This comprehensive course explores the intersection of social media platforms and network science, providing students with essential skills for analysing digital social interactions. Beginning with graph theory fundamentals, students learn to model social media data as networks and apply mathematical frameworks to extract meaningful insights.

Introduction to Social Media Analytics

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What you'll learn
Apply graph theory, centrality measures, and community detection to model and understand social media platforms as complex networks.
Develop recommender systems, predict information diffusion patterns, and create viral marketing strategies using network science principles.
Apply machine learning, data stream mining, and predictive modelling for large-scale social media analysis and harmful content detection.
Apply responsible data collection practices, evaluate algorithmic bias, and assess societal implications of social media technologies.
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June 2026
116 assignments
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There are 10 modules in this course
This foundational module introduces students to the intersection of social media platforms and network science. You will explore how social media ecosystems function as complex networks and master fundamental graph theory concepts essential for social media analytics. Key concepts include social media platform typologies, graph structures (nodes, edges, directed/undirected networks), representation methods (adjacency matrices, lists), and ethical data collection practices. Through hands-on demonstrations with NetworkX, you will build practical skills in modelling social media interactions as graphs. This module establishes the theoretical and practical foundation necessary for advanced network analysis in subsequent modules.
What's included
22 videos5 readings13 assignments
22 videos•Total 166 minutes
- Course Introduction•4 minutes
- Meet Your Instructor: Prof. Aneesh Chivakula•1 minute
- Meet Your Instructor: Prof. Seetha Parameswaran•2 minutes
- Why Social Media Analytics Matters•3 minutes
- Social Media Definition and Evolution•10 minutes
- Types of Social Media Platforms•12 minutes
- Social Media Mining Applications and Challenges•7 minutes
- Exploring Different Social Media Platforms and Their Data Structures•12 minutes
- Graph Basics - Building Blocks of Networks•8 minutes
- Directed vs. Undirected Graphs in Social Media•7 minutes
- Basic Graph Properties•9 minutes
- Modelling Social Media as Networks•8 minutes
- Demo: Creating Basic Social Media Graphs with NetworkX•13 minutes
- Adjacency Matrix Representation•8 minutes
- Adjacency List Representation•6 minutes
- Edge List and Other Representations•7 minutes
- Demo: Implementing Different Graph Representations in Python•12 minutes
- Introduction to Social Media APIs•6 minutes
- Data Storage and Management•6 minutes
- Privacy and Ethical Considerations•11 minutes
- Demo: Building Ethical Social Media Data Collection Pipeline•10 minutes
- From Theory to Practice•4 minutes
5 readings•Total 70 minutes
- Course Overview•10 minutes
- Recommended Reading: Social Media Landscape and Mining Fundamentals•15 minutes
- Recommended Reading: Graph Theory Fundamentals•15 minutes
- Recommended Reading: Graph Representation Models •15 minutes
- Recommended Reading: Data Collection, Processing, and Ethics•15 minutes
13 assignments•Total 78 minutes
- Social Media Definition and Evolution•6 minutes
- Types of Social Media Platforms•6 minutes
- Social Media Mining Applications and Challenges•6 minutes
- Graph Basics: Building Blocks of Networks•6 minutes
- Directed vs. Undirected Graphs in Social Media•6 minutes
- Basic Graph Properties•6 minutes
- Modelling Social Media as Networks•6 minutes
- Adjacency Matrix Representation•6 minutes
- Adjacency List Representation•6 minutes
- Edge List and Other Representations•6 minutes
- Introduction to Social Media APIs•6 minutes
- Data Storage and Management•6 minutes
- Privacy and Ethical Considerations•6 minutes
This module explores advanced graph types, including bipartite, weighted, temporal, and scale-free networks common in social media platforms. Students implement fundamental graph algorithms like DFS, BFS, and Dijkstra's algorithm for network exploration and shortest path analysis. The module covers network connectivity, components, and global properties such as density and efficiency. Students learn to analyse network structures and understand algorithmic complexity considerations for large-scale social media networks. Practical demonstrations guide students through implementing graph algorithms and analysing real social media network properties using computational tools.
