Supervised Learning and Its Applications in Marketing
May 3, 2024 2024-09-06 18:13Supervised Learning and Its Applications in Marketing
Supervised Learning and Its Applications in Marketing
Overview
Supervised Learning and Its Applications in Marketing
This course is part of Machine Learning for Marketing Specialization
Taught in English
Instructor: Ambica Ghai
Included with
Course
Gain insight into a topic and learn the fundamentals
Beginner level
Recommended experience
21 hours (approximately)
Flexible schedule
Learn at your own pace
What you’ll learn
Apply Python as an effective tool for supervised learning techniques.
Develop and train supervised machine learning models for classification and regression tasks.
Interpret and analyze various applications of supervised learning in marketing.
Describe the deployment of machine learning models and the challenges encountered in the deployment.
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There are 12 modules in this course
Welcome to the Supervised Learning and Its Applications in Marketing course! Supervised learning is the process of making an algorithm to learn to map an input to a particular output. Supervised learning algorithms can help make predictions for new unseen data. In this course, you will use the Python programming language, which is an effective tool for machine learning applications. You will be introduced to the supervised learning techniques: regression and classification. The course will focus on the applications of these techniques in the domain of marketing.
With the growing amount of data and applications of machine learning in marketing, we can easily find examples of the usage of machine learning in marketing efforts. Companies are starting to use machine learning to better understand customer behaviors and identify different customer segments based on their activity patterns. Many organizations also use machine learning to predict future customer behaviors, such as what items they are likely to purchase, which websites they are likely to visit, and who are likely to churn. With endless use cases of machine learning for marketing, companies of all sizes can benefit from using machine learning for their marketing efforts. To succeed in this course, you should have a basic understanding of Python. You will also need certain software requirements, including an Anaconda navigator.
Introduction to Supervised Learning in Marketing
In this module, you will be introduced to the concept and applications of supervised learning with various real-life examples. The module will introduce you to the major challenges faced by marketers in this fast-paced world. You will also learn the introductory concepts of machine learning. Practical applications of supervised learning in marketing, including customer segmentation, churn prediction, recommendation systems, and predictive modeling, will be emphasized through case studies. By the end of the module, you will have the skills to apply supervised learning algorithms effectively in marketing analytics and make data-driven decisions to drive business growth.
What’s included
5 videos5 readings4 quizzes1 discussion prompt
5 videos•Total 37 minutes
- Course Intro video•4 minutes•Preview module
- Major Challenges Marketers Face Today•6 minutes
- Introduction to Machine Learning for Marketing•9 minutes
- Concepts for Machine Learning in Marketing•7 minutes
- Introduction to Supervised Learning in Marketing •9 minutes
5 readings•Total 55 minutes
- Course Overview•10 minutes
- Essential Reading: Major Challenges Marketers Face Today•15 minutes
- Essential Reading: Introduction to Machine Learning for Marketing•10 minutes
- Essential Reading: Concepts for Machine Learning in Marketing•10 minutes
- Essential Reading: Introduction to Supervised Learning in Marketing •10 minutes
4 quizzes•Total 18 minutes
- Major Challenges Marketers Face Today•6 minutes
- Introduction to Machine Learning for Marketing•3 minutes
- Concepts for Machine Learning in Marketing•6 minutes
- Introduction to Supervised Learning in Marketing •3 minutes
1 discussion prompt•Total 20 minutes
- Understanding the Applications of Supervised Learning in Marketing •20 minutes
Getting Started With Supervised Learning in Marketing
In this module, you will be introduced to some key performance indicators (KPIs) and learn how to visualize these key metrics. You will learn how to compute and build visual plots of these KPIs in Python and how to use machine learning algorithms to understand what drives the successes and failures of marketing campaigns. This module is designed to provide learners with a comprehensive introduction to the fundamental concepts and practical applications of supervised learning in the field of marketing. In this module, learners will explore the basics of supervised learning, including the distinction between labeled and unlabeled data and the process of training and evaluation of supervised learning models. Throughout the module, learners will also gain hands-on experience working with industry-standard tools and platforms, such as Python and scikit-learn, to implement and evaluate supervised learning models. By the end of the module, learners will have the necessary knowledge and skills to apply supervised learning techniques to extract valuable insights from marketing data and make data-driven decisions that drive business growth and success.
