Part A: Course Overview
Course Title: Social Media and Networks Analytics
Credit Points: 12.00
Terms
Course Code |
Campus |
Career |
School |
Learning Mode |
Teaching Period(s) |
COSC2671 |
City Campus |
Postgraduate |
171H School of Science |
Face-to-Face |
Sem 1 2018, Sem 2 2019 |
COSC2671 |
City Campus |
Postgraduate |
175H Computing Technologies |
Face-to-Face |
Sem 2 2022, Sem 2 2023, Sem 2 2024, Sem 1 2025 |
COSC2984 |
RMIT University Vietnam |
Postgraduate |
175H Computing Technologies |
Face-to-Face |
Viet1 2023, Viet1 2024, Viet1 2025 |
Course Coordinator: Lida Rashidi
Course Coordinator Phone: +61 3 9925
Course Coordinator Email: lida.rashidi@rmit.edu.au
Pre-requisite Courses and Assumed Knowledge and Capabilities
Enforced Pre-requisite Courses:
Successful completion of the following course/s:
- COSC2531 - Programming Fundamentals (Course ID 045682)
OR - COSC2670 / COSC2791 - Practical Data Science with Python (Course ID 051637)
OR - COSC2752 - Programming Fundamentals for Scientists (Course ID 052878)
OR - COSC2820 - Advanced Programming for Data Science (Course ID 054137)
Note: it is a condition of enrolment at RMIT that you accept responsibility for ensuring that you have completed the prerequisite/s and agree to concurrently enrol in co-requisite courses before enrolling in a course.
For information go to RMIT Course Requisites webpage.
If you have completed prior studies at RMIT or another institution that developed the skills and knowledge covered in the above course/s you may be eligible to apply for credit transfer.
Alternatively, if you have prior relevant work experience that developed the skills and knowledge covered in the above course/s you may be eligible for recognition of prior learning.
Please follow the link for further information on how to apply for credit for prior study or experience.
Course Description
Social media and networks are prevalent in our lives. Prominent examples include Facebook, Twitter, LinkedIn and Pinterest. Due to their widespread adaption, they provide a great source of behavioural, social and opinion information and have spawned a new analytic field and industry in social media and network analytics. This has benefited users and organisations in a large variety of fields.
In this course, you will learn how to analyse social media and networks, about different types of analysis that are possible and the algorithms and techniques to perform these analyses. As much of social media and networks are unstructured data, the focus will be in analysis of unstructured data and you will learn about:
- Social network analytics: much data is relational, allowing many exciting forms of networks analysis. This course will cover topics in social network analysis such as centrality (identifying the important nodes/people in the network), network clustering analysis and influence propagation (if you have to market something, which people in the network do you give samples to so they can spread how good your products are).
- Text analytics: data are textual also, e.g., tweets in Twitter. Hence it is important to analyse them from a textual perspective. In this course you will engage with how to apply basic natural language processing (NLP) to extract meaningful document representations, then use them to understand tweets, their authors, and perform sentiment analysis.
Objectives/Learning Outcomes/Capability Development
Program Learning Outcomes
This course is an option course so it is not required to contribute to the development of program learning outcomes (PLOs) though it may assist your achievement of several PLOs.
For more information on the program learning outcomes for your program, please see the program guide.
Upon successful completion of this course, you will be able to:
- Apply data science approaches to analyse social media and social networks.
2. Analyse social networks via discovering communities, identifying important nodes and propagating influence.
3. Analyse social media by applying Natural Language Processing (NLP) techniques to detect sentiment and discover topics in text.
4. Describe the theoretical concepts underpinning the social media and network analytical approaches.
5. Synthesis and present insights from the social media and network analysis performed.
Overview of Learning Activities
You will be actively engaged in a range of learning activities such as lectorials, tutorials, practicals, laboratories, seminars, project work, class discussion, individual and group activities. Delivery may be face to face, online or a mix of both.
You are encouraged to be proactive and self-directed in your learning, asking questions of your lecturer and/or peers and seeking out information as required, especially from the numerous sources available through the RMIT library, and through links and material specific to this course that is available through myRMIT Studies Course.
Overview of Learning Resources
RMIT will provide you with resources and tools for learning in this course through myRMIT Studies Course.
There are services available to support your learning through the University Library. The Library provides guides on academic referencing and subject specialist help as well as a range of study support services. For further information, please visit the Library page on the RMIT University website and the myRMIT student portal.
Overview of Assessment
This course has no hurdle requirements.
Assessment tasks
Assessment Task 1: Assignment 1
Weighting 20%
This assessment task supports CLOs 1, 3, 5
Assessment Task 2: Assignment 2
Weighting 40%
This assessment task supports CLOs 1, 2, 3, 5
Assessment Task 3: Timed and Time-tabled Exercises
Weighting 40%
This assessment supports CLO 4
If you have a long-term medical condition and/or disability it may be possible to negotiate to vary aspects of the learning or assessment methods. You can contact the program coordinator or Equitable Learning Services if you would like to find out more.