”) Probability Distributions of a Continuous Random Variable  (smooth curve!) Class of distributions, all with the same overall shape Any specific Normal Distribution is characterized by two parameters:  mean:   standard deviation: 

34 different means different standard deviations

35 Standardizing “Standardizing” a distribution of values results in re-labeling & stretching/squishing the x-axis useful: gets rid of units, puts all distributions on same scale for comparison HOWTO:  simply convert every value to a: Z SCORE:

36 Standardizing Z score: Conceptual meaning:  how many standard deviations from the mean a given score is (in a given distribution) Any distribution can be standardized Especially useful for Normal Distributions...

37 Standard Normal Distribution has mean:  =0 has standard deviation:  =1 ANY Normal Distribution can be converted to the Standard Normal Distribution...

38 Standard Normal Distribution

39 Normal Distributions & Probability Probability = area under the curve  intervals  cumulative probability  [draw on board] For the Standard Normal Distribution:  These areas have already been calculated for us (by someone else)

40 Standard Normal Distribution So, if this were a Sampling Distribution,...

41 Next Time More different types of distributions  Binomial, Normal  t, Chi-square FF And then... how will we use these to do inference? Remember: biggest new idea today was:  SAMPLING DISTRIBUTION


Download ppt "Psyc 235: Introduction to Statistics DON’T FORGET TO SIGN IN FOR CREDIT!"

Similar presentations


Ads by Google