What’s included
4 videos4 readings4 quizzes
4 videos•Total 40 minutes
- Problem Workflow for Supervised Learning and Its Techniques •9 minutes•Preview module
- Key Performance Indicators and Visualizations•10 minutes
- Drivers Behind Marketing Engagement•12 minutes
- Decision Trees •8 minutes
4 readings•Total 95 minutes
- Essential Reading: Problem Workflow for Supervised Learning and Its Techniques •20 minutes
- Essential Reading: Key Performance Indicators and Visualizations•30 minutes
- Essential Reading: Drivers Behind Marketing Engagement•30 minutes
- Essential Reading: Decision Trees •15 minutes
4 quizzes•Total 12 minutes
- Problem Workflow for Supervised Learning and Its Techniques •3 minutes
- Key Performance Indicators and Visualizations•3 minutes
- Drivers Behind Marketing Engagement•3 minutes
- Decision Trees •3 minutes
Weekly Summative Assessment: Supervised Learning in Marketing
This assessment is a graded quiz based on the modules covered this week.
What’s included
1 quiz
1 quiz•Total 60 minutes
- Graded Quiz: Supervised Learning in Marketing •60 minutes
Deriving Insights from Data
In this module, you will dive deeper into the world of decision trees and gain hands-on experience in building and interpreting these powerful models. Through practical exercises and Python programming, you will learn how to construct decision trees from scratch and leverage them to extract valuable insights from marketing data. Additionally, you will explore the significance of product analysis and discover how to uncover crucial analytical components using Python-based tools and techniques. By the end of this module, you will have a comprehensive understanding of decision trees, their application in marketing, and the ability to derive actionable insights from your data-driven analyses. Get ready to sharpen your analytical skills and unlock the potential of decision trees in the realm of marketing.
What’s included
4 videos4 readings4 quizzes
4 videos•Total 32 minutes
- From Engagement to Conversion •9 minutes•Preview module
- Interpreting Decision Trees•5 minutes
- Importance of Product Analytics•5 minutes
- Product Analytics Using Python •12 minutes
4 readings•Total 80 minutes
- Essential Reading: From Engagement to Conversion•30 minutes
- Essential Reading: Interpreting Decision Trees•10 minutes
- Essential Reading: Importance of Product Analytics •10 minutes
- Essential Reading: Product Analytics Using Python •30 minutes
4 quizzes•Total 15 minutes
- From Engagement to Conversion •6 minutes
- Interpreting Decision Trees•3 minutes
- Importance of Product Analytics•3 minutes
- Product Analytics Using Python •3 minutes
Product Recommender System
In this module, you will explore the fascinating world of product recommendation systems. You will learn how these systems leverage machine learning techniques to provide personalized recommendations to customers, enhancing their shopping experience and driving sales. You will understand the different types of recommendation algorithms, such as collaborative filtering and content-based filtering, and how they can be implemented using Python. Through hands-on exercises and real-world examples, you will discover how to collect and analyze customer data, build recommendation models, and evaluate their performance. By the end of this module, you will have the skills and knowledge to develop and deploy effective product recommendation systems, enabling you to target customers with tailored recommendations and improve customer satisfaction and engagement.
