Presentation is loading. Please wait.

Presentation is loading. Please wait.

2010, ECON 77101 Hypothesis Testing 1: Single Coefficient Review of hypothesis testing Testing single coefficient Interval estimation Objectives.

Similar presentations


Presentation on theme: "2010, ECON 77101 Hypothesis Testing 1: Single Coefficient Review of hypothesis testing Testing single coefficient Interval estimation Objectives."— Presentation transcript:

1

2 2010, ECON 77101 Hypothesis Testing 1: Single Coefficient Review of hypothesis testing Testing single coefficient Interval estimation Objectives

3 2010, ECON 77102 s.e. (9.3421) (0.8837) R 2 = 0.7431, N = 20, SER = 8.5018 Explaining weight by height (Table 1.1) Can X really explain Y? When X=0, what is Y? If we suspect that the coefficient of X is 5, can we find support from the data?

4 2010, ECON 77103 1.Hypothesis testing: Revision The principle of hypothesis testing The value of the parameter to be tested is assumed in H 0. The estimate of this parameter is compared with that assumed value. If the estimate is far from the assumed value, then H 0 is rejected. Otherwise, H 0 is not rejected.

5 2010, ECON 77104 Procedures of Hypothesis Testing 1. Determine null and alternative hypotheses. 2. Specify the test statistic and its distribution as if the null hypothesis were true. 3. Select  and determine the rejection region. 4. Calculate the sample value of test statistic. 5. State your conclusions. 1. Revision

6 2010, ECON 77105 2.Testing a Regression Coefficient Population Y i =  0 +  1 X 1i +  2 X 2i + … +  K X Ki +  i Sample: 3 types of tests (k = 0, 1, 2, , K): H o :  k = c; H A :  k  c H o :  k  c; H A :  k > c H o :  k  c; H A :  k < c c is any number meaningful in your study

7 2010, ECON 77106 Probability Distribution of Least Squares Estimators 2. Testing

8 2010, ECON 77107 Student's t - statistic t has a Student-t Distribution with N – K – 1 degrees of freedom. 2. Testing

9 2010, ECON 77108 Two-Tail t-test 1.State the null & alternative hypotheses H 0 :  k = c H A :  k  c 2. Compute the estimated t-value c  ˆ     ˆ Se t k k 3. Choose a level of significance (  ) and degrees of freedom (N – K – 1). Then find a critical t-value from the t-table (t c = t N-K-1,  /2 ). 2. Testing

10 2010, ECON 77109 Two-Tail t-test (cont.) 4. State the decision rule. Version I: If |t| > t c, then reject H 0. Version II: If t > t c or t < -t c, then reject H 0. 5. Conclusion Acceptance region 0 tctc -t c rejection region 2. Testing

11 2010, ECON 771010 Example 1: In the following regression results, test whether the estimated coefficient of X 1 and X 2 are significantly different from zero. (  = 5%) Y = 14.32 + 0.798 X 1 – 0.101 X 2 se (6.1361) (0.2535) (0.08333) R 2 = 0.2718, N = 30. Hypotheses: H 0 :  1 = 0; H A :  1  0. First test: 2. Testing

12 2010, ECON 771011 Computed t-value: Table t-value: For  = 0.05 and 30 – 2 – 1 = 27 degrees of freedom, a critical value is t 27,0.025 = 2.052. Decision rule: If |t| > 2.052, then reject H 0. Conclusion: Since |t| = 3.112 > 2.052, H o can be rejected. The estimated coefficient of X 1 is significantly different from zero. 2. Testing

13 2010, ECON 771012 One-Tail t-test Step 1: State the null & alternative hypotheses Right-tail test: Test whether  k > c. H 0 :  k  c; H A :  k > c. Left-tail test: Test whether  k < c. H 0 :  k  c; H A :  k < c. 2. Compute the estimated t-value (same as before) 2. Testing

14 2010, ECON 771013 3. Choose a level of significance (  ) and degrees of freedom (N – K – 1). Then find a critical t-value from the t-table (tc = t N-K-1,  ). 4. State the decision rule. Right-tail test: Reject H 0 if t > t c. Left-tail test: Reject H 0 if t < -t c. One-Tail t-test (cont.) 2. Testing

15 2010, ECON 771014 0 tctc < t Right-tail 0 -t c t < left-tail 2. Testing One-Tail t-test (cont.) 5. Conclusion

16 2010, ECON 771015 Example 3: Right-tail test: Test whether  1 is greater than 0.35 at 5% level of significance. 2. Testing Dependent Variable: Y Method: Least Squares Sample: 1 30 Included observations: 30 CoefficientStd. Errort-StatisticProb. C 16.427825.936234 2.7673810.0099 X 0.71770.246886 2.9070070.0071 R-squared 0.231839 Mean dependent var 32.6 Adjusted R-squared 0.204405 S.D. dependent var 12.71871 S.E. of regression 11.3446 Akaike info criterion7.759701 Sum squared resid 3603.597 Schwarz criterion7.853114 Log likelihood-114.3955 Hannan-Quinn criter.7.789585 F-statistic8.450689 Durbin-Watson stat1.338091 Prob(F-statistic)0.007061

17 2010, ECON 771016 Example 4: Left-tail test: Test whether  1 in Example 3 is smaller than 1.2. (  = 0.05) 2. Testing

18 2010, ECON 771017 A Special case H o :  k = 0 H A :  k  0 Statistic 2. Testing It is the lowest level of significance at which we could reject the H o that a parameter is zero. The p-values Reported by Regression Software

