Introduction to Decision Science for Marketing
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Introduction to Decision Science for Marketing
This course is part of Machine Learning for Marketing Specialization
Instructor: Prof. Lalit Pankaj
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What you'll learn
Demonstrate a solid understanding of the decision-making process through data analytics.
Visualize and imagine the application of data analytics techniques to real-world marketing problems.
Explain how marketing analytics and decision science approaches for marketing can enhance the quality of marketing decision-making.
Skills you'll gain
- Data-Driven Decision-Making
- Customer Analysis
- Customer Engagement
- Personalized Campaigns
- Marketing Strategy and Techniques
- Customer Insights
- Personalized Service
- Consumer Behaviour
- Predictive Analytics
- Strategic Marketing
- Marketing Strategies
- Customer Retention
- Predictive Modeling
- Customer experience improvement
- Marketing Analytics
- Data-Driven Marketing
- Customer Acquisition Management
Details to know
See how employees at top companies are mastering in-demand skills
Build your subject-matter expertise
- Learn new concepts from industry experts
- Gain a foundational understanding of a subject or tool
- Develop job-relevant skills with hands-on projects
- Earn a shareable career certificate
There are 15 modules in this course
Welcome to the Introduction to Decision Science for Marketing course! This course will introduce the principles and methods of data analytics as they apply to marketing. You will learn how and why to use data and analytics to inform marketing decisions and strategies.
This beginner-level course provides awareness about the present practice of data-driven decision-making in the marketing discipline. This will help you familiarize yourself with practical tips about when and where to use various techniques and tools. You will learn about critical theories and concepts with the help of relevant examples. To succeed in this course, you should have basic clarity of concepts of the marketing discipline. As a prerequisite for the course, you should know key marketing terms, such as segmentation, targeting, and positioning. After the successful completion of this course, you will have basic understanding of how to use data for making marketing predictions. You will have sufficient knowledge of foundational elements, the relationship between data and marketing constructs/concepts, and how decision science and marketing work in tandem to produce relevant insights for today’s market. Finally, the course provides concrete strategies to start with decision science in marketing.
Decision science or data analytics for marketing (predictive marketing) are new approaches to customer relationships, using big data and machine learning techniques. It is a critical opportunity for marketers and is still in the early stages of adoption. In this module, you will learn why and how companies of all sizes adopt decision science. The early adopters have seen great value in it, and new technologies make it easy to implement.
What's included
6 videos5 readings4 assignments
6 videos•Total 34 minutes
- Course Introduction•3 minutes
- Meet Your Instructor•2 minutes
- Easy Access to Big Data and Analytics•7 minutes
- Decision Science for Marketing: An Easy Guide—Part I•7 minutes
- Decision Science for Marketing: An Easy Guide—Part II•8 minutes
- Decision Science for Marketing: An Easy Guide—Part III•7 minutes
5 readings•Total 70 minutes
- Course Overview•10 minutes
- Essential Reading: The Marketing Decision Environment•15 minutes
- Essential Reading: The Marketing Engineering and Analytics•15 minutes
- Essential Reading: The Marketing Engineering and Analytics•20 minutes
- Essential Reading: The Marketing Engineering and Analytics •10 minutes
4 assignments•Total 12 minutes
- Easy Access to Big Data and Analytics•3 minutes
- Decision Science for Marketing: An Easy Guide—Part I•3 minutes
- Decision Science for Marketing: An Easy Guide—Part II •3 minutes
- Decision Science for Marketing: An Easy Guide—Part III•3 minutes
In this module, you will learn that building complete and accurate customer profiles is difficult but valuable. Predictive technology can help clean up data and connect online and offline information to resolve customer identities. Having all customer data in one place and making it accessible to customer-facing personnel improves the customer experience. Optimizing customer lifetime value is the best way to optimize enterprise value and manage customers. This is similar to managing a stock portfolio, taking different actions for new and long-term customers, and adjusting budgets for profitable and unprofitable customers.
What's included
4 videos4 readings4 assignments1 discussion prompt
4 videos•Total 24 minutes
- Customer Data•6 minutes
- Analyzing Customers Data•6 minutes
- Customer Lifetime Value•6 minutes
- Managing Your Customers•6 minutes
4 readings•Total 105 minutes
- Essential Reading: Customer Value Assessment and Valuing Customers•15 minutes
- Essential Reading: Customer Lifetime Value•15 minutes
- Essential Reading: Customer Lifetime Value•35 minutes
- Essential Reading: Customer Value•40 minutes
4 assignments•Total 15 minutes
- Analyzing Customers Data•3 minutes
- Analyzing Customers Data•3 minutes
- Customer Lifetime Value •6 minutes
- Managing Your Customers•3 minutes
1 discussion prompt•Total 20 minutes
- Understanding Consumer Behavior and Preferences Using Decision Science•20 minutes
This assessment is a graded quiz based on the modules covered this week.
