Bookstore Customer Analytics:
Predicting Customer Spending and eBook Subscription Behavior


Project Overview

For this project, I explored a bookstore customer dataset to understand purchasing behavior and identify customers who may be interested in an eBook subscription service.

The project combined exploratory data analysis, machine learning, and dashboard development to transform customer data into actionable business insights.


Business Goals

The project focused on two key objectives.

1. Monthly Spend Prediction

Develop a regression model to estimate each customer's average monthly spending.

2. eBook Subscription Prediction

Build a classification model to identify customers likely to subscribe to the bookstore's eBook service.


Tools Used

Programming and Analysis

Visualization

Machine Learning

Development Environment


Data Preparation

The dataset required several preprocessing steps before model development:

This stage reinforced the importance of data quality before building predictive models.


Exploratory Data Analysis

Several patterns emerged during exploration:

Visualization helped uncover relationships that were not immediately visible in the raw data.


Machine Learning Approach

Regression Model

Goal:

Predict average monthly spending

Skilled Practiced:

Classification Model

Goal:

Predict likelihood of eBook subscription

Skilled Practiced:

AutoGluon simplified model experimentation and allowed comparision of multiple algorithms.


Dashboard Development

After completing the analysis, I created Tableau dashboards to communicate findings.

Dashboard sections included:

The goal was to present insights in a format that business stakeholders could easily understand.


Key Skilled Gained

Through this project, I strengthened my abilities in:


Lesson Learned

One of the biggest lessons from this project was that successful machine learning depends heavily on understanding the data and the business problem.

Building accurate models is important, but communicating insights effectively through dashboards and storytelling is equally valuable.


Next Steps

Future improvements could include:

This project was an excellent opportunity to practice end-to-end data science, from raw data to business insights.

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