Skip to content

This a supervised machine learning project to predict customer satisfaction based on factors like Gender, Customer Type, Age, Type of travel, Class, Flight distance, Cleanliness, Departure and Arrival Delay, etc

Notifications You must be signed in to change notification settings

SilasPenda/Airline-Customer-Satisfaction

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

6 Commits
 
 
 
 
 
 

Repository files navigation

Airline-Customer-Satisfaction

This a supervised machine learning project to predict customer satisfaction based on factors like Gender, Customer Type, Age, Type of travel, Class, Flight distance, Cleanliness, Departure and Arrival Delay, etc

Acheivements

  • Through exploratory analysis i was able to gain the following insights on the customers:
    • 81.7% of customers are loyal while 18.3% are not
    • 54.4% of customers travelling for business are satisfied with the airline's services while 41.6% are not
    • 53.4% of customers taking personal trips are satisfied with the airline's services while 46.6% are not
    • On an average the higher the depature and arrival delay time the more dissatisfied the customers are with the airline's services
    • 62.0% of satisfied customers traveled in Business Class, 32.3% traveled in Economic Class while 5.7% traveled in Economic Plus Class
    • 70.9% of customers that traveled in Business Class are satisfied with the airline's services while 29.1% are not
    • 60.6% of customers that traveled in Economic Class are satisfied with the airline's services while 39.4% are not
    • 57.3% of customers that traveled in Economic Plus Class are satisfied with the airline's services while 42.7% are not
    • 60.4% of satisfied customers were Females
    • 65.1% of customers Female customers are satisfied with the airline's services while 34.9% are not
    • 56.0% of customers Male customers are satisfied with the airline's services while 44.0% are not
  • I split the dataset into test and train datasets and trained the LogisticRegression model using the train dataset and tested using the test dataset and achieved a 83.0% accuracy

About

This a supervised machine learning project to predict customer satisfaction based on factors like Gender, Customer Type, Age, Type of travel, Class, Flight distance, Cleanliness, Departure and Arrival Delay, etc

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published