30603 - COMPUTATIONAL APPLICATIONS IN MARKETING
Department of Marketing
KAI ZHU
Mission & Content Summary
MISSION
CONTENT SUMMARY
The course will overview real-world applications of various computational methodologies in empirical marketing problems, which include
- Digital experimentation
- Causal inference with observational data
- Predictive modeling
- Natural language processing
Intended Learning Outcomes (ILO)
KNOWLEDGE AND UNDERSTANDING
- Understand the core concepts of various computational techniques
- Identify social and business problems that can be solved using computaitonal methodologies
- Understand the suitable way to apply computational techniques in marketing problems
APPLYING KNOWLEDGE AND UNDERSTANDING
- Learn how to implement computational techniques in marketing applications
- Read and understand studies utilize computational techniques
- Acquire hands-on experience on computational techniques
Teaching methods
- Face-to-face lectures
- Online lectures
- Individual assignments
- Group assignments
DETAILS
For each topic in the course, we will combine lecture with hands-on exercises. Students will have opportunity to work with real data set both in class and as group project to practice in quantitative analysis for social science.
Assessment methods
Continuous assessment | Partial exams | General exam | |
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ATTENDING STUDENTS
- Participation (20%)
Engagement, Exercise
- Group Assignments (40%)
Group assignments on materials from lecture of the class. It is graded based on the performance of the solution and the quality of the report and presentation.
- Final Individual Assignment (40%)
Individual final assignment. Students need to write research proposal about their own idea based on what we learn in this class
NOT ATTENDING STUDENTS
- Final Exam (100%)
Test on concepts and programming skills
Teaching materials
ATTENDING STUDENTS
Data Analysis for Social Science: A Friendly and Practical Introduction. Llaudet, Elena and Kosuke Imai. Princeton University Press, 2022.
Optional: Quantitative social science: an introduction. Imai, Kosuke. Princeton University Press, 2018.
NOT ATTENDING STUDENTS
Data Analysis for Social Science: A Friendly and Practical Introduction. Llaudet, Elena and Kosuke Imai. Princeton University Press, 2022.
Optional: Quantitative social science: an introduction. Imai, Kosuke. Princeton University Press, 2018.