What's included
1 assignment
1 assignment•Total 60 minutes
- Graded Quiz: Introduction to Decision Science for Marketing and Building Customer Profiles to Optimize Enterprise Value•60 minutes
In this module, you will examine the stages of a customer’s journey with a company, including acquiring new customers, fostering their growth, and retaining them. You will also explore how a company’s engagement strategy should adapt at each stage of the customer life cycle. The key to maximizing the value from customers is by building trust by providing value to the customer.
What's included
3 videos3 readings3 assignments
3 videos•Total 21 minutes
- Customer Retention, Reactivation, and Acquisition•7 minutes
- Predict the Customer Journey for Life Cycle Marketing•7 minutes
- Life Cycle Marketing Strategies•7 minutes
3 readings•Total 75 minutes
- Essential Reading: Segmentation and Targeting•55 minutes
- Essential Reading: The Customer Value Journey•10 minutes
- Essential Reading: Life Cycle Marketing Strategies•10 minutes
3 assignments•Total 9 minutes
- Customer Retention, Reactivation, and Acquisition•3 minutes
- Predict the Customer Journey for Life Cycle Marketing•3 minutes
- Life Cycle Marketing Strategies•3 minutes
In this module, you will learn about value-based marketing, where businesses segment and target customers based on their lifetime value. High-value customers are prioritized by investing more money in retaining and appreciating them, while medium-value customers are upsold to increase their value. Low-value or unprofitable customers are not invested in as much. The module also discusses predictive analytics, specifically models that predict a customer’s likelihood to buy, in both consumer and business marketing. These models can optimize the time and efforts of sales and customer success teams in business marketing and help consumer marketers optimize their discount strategy and email frequency.
What's included
3 videos3 readings3 assignments
3 videos•Total 20 minutes
- Value-Based Marketing•8 minutes
- Predict Likelihood to Buy•6 minutes
- Predict Likelihood to Engage•6 minutes
3 readings•Total 85 minutes
- Essential Reading: Predict Customer Value and Value-Based Marketing•45 minutes
- Essential Reading: Likelihood to Buy Predictions•15 minutes
- Essential Reading: Likelihood to Engage Models•25 minutes
3 assignments•Total 12 minutes
- Value-Based Marketing•3 minutes
- Predict Likelihood to Buy•3 minutes
- Predict Likelihood to Engage•6 minutes
This module provides marketers with a primer on personalized recommendations, discussing different types, such as those made at the time of purchase and those tied to specific products or customer profiles. It also highlights potential issues and the importance of merchandising rules, omnichannel orchestration, and giving customers control when making personal recommendations.
What's included
2 videos2 readings2 assignments1 discussion prompt
2 videos•Total 15 minutes
- Make Effective Recommendations•9 minutes
- Contextualizing the Customer Experience•7 minutes
2 readings•Total 20 minutes
- Essential Reading: Choosing the Right Customer or Segment•10 minutes
- Essential Reading: Understanding Customer Context•10 minutes
2 assignments•Total 9 minutes
- Make Effective Recommendations•6 minutes
- Contextualizing the Customer Experience•3 minutes
1 discussion prompt•Total 30 minutes
- Applications of Data Analytics and Decision Science Tools to Optimize Marketing Campaigns•30 minutes
This assessment is a graded quiz based on the modules covered this week.
What's included
1 assignment
1 assignment•Total 60 minutes
- Graded Quiz: Life Cycle Marketing: Predicting the Customer Journey, Customer Value, and Their Likelihood to Buy/Engage•60 minutes
By using predictive marketing techniques, marketers should focus on allocating budgets to the right people rather than the right products or channels. This includes using clustering to discover personas or communities in the customer base and gain insight into their needs, behaviors, demographics, attitudes, and preferences. This can help differentiate and optimize marketing actions and product strategies for different groups of customers, which can lead to more cost-effective growth. This module also covers three predictive marketing strategies for acquiring more and better customers: personas, remarketing, and look-alike targeting. Remarketing is used to differentiate between customers who are likely to return and those who need an incentive. Look-alike targeting on platforms like Facebook helps find new customers similar to existing ones.
What's included
3 videos3 readings3 assignments
3 videos•Total 20 minutes
- Customer Value Journey•8 minutes
- Remarketing Campaigns•6 minutes
- Using Look-Alike Targeting•6 minutes
3 readings•Total 55 minutes
- Essential Reading: Predict Customer Personas and Make Marketing Relevant Again•30 minutes
- Essential Reading: Predictive Remarketing Campaigns•15 minutes
- Essential Reading: Using Look-Alike Targeting•10 minutes
3 assignments•Total 9 minutes
- Customer Value Journey•3 minutes
- Remarketing Campaigns•3 minutes
- Using Look-Alike Targeting•3 minutes
This module covers strategies for retaining customers by nurturing the relationship from the day of acquisition. It discusses various predictive marketing strategies to grow customer value, including post-purchase campaigns, replenishment campaigns, repeat purchase programs, new product introductions, and customer appreciation campaigns. It also covers loyalty programs and omnichannel marketing in the age of predictive analytics.
