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CHAPTER 3: INTRODUCTORY LINEAR REGRESSION
Chapter Outline3.1 Simple Linear Regression•Scatter Plot/Diagram•Simple Linear Regression Model3.2 Curve Fitting3.3 Inferences About Estimated Parameters3.4 Adequacy of the model coefficient of determination3.5 Pearson Product Moment Correlation Coefficient3.6 Test for Linearity of Regression3.7 ANOVA Approach Testing for Linearity of Regression
Regression – is a statistical procedure for establishing the r/ship between 2 or more variables.
This is done by fitting a linear equation to the observed data.
The regression line is used by the researcher to see the trend and make prediction of values for the data.
There are 2 types of relationship:Simple ( 2 variables)Multiple (more than 2 variables)
INTRODUCTION TO LINEAR REGRESSION
INTRODUCTION TO LINEAR REGRESSION
Many problems in science and engineering involve exploring the relationship between two or more variables.
Two statistical techniques:(1) Regression Analysis (2) Computing the Correlation Coefficient (r). Linear regression - study on the linear
relationship between two or more variables. This is done by fitting a linear equation to the
observed data. The linear equation is then used to predict
values for the data.
In simple linear regression only two variables are involved:
i. X is the independent variable.
ii. Y is dependent variable. The correlation coefficient (r ) tells us how
strongly two variables are related.
Example 3.1:
1) A nutritionist studying weight loss programs might wants to find out if reducing intake of carbohydrate can help a person reduce weight.a) X is the carbohydrate intake (independent variable).b) Y is the weight (dependent variable).
2) An entrepreneur might want to know whether increasing the cost of packaging his new product will have an effect on the sales volume.a) X is costb) Y is sales volume
5
3.1 SIMPLE LINEAR REGRESSION MODEL
Linear regression model is a model that expresses the linear relationship between two variables.
The simple linear regression model is written as:
where ;
Random error is the difference of data point from the deterministic value.
0 1Y X
0
1
= intercept of the line with the Y-axis
slope of the line
= random error
SCATTER PLOT Scatter plots show the relationship between
two variables by displaying data points on a two-dimensional graph.
The variable that might be considered as an explanatory variable is plotted on the x-axis, and the response variable is plotted on the y- axis.
Scatter plots are especially useful when there are a large number of data points.
3.2 CURVE FITTING (SCATTER PLOT)
They provide the following information about the relationship between two variables:
(1) Strength
(2) Shape - linear, curved, etc.
(3) Direction - positive or negative
(4) Presence of outliers
EXAMPLES:
A linear regression can be develop by freehand plot of the data.
Example 3.2:
The given table contains values for 2 variables, X and Y. Plot the given data and make a freehand estimated regression line.
PLOTTING LINEAR REGRESSION MODEL
10
X -3 -2 -1 0 1 2 3
Y 1 2 3 5 8 11 12
11
The Least Square method is the method most commonly used for estimating the regression coefficients
The straight line fitted to the data set is the line:
where is the estimated value of y for a given value of X.
3.3 INFERENCES ABOUT ESTIMATED PARAMETERS
Y
0 1 and
0 1ˆ ˆY X
LEAST SQUARES METHOD
i) y-Intercept for the Estimated Regression Equation,
0 1ˆ ˆy x
and are the mean of and respectivelyx y x y
0
ii) Slope for the Estimated Regression Equation,
1 1
1
2
12
1
2
12
1
n n
i ini i
xy i ii
n
ini
yy ii
n
ini
xx ii
x y
S x yn
y
S yn
x
S xn
1xy
xx
S
S
Before, x 65 63 76 46 68 72 68 57 36 96
After, y 68 66 86 48 65 66 71 57 42 87
a) Develop a linear regression model with “before” as the independent variable and “after” as the dependent variable.
b) Predict the score a student would obtain “after” if he scored 60 marks “before”.
