Document
A Comparative Study using Machine Learning Algorithms for Predicting Customer Lifetime Value
Linked Agent
Hilal, Sawsan, Thesis advisor
Language
English
Extent
[1], 9, 68, [1] Pages
Subject
Place of institution
Sakhir, Bahrain
Thesis Type
Theses (Master)
Institution
"University of Bahrain, College of Science Environmental and Sustainable Development program
English Abstract
Abstract:
Customer Lifetime Value (CLV) is a useful metric that plays a vital role in setting marketing plans because it can be used to answer several questions of business interest such as those related with the number of
purchases and the monetary value that the customer can generate to the company in a future time range.
There are two main related problems, namely, CLV prediction and customer churn classification of which each has its practical implications although the current study focuses on the former. The relevant literature
highlights two broad approaches towards CLV prediction given by the probabilistic approach which represents the traditional approach for CLV prediction, and machine learning approach being the recent one. There are several methods to be implemented within each prediction approach, but no overall conclusion can be drawn concerning their performance.
Member of
Identifier
https://digitalrepository.uob.edu.bh/id/e0a5df54-719c-4b86-8045-f1c0002ecf51
Same Subject