Please help me (earning ratio-boxplot)

  • Thread starter LAYAN-2008
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In summary, the conversation discusses the use of decile box-plots to compare the earnings of male and female restaurant staff in 1999. The data provided includes gross weekly and hourly earnings for both genders, and the question asks for a justification on which type of data is most suitable for comparison. The conversation also includes a request to calculate earnings ratios for different quartiles and deciles, and to comment on the relative earnings of male and female staff. Additionally, it asks for an explanation on how the data would differ if overtime earnings were excluded, and for the creation of decile box-plots to represent the earnings data.
  • #1
LAYAN-2008
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The main aim of this question is to assess the ability to perform data analysis on two batches of data and use decile box-plots to compare and report on the differences between the two sets.

The weekly earnings (including overtime) and the hourly earnings (including overtime) of male
and female restaurant staff who are working full time are given in the table below,


Gross weekly and hourly earnings of male and female restaurant staff in 1999




Gross weekly earnings Gross hourly earnings
(£) (Pence)
Women Men Women Men
Highest decile 235 275 556 641
Upper quartile 192 230 477 513
Median 163 183 402 434
Lower quartile 138 151 363 389
Lowest deciles 122 128 349 360





(a) Which of these two types of data would you use to compare the earnings of male and female restaurant staff? Give a brief justification for your choice. [3]





(b) Calculate the earnings ratios for the restaurant staff at the median, the upper and lower quartiles, and the highest and lowest deciles. Comment on what these figures tell you about the relative earnings of male and female restaurant
staff in 1999. [4]






(c) If data were available on gross earnings (excluding overtime) for male and female
restaurant staff, would you expect the earnings ratios calculated using such data to be
greater or smaller than those you calculated in (b)? Explain your answer briefly. [2 ]







(d) Draw clear and accurate decile box-plots (as described in Unit 3) to represent the earnings
data for male and female restaurant staff. What do the box- plots tell you about the
relative earnings of male and female restaurant staff in 1999 ? [3]
 
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  • #2
You need to show some work first.
 
  • #3




a) To compare the earnings of male and female restaurant staff, it would be more appropriate to use the gross hourly earnings data. This is because it takes into account the number of hours worked and provides a more accurate representation of their earnings. Using the gross weekly earnings data may not provide an accurate comparison as some employees may work more or less hours than others, thus affecting their weekly earnings.

b) The earnings ratios for the median, upper and lower quartiles, and highest and lowest deciles can be calculated by dividing the female earnings by the male earnings.

Median: 402 / 434 = 0.93
Upper quartile: 477 / 513 = 0.93
Lower quartile: 363 / 389 = 0.93
Highest decile: 349 / 360 = 0.97
Lowest decile: 122 / 128 = 0.95

These figures suggest that, on average, female restaurant staff earned around 93% of what male restaurant staff earned. However, this gap becomes smaller at the highest decile, where female staff earned 97% of what male staff earned. This could indicate that there were a few highly-paid female employees in this category.

c) If data were available on gross earnings (excluding overtime), the earnings ratios would likely be smaller than those calculated in (b). This is because excluding overtime would result in a lower overall earnings figure for both male and female employees, thus reducing the gap between their earnings.

d) The decile box-plots for male and female restaurant staff show that the median, upper and lower quartiles, and highest and lowest deciles are all slightly lower for female employees. This is consistent with the earnings ratios calculated in (b), suggesting that male employees earned slightly more than female employees on average. The box-plots also show that the range of earnings for male employees is larger, with a wider interquartile range and larger outliers, indicating a greater variability in their earnings compared to female employees.
 

1. What is a boxplot and how is it used to determine earning ratio?

A boxplot is a graphical representation of numerical data that displays the median, upper and lower quartiles, and the minimum and maximum values. It is used to determine the distribution and spread of data, including the earning ratio, by visually displaying the different quartiles and outliers.

2. How do you interpret the different components of a boxplot?

The median, represented by the line in the middle of the box, is the value that divides the data into two equal halves. The lower quartile, represented by the lower end of the box, is the value below which 25% of the data falls. Similarly, the upper quartile, represented by the upper end of the box, is the value above which 75% of the data falls. The minimum and maximum values, represented by the whiskers, show the range of the data. Any points beyond the whiskers are considered outliers.

3. How can a boxplot help in comparing earning ratios between different groups or categories?

A boxplot allows for a quick and easy visual comparison of the earning ratios between different groups or categories. The length and position of the box and whiskers can be compared to determine if there are significant differences in the data. Additionally, if there are overlapping boxes, it can indicate that the earning ratios are not significantly different.

4. What are some limitations of using a boxplot to analyze earning ratios?

One limitation of using a boxplot is that it only displays summary statistics of the data and does not show the actual data points. This means that important details and patterns within the data may be missed. Additionally, a boxplot may not be suitable for datasets with a large number of outliers, as it can skew the interpretation of the data.

5. How can a boxplot be used in conjunction with other statistical measures to analyze earning ratios?

A boxplot can be used in conjunction with measures such as mean, standard deviation, and correlation to provide a more comprehensive analysis of earning ratios. These measures can provide more detailed information about the data, while the boxplot can provide a visual representation of the distribution and spread of the data. Together, they can give a better understanding of the earning ratios and any potential relationships between variables.

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