Social Media Analytics
Objectives
Social media has changed communication channels and created new challenges for marketing in the digital age. Social media analytics is the methodology of gathering data from vast amounts of semi-structured and unstructured social media data to extract insights that help to make better business decisions.
By the end of the course, the student should:
1. Understand different types of social media and social media analytics
2. Understand social media risks and privacy and ethical considerations
3. Understand social media networks concepts, techniques, and tools
4. Understand text analytics concepts, techniques, and tools
5. Understand sentiment analysis concepts, techniques, and tools
6. Demonstrate capacity to perform a practical work that requires the application of social media analytics techniques
7. Be proficient with text mining, sentiment analysis and social network analysis software
General characterization
Code
400081
Credits
7.5
Responsible teacher
Vasco Manuel Monteiro
Hours
Weekly - Available soon
Total - Available soon
Teaching language
Portuguese. If there are Erasmus students, classes will be taught in English
Prerequisites
Bibliography
- Text Mining and Analysis: Practical Methods, Examples, and Case Studies using SAS, Goutam Chakraborty, Murali Pagolu and Satish Garla
- Social Media Met rics How to Measure and Optimize Your Marketing Investment, Jim Sterne
- Stand Out Social Marketing: How to Rise Above the Noise, Differentiate Your Brand, and Bu ild an Outstanding Online Presence, Mike Lewis
- Analyzing Social Med ia Networks with NodeXL: Insights from a Connected World, Derek Hansen, Ben Shneiderman, and Marc Smith
Teaching method
The curricular unit is based on mix of theoretical le ctures and practical classes. Each session will introduce new concepts and methodologies, as well as the applications of the learnt concepts using different computational tools. Different learning strategies will be used, such as lectures, slide show demonstrations, step-by-step tutorials on how to approach practical examples, questions, and answers.
The practical component is focused in explor ing the different computational tools by the students, including a discussion on the best approach under different scenarios.
Evaluation method
Evaluation:
1. Delivery of individual homework assignments (10%)
2. Exam (50%)
3. Oral presentation of final project (10%)
4. Report of Final Project (30%)
The product can be developed individually or in groups of two students
Subject matter
1. Introduction to social media
2. Social media analytics: an overview
3. Social media networks analytics
4. Social media text analytics
5. Social media sentiment analysis
Programs
Programs where the course is taught:
- Specialization in Information Analysis and Management
- Specialization in Risk Analysis and Management
- Specialization in Knowledge Management and Business Intelligence
- Specialization in Information Systems and Technologies Management
- Specialization in Marketing Intelligence
- Specialization in Marketing Research and CRM
- Specialization in Knowledge Management and Business Intelligence – Working Hours Format
- Specialization in Information Systems and Technologies Management - Working Hours Format
- Specialization in Marketing Intelligence - Working Hours Format
- Post-Graduation in Information Analysis and Management
- Post-Graduation Risk Analysis and Management
- PostGraduate in Smart Cities
- PostGraduate in Data Science for Marketing
- PostGraduate in Digital Enterprise Management
- PostGraduate Digital Marketing and Analytics
- PostGraduate in Information Management and Business Intelligence in Healthcare
- Post-Graduation in Knowledge Management and Business Intelligence
- Post-Graduation Information Systems and Technologies Management
- Post-Graduation in Marketing Intelligence
- Post-Graduation Marketing Research e CRM
- PostGraduate in Enterprise Information Systems