Inference for Regression - PowerPoint PPT Presentation

About This Presentation
Title:

Inference for Regression

Description:

Title: PowerPoint Presentation Author: Chris Headlee Last modified by: chrisheadlee Created Date: 1/1/1601 12:00:00 AM Document presentation format – PowerPoint PPT presentation

Number of Views:60
Avg rating:3.0/5.0
Slides: 22
Provided by: ChrisH110
Category:

less

Transcript and Presenter's Notes

Title: Inference for Regression


1
Lesson 15 - 1
  • Inference for Regression

2
Knowledge Objectives
  • Identify the conditions necessary to do inference
    for regression.
  • Explain what is meant by the standard error about
    the least-squares line.

3
Construction Objectives
  • Given a set of data, check that the conditions
    for doing inference for regression are present.
  • Compute a confidence interval for the slope of
    the regression line.
  • Conduct a test of the hypothesis that the slope
    of the regression line is 0 (or that the
    correlation is 0) in the population.

4
Vocabulary
  • Statistical Inference tests to see if the
    relationship is statistically significant

5
Conditions for Regression Inference
  • Repeated responses y are independent of each
    other
  • The mean response, µy, has a straight-line
    relationship with x
    µy a ßxwhere the slope ß and
    intercept a are unknown parameters
  • The standard deviation of y (call it s) is the
    same for all values of x. The value of s is
    unknown.
  • For any fixed value of x, the response variable y
    varies according to a Normal distribution

6
Sampling Distribution Concepts
  • Remember from our sampling distribution lesson
    how repeated samplings of the mean will be
    Normally distributed (n gt 30, CLT applies)

7
Checking Regression Conditions
  • Observations are independent
  • No repeated observations on the same individual
  • The true relationship is linear
  • Scatter plot the data to check this
  • Remember the transformations to make non-linear
    data linear
  • Response standard deviation is the same
    everywhere
  • Check the scatter plot to see if this is violated
  • Response varies Normally about the true
    regression line
  • To check this, we look at the residuals (since
    they must be Normally distributed as well) either
    with a box plot or normality plot
  • These procedures are robust, so slight departures
    from Normality will not affect the inference

8
Estimating the Parameters
  • We need to estimate parameters for µy a ßx
    and s
  • From the least square regression line y-hat a
    bx we get unbiased estimators a (for a) and b
    (for ß)
  • We use n 2 because we used a and b as estimators

9
Confidence Interval on ß
  • Remember our form Point Estimate Margin of
    Error
  • Since ß is the true slope, then b is the point
    estimate
  • The Margin of Error takes the form of t ? SEb

10
Confidence Intervals in Practice
  • We use rarely have to calculate this by hand
  • Output from Minitab

Parameters b (1.4929), a (91.3), s (17.50)
t 2.042 from n 2, 95 CL
CI PE MOE 1.4929 (2.042)(0.4870)
1.4929 0.9944
0.4985, 2.4873
Since 0 is not in the interval, then we might
conclude that ß ? 0
11
Inference Tests on ß
  • Since the null hypothesis can not be proved, our
    hypotheses for tests on the regression slope will
    beH0 ß 0 (no correlation between
    x and y)Ha ß ? 0 (some linear
    correlation)
  • Testing correlation makes sense only if the
    observations are a random sample.
  • This is often not the case in regression
    settings, where researchers often fix in advance
    the values of x being tested

12
Test Statistic
13
Beer vs BAC Example
  • 16 student volunteers at Ohio State drank a
    randomly assigned number of cans of beer. Thirty
    minutes later, a police officer measured their
    BAC. Here are the data
  • Enter the data into your calculator.
  • Draw a scatter plot of the data and the
    regression line
  • Conduct an inference test on the effect of beers
    on BAC

Student 1 2 3 4 5 6 7 8
Beers 5 2 9 8 3 7 3 5
BAC 0.10 0.03 0.19 0.12 0.04 0.095 0.07 0.06
Student 9 10 11 12 13 14 15 16
Beers 3 5 4 6 5 7 1 4
BAC 0.02 0.05 0.07 0.10 0.085 0.09 0.01 0.05
LinReg(a bx) L1, L2, Y1
14
Scatter plot and Regression Line
D F S O C
  • Interpret the scatter plot

15
Output from Minitab
  • Could we have used this instead of output from
    our calculator?

16
Using the TI for Inference Test on ß
  • Enter explanatory data into L1
  • Enter response data into L2
  • Stat ? Tests ? ELinRegTTest
  • Xlist L1
  • Ylist L2
  • (Test type) ß ? ? 0 lt0 gt0
  • RegEq (leave blank)
  • Test will take two screens to output the
    dataInference t-statistic, degrees of freedom
    and p-valueRegression a, b, s, r², and r

17
TI Output from page 907
  • y a bx
  • ß ? 0 and ? ? 0
  • t 3.06548
  • p .004105
  • df 36
  • a 91.26829
  • b 1.492896
  • s 17.49872
  • r2 .206999
  • r .4549725

Minitab Output
18
Interpreting Computer Output
  • In the following examples of computer output from
    commonly used statistical packages
  • Find the a and b values for the regression eqn
  • Find r and r2
  • Find SEb, t-value and p-value (if available)
  • We can use these outputs to finish an inference
    test on the association of our explanatory and
    response variables.

19
Sample from Excel prob 15.10
20
Sample from CrunchIt prob 15.20
21
Summary and Homework
  • Summary
  • Inference Conditions Needed1) Observations
    independent2) True relationship is linear3) s
    is constant4) Responses Normally distributed
    about the line
  • Confidence Intervals on ß can be done
  • Inference testing on ß use the t statistic
    b/SEb
  • Homework
  • Pg 914 918 15.18-19, 15.21-23
Write a Comment
User Comments (0)
About PowerShow.com