Introduction: My sales team at a brand-new venue is looking to sell personal seat licenses to consumers and to do that we are searching for a demographic who will buy seat licenses that will give our team the most profit. Our objective is to find which demographics are most important and then figuring out a strategy to target those individuals as well as how to make the most profit off them which means we will need to know how many tickets to sell these people as well as how much to sell the tickets for.
Methods: The first step in identifying the target group was to get
rid of useless data. Any individuals who did not fill out all demographics were
considered not useful. Considering that there were thousands of data points,
results could not be skewed because the data was still large enough to make an
accurate conclusion. Now that the data had only useful data points, I could now
run descriptive statistic models in order to get a general idea about what the
data will be when it comes to demographics. The next step was to run a
correlation model to help identity which demographics influenced the highest
sales. I overlaid a heat map to easier identify which demographic correlated
most with ticket sale. The highest was personal seat license but I dismissed it
because they are both dependent variables. After running the correlation model
a regression model was run to see how much change total sales would have on
other key statistical data previously identified with the correlation model.
Those would be home value and totals sales as well as price per seat license.
This allowed me to see if there was a significant change between a change in
home value would there be a significant change in price per seat license and
total sales. Once that was finished the final step was to create pivot tables
to understand which groups within the key performance indicators were
contributing to the most sales. Out of those groups I also needed to know how
much people were buying tickets to find the optimal price and how many they were
buying at that price.










Results: Once all the different models and pivot table analysis
was completed, it was revealed that home value was the most closely related to
total sale and price per seat license (21.95% and 24.25%) and then it was
followed by income (11.30% and 10.72%). Once that was identified the regression
model was run which identified that there was a positive correlation between
total sales and price per seat license with home value as well as income. The R
squared shows that as income and home value changes it will contribute to the
change in total sales by 4.8% and the change in price per seat license by 5.9%.
This means that as individuals’ income and home value go up so does their total
sale numbers and their price per seat license value, but only slightly. This
allows me to speculate that as people gain more money, they buy more expensive
tickets. This would be later confirmed by the pivot tables. From the pivot
tables, I found that 40% of total sales are to those who make between $141,000
to over $500,000 a year. While 20.68% of sales were to people with homes over
$1 million. This shows that income is the most important determinant to
increase sales. Most of that bracket of income were males between 42-65 which
accounted for 24.42% and 40.70% of that income bracket owned homes over
$1million. From the 42-65 age group I found that 50.8% of those people were
married. Once knowing who bought the most tickets, I wanted to know at what
price people were buying tickets at and I found that the most sold tickets were
at $6,000 accounting for 13.99% of tickets. More interestingly about the
statistic is that out of the 13.99% the pink division accounted for 12.79% of
sales. The next thing to find out was how many tickets people were buying and I
found that 55.09% of all ticket sales were bought as a pack of two. This
confirms that as people increase income, they are not buying more tickets they
are just buying more expensive tickets. In the income bracket of $141,000 to
over $500,000 the most tickets were sold at a price per seat license of $3000
covering 9.45% out of those tickets 5.05% of those tickets bought were as packs
of 2 that groups ticket sales followed by $15,000 at 6.29% with 4.43% of that
being bought as packs of two. This can lead us to believe that there is no
increase in the amount of tickets bought as income goes up rather that there is
only an increase in the value of tickets that are being bought.
Discussion: In conclusion, most of the ticket sales efforts should go
towards males between the ages of 42-65 that make between $141,000-$500,000 who
own homes over $1 million. This would target male-dominated high paying
industries such as software developers, financial analysts, aerospace
engineers, and architects that are senior managers or above in high luxury
communities. For these people we would be looking to target them to buy for the
pink division since it is in higher demand then we can charge more. For these
tickets we can either make deals in packs of two to entice more buying or
target married couples with no kids since most people in that bracket buy
tickets in two and are married. With these strategies, we can increase profits
that provide value to these high-income males because they are the largest
contributor to sales currently and in the future, I predict they will continue
to do so.
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