What's included
17 videos3 readings12 assignments
17 videos•Total 137 minutes
- Understanding Network Structure•3 minutes
- Bipartite Networks and Projections•6 minutes
- Weighted Networks in Social Media•9 minutes
- Scale-free and Small-world Networks•9 minutes
- Measuring Network Connectivity•6 minutes
- Creating and Analysing Different Network Types•8 minutes
- DFS and Network Exploration•7 minutes
- BFS and Distance Analysis•8 minutes
- Dijkstra's Algorithm for Weighted Networks•8 minutes
- Basic Network Flow Concepts•7 minutes
- Identifying and Analysing Special Graph Structures•11 minutes
- Network Density and Clustering•8 minutes
- Trees and Hierarchical Structures•10 minutes
- Algorithm Complexity and Practical Considerations•10 minutes
- Analysing Connectivity in Real Networks•12 minutes
- Graph Algorithms Implementation•12 minutes
- From Structure to Behaviour•4 minutes
3 readings•Total 90 minutes
- Recommended Reading: Advanced Graph Types and Network Models•30 minutes
- Recommended Reading: Graph Algorithms for Network Analysis•30 minutes
- Recommended Reading: Graph Connectivity and Basic Properties•30 minutes
12 assignments•Total 126 minutes
- Graded Quiz - Week 1 and 2•60 minutes
- Bipartite Networks and Projections•6 minutes
- Weighted Networks in Social Media•6 minutes
- Scale-free and Small-world Networks•6 minutes
- Measuring Network Connectivity•6 minutes
- DFS and Network Exploration•6 minutes
- BFS and Distance Analysis•6 minutes
- Dijkstra's Algorithm for Weighted Networks•6 minutes
- Basic Network Flow Concepts•6 minutes
- Network Density and Clustering•6 minutes
- Trees and Hierarchical Structures•6 minutes
- Algorithm Complexity and Practical Considerations•6 minutes
This module focuses on measuring node importance and identifying influential users in social networks. Students master fundamental centrality measures including degree, betweenness, closeness, and PageRank algorithms to analyse user roles and network positions. The module covers local node properties, structural patterns like transitivity and homophily, and link prediction techniques. Students learn to profile users based on multiple network measures and understand social network formation principles. Hands-on demonstrations teach students to compute centrality measures and build comprehensive user analysis systems for social media applications.
What's included
17 videos3 readings15 assignments
17 videos•Total 144 minutes
- Measuring Importance in Networks•3 minutes
- Introduction to Network Measures•8 minutes
- Degree Centrality•9 minutes
- Basic Node Properties•8 minutes
- Node Classification and Roles•7 minutes
- Computing Basic Network Measures for Social Media Users•9 minutes
- Betweenness Centrality•9 minutes
- Closeness Centrality•10 minutes
- PageRank Algorithm•10 minutes
- Centrality Comparison and Selection•8 minutes
- Calculating and Comparing Different Centrality Measures•10 minutes
- Transitivity and Reciprocity•9 minutes
- Homophily and Assortativity Basics•11 minutes
- Link Prediction and Practical Applications•10 minutes
- Analysing Social Patterns in Network Data•10 minutes
- Building User Profiles Using Network Measures•10 minutes
- From Individual Nodes to Groups•5 minutes
3 readings•Total 90 minutes
- Recommended Reading: Basic Network Measures and Node Properties•30 minutes
- Recommended Reading: Advanced Centrality Measures •30 minutes
- Recommended Reading: Social Network Patterns•30 minutes
15 assignments•Total 90 minutes
- Introduction to Network Measures•6 minutes
- Degree Centrality•6 minutes
- Basic Node Properties•6 minutes
- Node Classification and Roles•6 minutes
- Computing Basic Network Measures for Social Media Users•6 minutes
- Betweenness Centrality•6 minutes
- Closeness Centrality•6 minutes
- PageRank Algorithm•6 minutes
- Centrality Comparison and Selection•6 minutes
- Calculating and Comparing Different Centrality Measures•6 minutes
- Transitivity and Reciprocity•6 minutes
- Homophily and Assortativity Basics•6 minutes
- Link Prediction and Practical Applications•6 minutes
- Analysing Social Patterns in Network Data•6 minutes
- Building User Profiles Using Network Measures•6 minutes
This module examines methods for identifying and analysing groups within social networks. Students explore community detection approaches, including modularity-based methods, the Louvain algorithm, and spectral clustering techniques. The module covers overlapping communities, dynamic community evolution, and quality evaluation metrics. Students learn to compare different detection algorithms and understand their strengths and limitations. Applications in targeted marketing, content recommendation, and information flow analysis are emphasised. Practical demonstrations guide students through the implementation of community detection algorithms and the analysis of community structure in real social media networks.