The data below represent scores obtained by ten primary school students before and after they were taken on a tour to the museum (which is supposed to increase their interest in history)
EXAMPLE 3.3: STUDENTS SCORE IN HISTORY
2
2
2
10 44435
647 44279 64.7
656 44884 y = 65.6
647 65644435 1991.8
10
64744279 2418.1
10
448.
xy
xx
yy
Solution
n xy
x x x
y y
S
S
S
265684 1850.4
10
1
0 1
1991.8ˆa) 0.82372418.1
ˆ ˆ 65.6 0.8237 64.7 12.3063
12.3063 0.8237
xy
xx
S
S
y x
Y X
b) X 60
12.3063 0.8237 60 61.7283Y
INCOME, x FOOD EXPENDITURE, y
55 14
83 24
38 13
61 16
33 9
49 15
67 17
a) Fit a linear regression model with income as the independent variable and food expenditure as the dependent variable.
b) Predict the food expenditure if income is 50.
EXERCISE 3.1:
EXERCISE 3.2:
The coefficient of determination is a measure of the variation of the dependent variable (Y) that is explained by the regression line and the independent variable (X).
The symbol for the coefficient of determination is or .
If =0.90, then =0.81. It means that 81% of the variation in the dependent variable (Y) is accounted for by the variations in the independent variable (X).
3.4 ADEQUACY OF THE MODEL COEFFICIENT OF DETERMINATION( )
2Rr 2r
2R
20
2r
The rest of the variation, 0.19 or 19%, is unexplained and called the coefficient of non determination.
Formula for the coefficient of non determination is 21.00 r
Relationship Among SST, SSR, SSE
where: SST = total sum of squares SSR = sum of squares due to regression SSE = sum of squares due to error
SST = SSR + SST = SSR + SSE SSE
2( )iy y 2ˆ( )iy y 2ˆ( )i iy y
The coefficient of determination is:
where:where:
SSR = sum of squares due to regressionSSR = sum of squares due to regression
SST = total sum of squaresSST = total sum of squares
2
2 xy
xx yy
SSSRr
SST S S
22
3.5 PEARSON PRODUCT MOMENT CORRELATION COEFFICIENT (r)
Correlation measures the strength of a linear relationship between the two variables.
Also known as Pearson’s product moment coefficient of correlation.
The symbol for the sample coefficient of correlation
is (r) Formula :
or
.xy
xx yy
Sr
S S
21(sign of ) r b r 21(sign of ) r b r
Properties of (r):
Values of r close to 1 implies there is a strong
positive linear relationship between x and y. Values of r close to -1 implies there is a strong
negative linear relationship between x and y. Values of r close to 0 implies little or no linear
relationship between x and y.
1 1r
ASSUMPTIONS ABOUT THE ERROR TERM E
1. The error is a random variable with mean of zero.1. The error is a random variable with mean of zero.
2. The variance of , denoted by 2, is the same for all values of the independent variable.2. The variance of , denoted by 2, is the same for all values of the independent variable.
3. The values of are independent.3. The values of are independent.
4. The error is a normally distributed random variable.4. The error is a normally distributed random variable.
EXAMPLE 3.4: REFER PREVIOUS EXAMPLE 1, STUDENTS SCORE IN HISTORY
Calculate the value of r and interpret its meaning.
SOLUTION:
.
1991.8
2418.1 1850.4
0.9416
xy
xx yy
Sr
S S
Thus, there is a strong positive linear relationship between score obtain before (x) and after (y).
EXERCISE 3.3:
Refer to previous Exercise 3.1 and Exercise 3.2, calculate coefficient correlation and interpret the results.
To test the existence of a linear relationship between two variables x and y, we proceed with testing the hypothesis.
Two test are commonly used:
(i)
(ii)
3.6 TEST FOR LINEARITY OF REGRESSION
tt -Test -Test
FF -Test -Test
1. Determine the hypotheses.1. Determine the hypotheses.
2. Compute Critical Value/ level of significance.2. Compute Critical Value/ level of significance.
3. Compute the test statistic.3. Compute the test statistic.
( no linear r/ship)(exist linear r/ship)
(i) t-Test
valueportn
2,
2
0:0:
11
10
HH
xx
xyyy
Sn
SSVar
Vart
1
2
ˆ)ˆ(
)ˆ(
ˆ
11
1
1
2,2
2,2
or
nn
tttt
4. Determine the Rejection Rule. 4. Determine the Rejection Rule.
Reject H0 if :
There is a significant relationship between variable X and Y.
