Abstract:
Everyday using ecommerce sites many customers purchase different types of product
form online. This virtual shops are now biggest business now. One of the biggest challenge of
the ecommerce sites is showing ads and offers to the correct customer. If they can do this than
their sell rate will increase. For this reason customers clickstream data is rich source of customer
behavior analysis. The aim of this project is to develop such a functional classifier which can
predict purchaseevents correctlyasmoreaspossible.
In this project, I use multiple linear regression technique to predict purchase event. In this
technique I build a scoring model with multiple linear regression. Then I set some thresholds
manually and use it with different size of dataset. Then I pick the best acting threshold
compacting precision, recall, accuracy.I also use ROC graph to verify the threshold.
Description:
This thesis submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science and Engineering of East West University, Dhaka, Bangladesh