PREDICTING PURCHASE BEHAVIOR USING CUSTOMER JOURNEY DATA
In the era of digitalization, many conventional fields are being digitized, including marketing strategy. By digitizing marketing strategy, more and more digital data available, and one of the most important data in digital strategy marketing is customer journey. Customer journey is the interacti...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/58016 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | In the era of digitalization, many conventional fields are being digitized, including marketing
strategy. By digitizing marketing strategy, more and more digital data available, and one of the
most important data in digital strategy marketing is customer journey. Customer journey is the
interaction between customer and marketing channel from the beginning until the customer
finishes the transaction at the marketing channel. Predictive analytics became one of the most
important analysis to be performed in the data as it resulted in knowing the information of
product and behavior of the customer. One of predictive analytics that is useful for customer
journey data is predicting purchase behavior based on the user journey. Because the form of
customer journey can be different from one marketing channel to another, machine learning
model that is used to predict customer behavior can have different performance. Hence, in this
research, comparison of machine learning model to predict purchase behavior based on customer
journey data will be performed. Machine learning models that are being compared are gradient
boosting tree model, logistic regression model, and gradient boosting tree model as feature
transformation and logistic regression as predictive model. From experiment, gradient boosting
tree model as feature transformation and logistic regression has the best performance among
other models.
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