30600 - SOCIAL NETWORKS IN ORGANIZATIONS
Department of Management and Technology
ALESSANDRO IORIO
Mission & Content Summary
MISSION
CONTENT SUMMARY
- Social network theories, concepts, and terminology (e.g., structural holes, social capital, social influence, origins and evolutions of network structures).
- Using matrices and graphs to represent social relationships (e.g., one-mode and two-mode networks, layout algorithms, network visualizations).
- Methods and measures to understand network data (e.g., centrality algorithms, cliques and communities, positions and roles, scale-free networks).
- Applications of social network analysis (e.g., professional networking, strategic alliances, organizational change, key-player detection).
Intended Learning Outcomes (ILO)
KNOWLEDGE AND UNDERSTANDING
- Explain the most important social network theories and identify their application to practical managerial problems and contexts.
- Recall the main terminology and define concepts associated with the analysis of social networks.
- Illustrate the main social network measures and statistical techniques that can be used to analyze relational data.
- Build effective professional networking that can help advancing your career
- Contrast different ways of visualizing social networks and illustrate the implications of their use.
- Articulate the strengths and limitations of the social network approach.
APPLYING KNOWLEDGE AND UNDERSTANDING
- Apply social network concepts to aid practical managerial decisions.
- Examine a business situation through a social network perspective to determine management needs.
- Improve their ability to establish and maintain effective professional networks.
- Design social network surveys to collect and analyze relational data.
- Employ statistical techniques and social network software to calculate different social network measures.
- Create detailed social network reports to communicate results in an effective way, including compelling and powerful network visualizations.
Teaching methods
- Lectures
- Guest speaker's talks (in class or in distance)
- Practical Exercises
- Individual works / Assignments
- Collaborative Works / Assignments
- Interaction/Gamification
DETAILS
The course leverages a blend of methods aimed at complementing each other and optimizing the learning experience.
- Lectures are used to discuss social network theories and concepts as well as the technical aspects associated with the collection and analysis of social network data. During such lectures, students also have the chance to work with case studies, interactive class activities, and short individual exercises that help them understand the peculiarities associated with these types of data.
- Lab sessions provide students with a hands-on experience of the topics and methods discussed in class. These practice sessions focus on issues related to both research design and data analysis, and they require the use of personal computers. The specific software that will be used is UCINET, which includes the standard tools used in social network analysis. All students are required to download on their PC the latest version of UCINET (https://sites.google.com/site/ucinetsoftware/home).
- Finally, students also put their knowledge into practice by participating in a group project. Putting on their “network consulting” hat, students will analyze and present network data in class to the instructor and other students toward the end of the course. This activity will allow them to experience first-hand the challenges associated with analyzing and presenting network data to different stakeholders.
Assessment methods
Continuous assessment | Partial exams | General exam | |
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ATTENDING STUDENTS
Class attendance is strongly encouraged. Attending students are evaluated based on the following three criteria:
- In-class contribution (10% of the final grade) aimed to test the students’ ability to interact in a constructive way and present their points of view in an effective way in both face-to-face lectures and lab sessions.
- Group project (30% of the final grade) aimed to test the students' critical application of the network concepts and methodologies learned during the course. Moreover, the group project allows for testing students' ability to present their results in an effective way in both written and oral form.
- Final written exam (60% of the final grade) that includes open and/or closed answers, aimed to test students' knowledge of the main theories, terminology, and concepts associated with the study of social networks, as well as the statistical techniques and software used to analyze different types relational data.
NOT ATTENDING STUDENTS
Non-attending students are evaluated only on the basis of a final written exam that includes open and/or closed answers aimed at testing students' knowledge of the main theories, terminology, and concepts associated with the study of social networks, as well as the statistical techniques and software used to analyze different types relational data.
Teaching materials
ATTENDING STUDENTS
Lecture slides.
Hanneman, R. A., & Riddle, M. (2005). Introduction to Social Network Methods. Available online free of charge at http://faculty.ucr.edu/~hanneman/nettext/.
Borgatti, S. P., Everett, M. G., & Johnson, J. C. (2018). Analyzing Social Networks (2nd edition). SAGE Publications Limited.
In addition to lectures, the course has also some lab-exercise sessions. Problem sets and their solutions will be posted on the online platform of the course.
NOT ATTENDING STUDENTS
In addition to the materials for attending students, non-attending students will need to read the book "Linked" by Prof. Barabasi.