Skip to content

This comprehensive dataset is a goldmine for data scientists, analysts, and researchers interested in exploring a wide range of topics within the realm of online retail. It encompasses a rich collection of customer behavior and characteristics, making it a versatile resource for tackling multiple aspects of data analysis and prediction.

License

Notifications You must be signed in to change notification settings

ManuhIsMe/Customer-Segmentation_Churn-Prediction_Fraud-Detection

Repository files navigation

CUSTOMER_SEGMENTATION_AND_CHURN_PREDICTION

This comprehensive dataset is a goldmine for data scientists, analysts, and researchers interested in exploring a wide range of topics within the realm of online retail. It encompasses a rich collection of customer behavior and characteristics, making it a versatile resource for tackling multiple aspects of data analysis and prediction.

Key Topics Covered:

Customer Segmentation: Dive deep into customer demographics and behavior patterns to identify distinct customer segments.

Geographic Analysis: Explore geographical data to understand regional variations in customer behavior and preferences.

Product Analysis: Analyze product-related data to uncover insights into product popularity, customer preferences, and inventory management.

Time Series Analysis with ARIMA: Utilize time series data to forecast future trends, identify seasonality, and make data-driven decisions using the ARIMA (AutoRegressive Integrated Moving Average) model.

Data Preprocessing: Prepare the dataset for analysis by performing essential data preprocessing tasks such as cleaning, normalization, and feature engineering.

Fraud Detection: Implement fraud detection algorithms to identify suspicious transactions and protect your business from fraudulent activities.

Statistical Analysis: Apply statistical techniques to gain valuable insights into the dataset, including hypothesis testing and inferential statistics.

Market Basket Analysis: Uncover associations between products and customer shopping patterns using market basket analysis techniques.

Data Visualization with Matplotlib and Seaborn: Create informative and visually appealing data visualizations to convey your findings effectively, utilizing the power of Matplotlib and Seaborn libraries.

This dataset offers a unique opportunity to address various aspects of online retail analytics, from understanding customer behavior and preferences to predicting churn rates. Dive into this dataset and embark on your journey to extract valuable insights that can drive business growth and informed decision-making.

About

This comprehensive dataset is a goldmine for data scientists, analysts, and researchers interested in exploring a wide range of topics within the realm of online retail. It encompasses a rich collection of customer behavior and characteristics, making it a versatile resource for tackling multiple aspects of data analysis and prediction.

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published