It is often convenient to present time series data in tabular form. We have two different ways to smooth data to remove the peaks and troughs and see the underlying trend. We can use a moving average or we can deseasonalise the data using the seasonal indices. Examiners often test understanding of the two processes by giving data in tabular form and asking students to calculate the missing values.
The quarterly power bills of a suburban household are recorded in the table below:
\text{Month} | \text{Time }\left(t\right) | \text{Bill } \left(\$\right) | \text{Quarterly} \\ \text{mean}\left(\$\right) | \text{Percentage} \\ \text{of quarterly} \\ \text{mean} | \text{Deseasonalised} \\ \text{data}\left(\$\right) | |
---|---|---|---|---|---|---|
2016 | \text{Jan} | 1 | 456.24 | 348.37 | 130.97\% | 341.37 |
\text{Apr} | 2 | A | 95.40\% | 347.23 | ||
\text{Jul} | 3 | 300.43 | 86.24\% | 354.12 | ||
\text{Oct} | 4 | 304.45 | 87.39\% | 354.85 | ||
2017 | \text{Jan} | 5 | 477.05 | B | 132.85\% | 356.94 |
\text{Apr} | 6 | 343.77 | 95.73\% | 359.16 | ||
\text{Jul} | 7 | 305.98 | 85.21\% | 360.66 | ||
\text{Oct} | 8 | 309.54 | 86.20\% | 360.78 | ||
2018 | \text{Jan} | 9 | 494.22 | 367.47 | 134.49\% | 369.79 |
\text{Apr} | 10 | 352.56 | C | 368.34 | ||
\text{Jul} | 11 | 310.65 | 84.54\% | 366.17 | ||
\text{Oct} | 12 | 312.43 | 85.02\% | 364.15 | ||
2019 | \text{Jan} | 13 | 510.45 | 374.56 | 136.28\% | 381.94 |
\text{Apr} | 14 | 358.76 | 95.78\% | D | ||
\text{Jul} | 15 | 312.25 | 83.37\% | 368.05 | ||
\text{Oct} | 16 | 316.76 | 84.57\% | 369.20 |
Seasonal indices are displayed in the table below:
Jan | Apr | Jul | Oct | |
---|---|---|---|---|
Seasonal index | E | 95.716\% | 84.839\% | 85.797\% |
Calculate the value of A in dollars.
Calculate the value of B in dollars.
Calculate the value of C as a percentage. Round your answer to two decimal places.
Calculate the value of D in dollars.
Calculate the value of E as a percentage.
The deseasonalised data can be used to identify the underlying trend. The trend is:
Data on the number of cartons of chocolate milk sold at the school canteen is collected every day over a 6 week time period. The seasonal indices for each day are calculated in order to deseasonalise the data.
Find the missing value in the table of seasonal indices below:
Monday | Tuesday | Wednesday | Thursday | Friday | |
---|---|---|---|---|---|
Seasonal index | 102.21\% | 97.54\% | 114.65\% | 88.98\% |
Which day is the most popular day for buying chocolate milk?
Will deseasonalised data for Wednesday be higher or lower than the original raw data for Wednesday?
The number of chocolate milk cartons sold on Thursday of Week 2 was 57. Calculate the deseasonalised score for Thursday of Week 2, rounding your answer to the nearest whole number.
We have two different ways to smooth data: we can use a moving average or we can deseasonalise the data using the seasonal indices.