Methods The majority of the info that we found was form the website of The U. S. Department of Commerce Bureau of Economic Analysis (web).
Tables A-1 thru A-5 give the per capita income from 1995 until 1999, respectively. Procedures The data in Tables A-1 thru A-5 were reorganized to form an RCBD structure as shown in Table A-6. The RCBD in Table A-6 contains four rows and five columns.
The rows a sample of four states: Alabama Alaska Arizona Arkansas They represent the primary state factor. The columns are four years that represent the secondary year factor. The RCBD was chosen as the design in the investigation because it allows us to account for and remove the influence of the blocks that affect comparisons among the pf levels of the primary factor. To analyze the RCBD, the correct steps must be executed (Kvanli) The first step is to write a null hypothesis and an alternate hypothesis for each of the primary factor and the block factor To determine whether or not there is significant difference in the per capita income among the four states, we test the hypothesis. Null hypothesis Ho: There is no difference per capita income among states Alternate hypothesis Ha: There is a significant difference in per capita income among the years To determine whether or not there is a difference in per capita income years, we test the hypothesis Null hypothesis: Ho: There is no difference in per capita income among years.
The Essay on Research hypotheses and questions
It is hypothesized that first grade girls will show better reading comprehension than first grade boys. In Example 1, the author is predicting that he or she will find higher comprehension among girls than boys. To test it, a nonexperimental study would be appropriate because nothing in the hypothesis suggests that treatments will be given. A simple research hypothesis predicts a relationship ...
Alternate hypothesis: Ha: There is difference in per capita income years The second step requires calculations of the primary totals (), and block totals ().
We then need to calculate the grand total The third step requires the calculations of the sum of squares (SS): SS (total), SS (factor) SS (blocks), and SS (error).
SS (total) measures the amount o SS (total) = SS (factor) measures the variation due to differences among the among the levels of the primary factor: This equation is: SS (blocks) measures the variation amount due to block differences. This can be computed by the below equation: SS (error) measures the variation amount due to all sources not accounted for. This can be found by using the equation: SS (error) = SS (total) – SS (factor) – SS (blocks) The fourth step in the analysis requires the calculating the following mean squares (MS): MS (factor), SS (blocks), and MS (error) according to the following formulas: Step five requires calculating an F-ratio statistic for the F (factor) and another F-ratio statistic for the F (block).
The formulas are: When the null hypothesis is true, F (factor) has an F-distribution with (k-1, (b-1) (k-1) ) degrees of freedom.
When the null hypothesis is true, F (blocks) has an F-distribution with (b-1, (b-1) (k-1) ) degrees of freedom Step six determines the rules for rejection or non-rejection of the null hypothesis for states and years. There are two approaches to choose from. 1 st Approach By using a level of significance one can make a determination of rejection regions by reading the statistical tables (F-distribution tables) to get the critical value. The critical values can be found in Table A. 7 in the Kvanli statistics book.
A. 005 significance level was used for testing procedures in the paper. 2 nd Approach In this approach there is no need to refer to statistical tables. All that needs to be done is to read the p-value on the Two-way ANOVA test on Microsoft Excel. We must reject the null hypothesis based on how small the p-value is. This is called the P-Value rule of thumb.
The Term Paper on Anova
Objectives The one-way analysis of variance (ANOVA) is used to determine whether there are any significant differences between the means of three or more independent (unrelated) groups. This guide will provide a brief introduction to the one-way ANOVA including the assumptions of the test and when you should use interpret the output. This guide will then go through the procedure for running this ...
(Kvanli) P-Value rule The null hypothesis must be rejected if the P-value is less than. 05. The test fails to reject if the p-value is greater than. 5 it is inconclusive. Calculations The required calculations were done with a Two-Factor ANOVA without replication analysis on Microsoft Excel. This test calculated the Sum of Squares, the Mean squares, and the F-ratio.
This is seen in the two-way ANOVA table. (Table 1) Table 1 Anova table for the Randomized Complete Block Design Anova: Two-Factor Without Replication SUMMARY Count Sum Average Variance Row 1 5 93660 18732 1195972 Row 2 5 119119 23823. 8 845923. 2 Row 3 5 99507 19901. 4 2024195 Row 4 5 89860 17972 1409053 Column 1 4 75073 18768. 25 7980981 Column 2 4 77123 19280.
75 6627569 Column 3 4 80042 20010. 5 6944182 Column 4 4 83463 20865. 75 6478120 Column 5 4 86445 21611. 25 6015248 ANOVA Source of Variation SS Df MS F P-value F crit Rows 1. 02 E+08 3 33842872 666.
1089 1. 32 E-13 3. 4903 Columns 21290888 4 5322722 104. 7639 3. 18 E-09 3. 25916 Error 609681.
8 12 50806. 82 Total 1. 23 E+08 19 Appendix Table A-1 Table A-2 Table A-3 Table A-4 Table A-5 Table A-6 Factor Levels Block 1 2… k Total 1 x x… x… B x x…
x Total… 327.