SOCIAL MEDIA MANAGEMENT
Academic Year 2019/2020 - 3° Year - Curriculum A
Teaching Staff: Antonino FURNARI
Credit Value: 6
Taught classes: 24 hours
Exercise: 24 hours
Term / Semester: 1°
Credit Value: 6
Taught classes: 24 hours
Exercise: 24 hours
Term / Semester: 1°
Learning Objectives
- Knowledge and understanding: The student will acquire the knowledge of the concepts behind social media and the analysis of their data.
- Applying knowledge and understanding: The student will acquire the practical skills for implementing systems to analyze data extracted from social media.
- Making judgments: Through the laboratories and the projects assigned to the students, they will be able to independently develop solutions that can solve the basic problems which could arise in the world of work.
- Communication skills: the student will acquire the necessary communication skills and the appropriate use of technical language in the general field of social media and data analysis.
- Learning skills: The course aims to delve into theories and techniques useful for the creation of systems for the analysis of multimedia data (images, text, tags, metadata) present in social media. The students will acquire knowledge and skills useful for the analysis of large amounts of multimedia data present in social media. The knowledge acquired will be applied through laboratory and projects. The oral test for passing the exam will be useful for developing the appropriate communication skills.
Course Structure
Frontal lessons and laboratory lessons
Detailed Course Content
- Social media: definition, features and short history
- APIs and libraries for extrapolation, processing, and visualization of social media data, Web Scraping
- Methods for representing and processing text
- Tools for the advanced analysis of text: sentiment analysis and and topic modeling
- Recommender systems
- Machine Learning and Pattern Recognition Algorithms Applied to context of Social Media
- Computer Vision algorithms for the processing of images in the context of social media
Textbook Information
- R. Zafarani, M. A. Abbasi, H. Liu, Social Media Mining - An Introduction, Cambridge University Press, 2014
- C. Bishop, Pattern Recognition and Machine Learning, Springer, 2006
- E. Alpaydin, Introduction to Machine Learning, The MIT Press, 2009
- Y. Bengio, I. J. Goodfellow, A.Courville, Deep Learning, Book in preparation for MIT Press, 2015
- Duda, P. E. Hart, D. G. Stork, Pattern Classification (2nd ed.), Wiley, 2000
- R. Szeliski, Computer Vision: Algorithms and Application, Springer 2010