- Product Recommender System •9 minutes•Preview module
- Collaborative Filtering •7 minutes
- Building Product Recommendation Engine Using Python•10 minutes
- Item-Based Collaborative Filtering and Recommendations•5 minutes
4 readings•Total 45 minutes
- Essential Reading: Product Recommender System •10 minutes
- Essential Reading: Collaborative Filtering •10 minutes
- Essential Reading: Building Product Recommendation Engine Using Python•15 minutes
- Essential Reading: Item-Based Collaborative Filtering and Recommendations •10 minutes
4 quizzes•Total 15 minutes
- Product Recommender System •3 minutes
- Collaborative Filtering •3 minutes
- Building Product Recommendation Engine Using Python•6 minutes
- Item-Based Collaborative Filtering and Recommendations•3 minutes
1 discussion prompt•Total 30 minutes
- Application of Supervised Learning in Product Recommender System•30 minutes
Weekly Summative Assessment: Deriving Insights from Data and Product Recommender System
This assessment is a graded quiz based on the modules covered this week.
What’s included
1 quiz
1 quiz•Total 60 minutes
- Graded Quiz: Deriving Insights from Data and Product Recommender System •60 minutes
Personalized Marketing
In this module, you will delve into the fascinating world of customer analytics and gain valuable insights into how data can be leveraged to understand customer behavior in a marketing context. Through a combination of theory and hands-on practice, you will learn how to apply supervised learning techniques to predict the likelihood of marketing engagement. By analyzing historical customer data and implementing machine learning algorithms in Python, you will discover how to uncover patterns, trends, and hidden insights that can drive effective marketing strategies. The module will also provide practical guidance on implementing customer analytics using Python, enabling you to manipulate, analyze, and visualize data to extract meaningful information. By the end of this module, you will have a solid foundation in customer analytics and be equipped with the skills to make data-driven marketing decisions, enhance customer engagement, and maximize business success.
What’s included
4 videos4 readings4 quizzes1 discussion prompt
4 videos•Total 40 minutes
- Understanding Customer Behavior •8 minutes•Preview module
- Conducting Customer Analytics with Python •12 minutes
- Predictive Analytics in Marketing •8 minutes
- Predicting the Likelihood of Marketing Engagement Using Python •11 minutes
4 readings•Total 70 minutes
- Essential Reading: Understanding Customer Behavior •10 minutes
- Essential Reading: Conducting Customer Analytics with Python•25 minutes
- Essential Reading: Predictive Analytics in Marketing •15 minutes
- Essential Reading: Predicting the Likelihood of Marketing Engagement Using Python•20 minutes
4 quizzes•Total 18 minutes
- Understanding Customer Behavior •3 minutes
- Conducting Customer Analytics with Python •3 minutes
- Predictive Analytics in Marketing •9 minutes
- Predicting the Likelihood of Marketing Engagement Using Python •3 minutes
1 discussion prompt•Total 30 minutes
- Supervised Learning to Personalize Marketing and Build Strategies •30 minutes
Customer Lifetime Value
In this module, you will delve into the concept of customer lifetime value (CLV) and its significance in marketing. You will learn how to measure CLV, which involves quantifying the long-term value a customer brings to a business. By understanding CLV, you can make informed decisions regarding customer acquisition, retention, and marketing strategies. Additionally, you will explore machine learning models specifically designed for CLV predictions. You will gain hands-on experience in building and training these models using Python, allowing you to forecast the future value of customers based on their historical data. By the end of the module, you will have a comprehensive understanding of CLV and the skills to develop accurate predictions using machine learning techniques, empowering you to make data-driven decisions to maximize customer value and drive business growth.
- Customer Lifetime Value •8 minutes•Preview module
- Evaluating Regression Models•7 minutes
- Predicting the Three-Month CLV with Python: Part I•8 minutes
- Predicting the Three-Month CLV with Python: Part II •11 minutes
4 readings•Total 50 minutes
- Essential Reading: Customer Lifetime Value•10 minutes
- Essential Reading: Evaluating Regression Models•10 minutes
- Essential Reading: Predicting the Three-Month CLV with Python: Part I •15 minutes
- Essential Reading: Predicting the Three-Month CLV with Python: Part II•15 minutes
4 quizzes•Total 12 minutes
- Customer Lifetime Value •3 minutes
- Evaluating Regression Models•3 minutes
- Predicting the Three-Month CLV with Python: Part I•3 minutes
- Predicting the Three-Month CLV with Python: Part II •3 minutes
1 discussion prompt•Total 30 minutes
- Customer Churn Prediction Using Supervised Learning•30 minutes
Weekly Summative Assessment: Personalized Marketing and Customer Lifetime Value
This assessment is a graded quiz based on the modules covered this week.