5.Conclusion.5.Conclusion.
p-value <
EXAMPLE 3.5: REFER PREVIOUS EXAMPLE 1, STUDENTS SCORE IN HISTORY
Test to determine if their scores before and after the trip is related. Use a=0.05
SOLUTION:1)
2)
( no linear r/ship)(exist linear r/ship)0:
0:11
10
HH
306.205.0
8,2
05.0
t
3)
4) Rejection Rule:
5) Conclusion: Thus, we reject H0. The score before (x) is linear relationship to the score after (y) the trip.
1
1( )
0.82377.926
0.0108
testtVar
11
1( )
2
1850.4 (0.8237)(1991.8) 18 2418.1
0.0108
yy xy
xx
S SVar
n S
0.025,8
7.926 2.306testt t
EXERCISE 3.4:
EXERCISE 3.5:
1. Determine the hypotheses.1. Determine the hypotheses.
3. Compute the test statistic.3. Compute the test statistic.
F = MSR/MSE
4. Determine the Rejection Rule. 4. Determine the Rejection Rule.
Reject H0 if :p-value < aF test >
(ii) F-Test
( no linear r/ship)(exist linear r/ship)0:
0:11
10
HH
2. Specify the level of significance.2. Specify the level of significance.
2,1, nF
2,1, nF valuepor
There is a significant relationship between variable X and Y.
5.Conclusion.5.Conclusion.
3.7 ANOVA APPROACH FOR TESTING LINEARITY OF REGRESSION
The analysis of variance (ANOVA) method is an approach to test the significance of the regression.
We can arrange the test procedure using this approach in an ANOVA table as shown below;
EXAMPLE 3.6: The manufacturer of Cardio Glide exercise equipment
wants to study the relationship between the number of months since the glide was purchased and the length of time (hours) the equipment was used last week.
At , test whether there is a linear relationship between the variables.
01.0
Solution:
1) Hypothesis:
1) F-distribution table:
2) Test Statistic:
F = MSR/MSE = 17.303
or using p-value approach:
significant value =0.003
4) Rejection region:
Since F statistic > F table (17.303>11.2586 ), we reject H0 or since p-value (0.003 0.01 ) we reject H0
5) Thus, there is a linear relationship between the variables (month X and hours Y).
0 1
1 1
: 0
: 0
H
H
0.01,1,8 11.26F
EXERCISE 3.6:
An agricultural scientist planted alfalfa on several plots of land, identical except for the soil pH. Following are the dry matter yields (in pounds per acre) for each plot.
pH Yield
4.6 1056
4.8 1833
5.2 1629
5.4 1852
5.6 1783
5.8 2647
6.0 2131
a) Construct a scatter plot of yield (y) versus pH (x). Verify that a linear model is appropriate.
b) Compute the estimated regression line for predicting Yield from pH.
c) If the pH is increased by 0.1, by how much would you predict the yield to increase or decrease?
d) For what pH would you predict a yield of 1500 pounds per acre?
e) Calculate coefficient correlation, and interpret the results.
Answer : ˆ) 2090.9 737.1
ˆ) 73.71
) 4.872
b y x
c y
d pH
EXERCISE 3.7A regression analysis relating the current market value in dollars to the size in square feet of homes in Greeny County, Tennessee, follows. The portion of a regression software output as below:
a)Determine how many states in the sample.
b)Determine the regression equation.
c)Can you conclude that there a linear relationship between the variables at ?
Predictor Coef SE Coef T PConstant 12.726 8.115 1.57 0.134Size 0.00011386 0.00002896 3.93 0.001
Analysis of VarianceSource DF SS MS F PRegression 1 10354 10354 15.46 0.001Error 18 12054 670Total 19 22408
0.05