Statistics 270 - Lecture 20 - PowerPoint PPT Presentation

About This Presentation
Title:

Statistics 270 - Lecture 20

Description:

Statistics 270 - Lecture 20 – PowerPoint PPT presentation

Number of Views:70
Avg rating:3.0/5.0
Slides: 19
Provided by: Derek239
Category:

less

Transcript and Presenter's Notes

Title: Statistics 270 - Lecture 20


1
Statistics 270 - Lecture 20
2
  • Last Daycompleted 5.1
  • Today Parts of Section 5.3 and 5.4

3
Sampling
  • In chapter 1, we concerned ourselves with
    numerical/graphical summeries of samples (x1, x2,
    , xn) from some population
  • Can view each of the Xis as random variables
  • We will be concerned with random samples
  • The xis are independent
  • The xis have the same probability distribution
  • Often called

4
Definitions
  • A parameter is a numerical feature of a
    distribution or population
  • Statistic is a function of sample data (e.g.,
    sample mean, sample median)
  • We will be using statistics to estimate
    parameters (point estimates)

5
  • Suppose you draw a sample and compute the value
    of a statistic
  • Suppose you draw another sample of the same size
    and compute the value of the statistic
  • Would the 2 statistics be equal?

6
  • Use statistics to estimate parameters
  • Will the statistics be exactly equal to the
    parameter?
  • Observed value of the statistics depends on the
    sample
  • There will be variability in the values of the
    statistic over repeated sampling
  • The statistic has a distribution of its own

7
  • Probability distribution of a statistic is called
    the sampling distribution (or distribution of the
    statistic)
  • Is the distribution of values for the statistic
    based on all possible samples of the same size
    from the population?
  • Based on repeated random samples of the same size
    from the population

8
Example
  • Large population is described by the probability
    distribution
  • If a random sample of size 2 is taken, what is
    the sampling distribution for the sample mean?

9
Sampling Distribution of the Sample Mean
  • Have a random sample of size n
  • The sample mean is
  • What is it estimating?

10
Properties of the Sample Mean
  • Expected value
  • Variance
  • Standard Deviation

11
Properties of the Sample Mean
  • Observations

12
Sampling from a Normal Distribution
  • Suppose have a sample of size n from a N(m,s2)
    distribution
  • What is distribution of the sample mean?

13
Example
  • Distribution of moisture content per pound of a
    dehydrated protein concentrate is normally
    distributed with mean 3.5 and standard deviation
    of 0.6.
  • Random sample of 36 specimens of this concentrate
    is taken
  • Distribution of sample mean?
  • What is probability that the sample mean is less
    than 3.5?

14
Central Limit Theorem
  • In a random sample (iid sample) from any
    population with mean, m, and standard
    deviation, s, when n is large, the distribution
    of the sample mean is approximately normal.
  • That is,

15
Central Limit Theorem
  • For the sample total,

16
Implications
  • So, for random samples, if have enough data,
    sample mean is approximately normally
    distributed...even if data not normally
    distributed
  • If have enough data, can use the normal
    distribution to make probability statements about

17
Example
  • A busy intersection has an average of 2.2
    accidents per week with a standard deviation of
    1.4 accidents
  • Suppose you monitor this intersection of a given
    year, recording the number of accidents per week.
  • Data takes on integers (0,1,2,...) thus
    distribution of number of accidents not normal.
  • What is the distribution of the mean number of
    accidents per week based on a sample of 52 weeks
    of data

18
Example
  • What is the approximate probability that is
    less than 2
  • What is the approximate probability that there
    are less than 100 accidents in a given year?
Write a Comment
User Comments (0)
About PowerShow.com