What's included
3 videos3 readings3 assignments
3 videos•Total 19 minutes
- Growing the Value of Your Customers•7 minutes
- Programs to Predict Post-Purchase Behavior•5 minutes
- Campaigns for Customer Appreciation•7 minutes
3 readings•Total 25 minutes
- Essential Reading: The Secret to Growing Customer Value•10 minutes
- Essential Reading: Predictive Post-Purchase Programs•5 minutes
- Essential Reading: Customer Appreciation Campaigns•10 minutes
3 assignments•Total 15 minutes
- Growing the Value of Your Customers•9 minutes
- Programs to Predict Post-Purchase Behavior•3 minutes
- Campaigns for Customer Appreciation•3 minutes
The module focuses on the retention of customers in order to avoid losing money. It is important to understand that not all churn is the same;, losing an unprofitable customer is less impactful than losing a valuable one. Preventing a customer from leaving is more efficient and cost-effective than trying to reactivate them. The chapter covers different churn management programs, from untargeted to targeted, and covers proactive retention management and customer reactivation campaigns.
What's included
2 videos2 readings2 assignments1 discussion prompt
2 videos•Total 16 minutes
- Not All Churns Are Equal•7 minutes
- Churn Management•10 minutes
2 readings•Total 35 minutes
- Essential Reading: Understanding Your Retention Rate•15 minutes
- Essential Reading: Proactive Retention Management•20 minutes
2 assignments•Total 6 minutes
- Not All Churns Are Equal•3 minutes
- Churn Management•3 minutes
1 discussion prompt•Total 30 minutes
- Decision Science to Personalize Marketing Messages and Improve the Overall Customer Experience•30 minutes
This assessment is a graded quiz based on the modules covered this week.
What's included
1 assignment
1 assignment•Total 60 minutes
- Graded Quiz: Predict Customer Personas and Convert More Customers, Grow Customer Value, and Retention of Customers•60 minutes
The module discusses the use of predictive marketing techniques. This requires both a change in mindset to focus on individual customers and their context, as well as technical capabilities in customer data integration, predictive intelligence, and campaign automation.
What's included
2 videos2 readings2 assignments
2 videos•Total 12 minutes
- How to Optimize Marketing Spending Using Customer Data•6 minutes
- Capabilities Organizations Need to Possess•5 minutes
2 readings•Total 35 minutes
- Essential Reading: Differentiate Spending Based on Customer Value•20 minutes
- Essential Reading: Organizational Capabilities for Predictive Marketing•15 minutes
2 assignments•Total 6 minutes
- How to Optimize Marketing Spending Using Customer Data•3 minutes
- Capabilities Organizations Need to Possess•3 minutes
The current era is both exhilarating and perplexing due to the abundance of new marketing technologies emerging annually. This module provides a general understanding of the different commercial technologies available and the steps necessary to create a predictive marketing solution internally from scratch.
What's included
3 videos3 readings3 assignments
3 videos•Total 17 minutes
- Predictive Marketing Technology Overview•6 minutes
- Other Tools You Might Be Aware Of•5 minutes
- Get Started•6 minutes
3 readings•Total 25 minutes
- Essential Reading: An Overview of Predictive Marketing Technology•5 minutes
- Essential Reading: Other Tools You May Have Heard About•10 minutes
- Essential Reading: Which Solution Is Right for Me?•10 minutes
3 assignments•Total 9 minutes
- Predictive Marketing Technology Overview•3 minutes
- Other Tools You Might Be Aware Of•3 minutes
- Get Started•3 minutes
This module highlights a significant career opportunity for early adopters of new technologies and methodologies, such as predictive marketing and analytics. Business understanding is more important than math skills, and asking the right questions is the key. Consumers are willing to share preference information in exchange for benefits from personalized products and services. It is important to use common sense and consider the context of the situation when using customer data to ensure trust. Predictive analytics will continue to find new applications and real-time customer insights will shape the physical world. There are benefits for early adopters of predictive marketing for both customers and companies, and adopting a predictive marketing mindset is suggested to gain a competitive advantage.
What's included
3 videos3 readings3 assignments1 discussion prompt
3 videos•Total 25 minutes
- Career for Future Predictive Marketers•9 minutes
- Security and Privacy Concerns with Customer Data•6 minutes
- Marketing Engineering Requires Life-Long Learning•10 minutes
3 readings•Total 135 minutes
- Essential Reading: Career Advice for Aspiring Predictive Marketers•30 minutes
- Essential Reading: Privacy and the Difference Between Delightful and Invasive•45 minutes
- Essential Reading: The Future of Predictive Marketing•60 minutes
3 assignments•Total 15 minutes
- Career for Future Predictive Marketers•9 minutes
- Security and Privacy Concerns with Customer Data•3 minutes
- Marketing Engineering Requires Life-Long Learning•3 minutes
1 discussion prompt•Total 30 minutes
- Ethical Considerations While Using Decision Science in Marketing Decisions•30 minutes
This assessment is a graded quiz based on the modules covered this week.
What's included
1 video1 assignment
1 video•Total 2 minutes
- Course Wrap-Up Video•2 minutes
1 assignment•Total 60 minutes
- Graded Quiz: How to Use Predictive Analytics in Marketing, Useful Tools and What It Needs to Be a Successful Predictive Marketer•60 minutes
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