Assess patterns and correlation in non-airline revenue factors collected at DEN (Denver International Airport). Using data accrued from January 2012 - June 2017, create a method for forecasting non-airline revenues. Use it to produce forecasts for the months of March through June of 2017, and compare with the real observations to check your model performance.
*On top of predicting total non-airline revenue as a comprehensive response variable, we looked at each of the dependent variables independently.
We then looked at the data as a whole to gain an idea of the different variables and observation values:
- dplyr
- data.table
- tidyr
- janitor
- reshape2
- stats
- ggplot2
For our comprehensive non-airline revenue response variable: TotalRev
we chose the following predictor variables as statistically significant and influential towards our regression model:
Month
Destination
Cannabis?
UMCSENTLag3