What’s included
1 quiz
1 quiz•Total 60 minutes
- Graded Quiz: Personalized Marketing and Customer Lifetime Value•60 minutes
Retaining Customers
In this module, you will delve into the topic of customer churn prediction and retention strategies. You will learn how to identify customers who are at risk of churning and implement proactive measures to retain them. Additionally, you will explore the application of artificial neural networks (ANNs) in predicting customer churn. ANNs are powerful machine learning models that can capture complex patterns and relationships in the data. You will gain hands-on experience in building neural network models using Python and leveraging their predictive capabilities to identify customers who are likely to churn. By the end of this module, you will be equipped with the knowledge and tools to analyze customer churn data, develop effective retention strategies, and implement neural network models to predict customer churn in the marketing domain.
What’s included
4 videos4 readings4 quizzes
4 videos•Total 32 minutes
- Customer Retention •8 minutes•Preview module
- Artificial Neural Networks (ANNs)•9 minutes
- Predicting Customer Churn with Python: Part I•7 minutes
- Predicting Customer Churn with Python: Part II •6 minutes
4 readings•Total 40 minutes
- Essential Reading: Customer Retention•10 minutes
- Essential Reading: Artificial Neural Networks (ANNs)•10 minutes
- Essential Reading: Predicting Customer Churn with Python: Part I•10 minutes
- Essential Reading: Predicting Customer Churn with Python: Part II•10 minutes
4 quizzes•Total 18 minutes
- Customer Retention •9 minutes
- Artificial Neural Networks (ANNs)•3 minutes
- Predicting Customer Churn with Python: Part I•3 minutes
- Predicting Customer Churn with Python: Part II •3 minutes
Deployment of Supervised Learning Models
In this module, you will delve into the real-life challenges associated with deploying artificial intelligence (AI) solutions, explore the issues organizations commonly face, and examine the future scope of AI technologies. The module will provide a comprehensive understanding of the practical considerations and obstacles encountered while implementing AI in various industries and sectors. You will explore topics such as data quality and availability, ethical considerations, regulatory compliance, model interpretability, and scalability. Additionally, you will gain insights into the potential impact of AI on the job market, economy, and society as a whole. By the end of the module, you will be equipped with valuable knowledge and perspectives to navigate the complexities of AI deployment, anticipate future trends and challenges, and make informed decisions to drive successful AI initiatives in real-world scenarios.
4 videos•Total 33 minutes
- Real-Life Challenges in Applying Supervised Learning Models •9 minutes•Preview module
- Standardized Framework for Success •10 minutes
- Industry Views on AI strategy•6 minutes
- Future Scope•7 minutes
4 readings•Total 120 minutes
- Essential Reading: Real-Life Challenges in Applying Supervised Learning Models •15 minutes
- Essential Reading: Standardized Framework for Success •30 minutes
- Essential Reading: Industry Views on AI strategy•30 minutes
- Essential Reading: Future Scope•45 minutes
4 quizzes•Total 12 minutes
- Real-Life Challenges in Applying Supervised Learning Models •3 minutes
- Standardized Framework for Success •3 minutes
- Industry Views on AI strategy•3 minutes
- Future Scope•3 minutes
Weekly Summative Assessment: Retaining customers and Deployment of Supervised Learning Models
This assessment is a graded quiz based on the modules covered this week.
What’s included
1 video1 quiz
1 video•Total 2 minutes
- Course Wrap-Up Video•2 minutes•Preview module
1 quiz•Total 60 minutes
- Graded Quiz: Retaining ustomers and Deployment of Supervised Learning Models •60 minutes
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