19 2010, ECON 771018 The t-statistics and P-values Dependent Variable: Y Method: Least Squares Sample: 1 30 Included observations: 30 CoefficientStd. Errort-StatisticProb. C 16.427825.936234 2.7673810.0099 X 0.71770.246886 2.9070070.0071 R-squared 0.231839 Mean dependent var 32.6 Adjusted R-squared 0.204405 S.D. dependent var 12.71871 S.E. of regression 11.3446 Akaike info criterion7.759701 Sum squared resid 3603.597 Schwarz criterion7.853114 Log likelihood-114.3955 Hannan-Quinn criter.7.789585 F-statistic8.450689 Durbin-Watson stat1.338091 Prob(F-statistic)0.007061 2. Testing

20 2010, ECON 771019 The p-value of  1 -hat for a two-sided test t 0 f(t) -2.91 2.91 p/2 = 0.00355 red area = p-value = 0.0071 p/2 = 0.00355 2.048 -2.048 critical values 2. Testing

21 2010, ECON 771020 3. Confidence Intervals for Regression Coefficients Y i =  0 +  1 X i + u i (i = 1,  n) The OLS estimators for  0 and  1 are point estimators.  The OLS estimates are likely to be different from the theoretical values  We have no idea of how close the OLS estimates to the theoretical values

22 2010, ECON 771021 Interval estimation: We know the chance of including the population parameter (  k )in the intervals constructed from repeated samples. 3. Confidence Interval

23 2010, ECON 771022 Confidence coefficient : 1 -  Level of significance :  Interval estimate : (  k * - ,  k * +  ) Population parameter:  k Estimator of  k : Estimate of  k :  k * Confidence limits 3. Confidence Interval

24 2010, ECON 771023 Constructing Confidence Interval for  k Actual estimated  k could be fallen into these regions   ˆ f k  ˆ k    ˆ E k k 3. Confidence Interval

25 2010, ECON 771024   ˆ f k  ˆ k    ˆ E k k a b () )( interval ainterval b Constructing Confidence Interval for  k 3. Confidence Interval

26 2010, ECON 771025 () tata )( tbtb interval t a interval t b f(t)       ˆ Se ˆ t k k k 0 Constructing Confidence Interval for  k 3. Confidence Interval

27 2010, ECON 771026 Probability statements P(-t c < t < t c ) = 1   P( t t c ) =  3. Confidence Interval

28 2010, ECON 771027 A 95% confidence interval means that, using the interval estimator and drawing samples from the population, 95% of the interval estimates would include the population value . The probability that a particular interval estimate contains this population value is either 0 or 1. 3. Confidence Interval The (1-  )  100% CI for  k is

29 2010, ECON 771028 Example 5 : Regressing WEIGHT on HEIGHT, 2005 3. Confidence Interval

30 2010, ECON 771029 95% confidence limits for  1 : 95% confidence interval for  0 : 3. Confidence Interval The 95% confidence interval for  1 is (0.3765, 0.7811).

31 2010, ECON 771030 4. Applied Examples Example 6 : Restaurant location (Section 3.2) Suppose you have been hired to determine a location for the next Woody’s. Woody’s is a moderately priced, 24-hour, family restaurant chain. Two choices are: Location A: NN = 4.4, PP = 104, II = 20.6 Location B: NN = 2, PP = 50, II = 20

32 2010, ECON 771031 YY i =  0 +  N N i +  P PP i +  I II i +  i. -ve +ve ? YY: Number of customers served in thousand N: Number of direct market competitors PP: Population in thousand within a 3-mile radius II: Average household income in thousand Example 6 : Restaurant location (Cont’d) 4. Examples

33 2010, ECON 771032 Woody’s: Null and Alternative Hypotheses 1. H o :  N  0; H A :  N < 0 2. H o :  P  0; H A :  P > 0 3. H o :  I = 0; H A :  I  0 YY = 102.19 *** – 9.07 *** N + 0.35 *** PP + 1.29 ** II se (2.0527) (0.07268) (0.5433) R 2 = 0.618, R 2 = 0.579, N = 33. ^ _ 4. Examples

34 2010, ECON 771033 If  i is normally distributed, then hat is normally distributed with mean  k and variance var( ). Z = has standard normal distribution. Var( ) is unobservable. is used instead and is denoted by se. t = has t distribution with N – K – 1 degrees of freedom. 4. Examples

35 2010, ECON 771034 Woody’s two-sided test Hypotheses: H o :  I = 0; H A :  I  0 Statistics: Decision rule: Let  = 0.05. From the table the critical values are t c =  t 29,0.025 =  2.045. Reject H o if |t| > 2.045. Computed t-value: Decision: Since t = 2.37 > 2.045, reject H o. Thus  I hat is significantly different from zero.

36 2010, ECON 771035 Woody’s one-sided tests Hypotheses: H o :  N  0; H A :  N < 0 Decision rule: Let  = 0.05. From the table the critical value is t c = -t 29,0.05 = - 1.699. Reject H o if t < - 1.699. Computed t-value: Decision: Since t = - 4.42 < -1.699, reject H o. Thus  N hat is significantly smaller than zero. 4. Examples

37 2010, ECON 771036 Example 7: Sales of Hamburger TR i =  0 +  p P i +  A A i +  i. ? + Data: Weekly observations for a hypothetical hamburger chain TR : Weekly revenue in $1,000 P : Price in $ A : Advertising expenditure in $1,000 4. Examples

38 2010, ECON 771037 TR = 113.83*** – 10.26***P + 2.68***A se (1.6007) (0.1189) R 2 = 0.8739, N = 78. ^ Regression results: a.Is the demand significantly elastic or inelastic in price? b.Is the increase in total revenue stimulated by more advertisements significantly greater than the corresponding increased cost of advertising? Let  = 0.01. Answer the following two questions statistically.


Download ppt "2010, ECON 77101 Hypothesis Testing 1: Single Coefficient Review of hypothesis testing Testing single coefficient Interval estimation Objectives."

Similar presentations


Ads by Google