Book Image

Data Science for Marketing Analytics

By : Tommy Blanchard, Debasish Behera, Pranshu Bhatnagar
Book Image

Data Science for Marketing Analytics

By: Tommy Blanchard, Debasish Behera, Pranshu Bhatnagar

Overview of this book

Data Science for Marketing Analytics covers every stage of data analytics, from working with a raw dataset to segmenting a population and modeling different parts of the population based on the segments. The book starts by teaching you how to use Python libraries, such as pandas and Matplotlib, to read data from Python, manipulate it, and create plots, using both categorical and continuous variables. Then, you'll learn how to segment a population into groups and use different clustering techniques to evaluate customer segmentation. As you make your way through the chapters, you'll explore ways to evaluate and select the best segmentation approach, and go on to create a linear regression model on customer value data to predict lifetime value. In the concluding chapters, you'll gain an understanding of regression techniques and tools for evaluating regression models, and explore ways to predict customer choice using classification algorithms. Finally, you'll apply these techniques to create a churn model for modeling customer product choices. By the end of this book, you will be able to build your own marketing reporting and interactive dashboard solutions.
Table of Contents (12 chapters)
Data Science for Marketing Analytics
Preface

Identifying the Right Attributes


Given a structured marketing dataset, the first thing you should do is to try and build intuition for the data and create insights. It is also possible to make a call on whether a certain attribute is required for the analysis or not. The insights generated should instinctively agree with the values and there should be no doubts about the quality of the data, its interpretation, or its application for solving the business problems we are interested in. If some values don't make intuitive sense, we must dig deeper into the data, remove outliers, and understand why the attribute has those values. This is important in order to avoid inaccurate model creation, building a model on the wrong data, or the inefficient use of resources.

Before we start with the model creation, we should summarize the attributes in our data and objectively compare them with our business expectations. To quantify business expectations, we generally have target metrics whose relationships...