Book Image

Data Science for Marketing Analytics - Second Edition

By : Mirza Rahim Baig, Gururajan Govindan, Vishwesh Ravi Shrimali
Book Image

Data Science for Marketing Analytics - Second Edition

By: Mirza Rahim Baig, Gururajan Govindan, Vishwesh Ravi Shrimali

Overview of this book

Unleash the power of data to reach your marketing goals with this practical guide to data science for business. This book will help you get started on your journey to becoming a master of marketing analytics with Python. You'll work with relevant datasets and build your practical skills by tackling engaging exercises and activities that simulate real-world market analysis projects. You'll learn to think like a data scientist, build your problem-solving skills, and discover how to look at data in new ways to deliver business insights and make intelligent data-driven decisions. As well as learning how to clean, explore, and visualize data, you'll implement machine learning algorithms and build models to make predictions. As you work through the book, you'll use Python tools to analyze sales, visualize advertising data, predict revenue, address customer churn, and implement customer segmentation to understand behavior. By the end of this book, you'll have the knowledge, skills, and confidence to implement data science and machine learning techniques to better understand your marketing data and improve your decision-making.
Table of Contents (11 chapters)
Preface

Choosing Relevant Attributes (Segmentation Criteria)

To use clustering for customer segmentation (to group customers with other customers who have similar traits), you first have to decide what similar means, or in other words, you need to be precise when defining what kinds of customers are similar. Choosing the properties that go into the segmentation process is an extremely important decision as it defines how the entities are represented and directs the nature of the groups formed.

Let's say we wish to segment customers solely by their purchase frequency and transaction value. In such a situation, attributes such as age, gender, or other demographic data would not be relevant. On the other hand, if the intent is to segment customers purely on a demographic basis, their purchase frequency and transaction value would be the attributes that won't be relevant to us.

A good criterion for segmentation could be customer engagement, involving features such as time spent...