Statistics excel assignment
This assignment is the week 4 tab section of the excel spreadsheet. The assignment must be completed in full showing all work and calculations labeled. The assignment is due at midnight on Saturday, April 19th at no later than 11:59pm EST. The text to the assignments is posted here with the file also uploaded.
Week 4 Confidence Intervals and Chi Square (Chs 11 – 12) Let’s look at some other factors that might influence pay.
For question 3 below, be sure to list the null and alternate hypothesis statements. Use .05 for your significance level in making your decisions.
For full credit, you need to also show the statistical outcomes – either the Excel test result or the calculations you performed.
1 One question we might have is if the distribution of graduate and undergraduate degrees independent of the grade the employee?
(Note: this is the same as asking if the degrees are distributed the same way.)
Based on the analysis of our sample data (shown below), what is your answer?
Ho: The populaton correlation between grade and degree is 0.
Ha: The population correlation between grade and degree is > 0
OBSERVED A B C D E F Total
COUNT – M or 0 7 5 3 2 5 3 25
COUNT – F or 1 8 2 2 3 7 3 25
total 15 7 5 5 12 6 50
7.5 3.5 2.5 2.5 6 3 25
By using either the Excel Chi Square functions or calculating the results directly as the text shows, do we
reject or not reject the null hypothesis? What does your conclusion mean?
2 Using our sample data, we can construct a 95% confidence interval for the population’s mean salary for each gender.
Interpret the results. How do they compare with the findings in the week 2 one sample t-test outcomes (Question 1)?
Males Mean St error Low to High
52 3.658779396 44.44827933 59.55172067 Results are mean +/-2.064*standard error
Females 38 3.622754177 30.52263538 45.47736462 2.064 is t value for 95% interval
3 Based on our sample data, can we conclude that males and females are distributed across grades in a similar pattern within the population?
4 Using our sample data, construct a 95% confidence interval for the population’s mean service difference for each gender.
Do they intersect or overlap? How do these results compare to the findings in week 2, question 2?
5 How do you interpret these results in light of our question about equal pay for equal work?