What's included
17 videos3 readings16 assignments
17 videos•Total 136 minutes
- Finding Groups in Social Networks•4 minutes
- Social Communities Definition and Characteristics•8 minutes
- Community Detection Approaches•8 minutes
- Modularity-Based Community Detection•7 minutes
- Simple Community Detection Algorithms•5 minutes
- Visualising and Exploring Communities in Real Networks•9 minutes
- Louvain Algorithm•6 minutes
- Spectral Methods for Community Detection•8 minutes
- Overlapping Communities•9 minutes
- Dynamic Community Detection•9 minutes
- Implementing Basic Community Detection Algorithms•10 minutes
- Community Quality Evaluation•6 minutes
- Algorithm Comparison•9 minutes
- Social Media Applications•8 minutes
- Hierarchical Community Detection•13 minutes
- Overlapping Community Detection•12 minutes
- From Structure to Behaviour•3 minutes
3 readings•Total 90 minutes
- Recommended Reading: Community Fundamentals and Basic Detection•30 minutes
- Recommended Reading: Advanced Detection Methods•30 minutes
- Recommended Reading: Advanced Community Detection•30 minutes
16 assignments•Total 150 minutes
- Graded Quiz - Week 3 and 4•60 minutes
- Social Communities Definition and Characteristics•6 minutes
- Community Detection Approaches•6 minutes
- Modularity-Based Community Detection•6 minutes
- Simple Community Detection Algorithms•6 minutes
- Visualising and Exploring Communities in Real Networks•6 minutes
- Louvain Algorithm•6 minutes
- Spectral Methods for Community Detection•6 minutes
- Overlapping Communities•6 minutes
- Dynamic Community Detection•6 minutes
- Implementing Basic Community Detection Algorithms•6 minutes
- Community Quality Evaluation•6 minutes
- Algorithm Comparison•6 minutes
- Social Media Applications•6 minutes
- Hierarchical Community Detection•6 minutes
- Overlapping Community Detection•6 minutes
This module studies how information and behaviours spread through social media networks. Students explore diffusion models, including independent cascade and linear threshold mechanisms, along with influence maximisation techniques. The module covers collective behaviours such as herd mentality, echo chambers, and social contagion phenomena. Students learn to detect information cascades, distinguish influence from homophily, and predict viral content. Applications in crisis detection, marketing campaigns, and behaviour prediction are emphasised. Comprehensive demonstrations teach students to simulate diffusion models and analyse real-world information spread patterns.
What's included
17 videos3 readings11 assignments
17 videos•Total 106 minutes
- How Information and Behaviour Spread•2 minutes
- Information Diffusion Fundamentals•5 minutes
- Independent Cascade Model•5 minutes
- Linear Threshold Model•5 minutes
- Influence Maximisation Basics•5 minutes
- Simulating Information Diffusion in Social Networks•7 minutes
- Herd Behaviour and Social Proof•6 minutes
- Echo Chambers and Filter Bubbles•5 minutes
- Social Contagion Mechanisms•6 minutes
- Cascade Detection and Measurement•6 minutes
- Detecting and Analysing Herd Behaviour in Social Media Data•10 minutes
- Influence vs. Homophily•6 minutes
- Behaviour Prediction Methods•6 minutes
- Applications in Social Media Analytics•6 minutes
- Measuring and Modelling Influence vs Homophily•9 minutes
- Building Complete Behaviour Analytics Pipeline•14 minutes
- From Structure to Behaviour•3 minutes
3 readings•Total 90 minutes
- Recommended Reading: Information Diffusion Models•30 minutes
- Recommended Reading: Collective Behaviour and Social Phenomena•30 minutes
- Recommended Reading: Influence Analysis and Behaviour Prediction•30 minutes
11 assignments•Total 66 minutes
- Information Diffusion Fundamentals•6 minutes
- Independent Cascade Model•6 minutes
- Linear Threshold Model•6 minutes
- Influence Maximisation Basics•6 minutes
- Herd Behaviour and Social Proof•6 minutes
- Echo Chambers and Filter Bubbles•6 minutes
- Social Contagion Mechanisms•6 minutes
- Cascade Detection and Measurement•6 minutes
- Influence vs. Homophily•6 minutes
- Behaviour Prediction Methods•6 minutes
- Applications in Social Media Analytics•6 minutes
This module describes the design of recommender systems in the modelling of social media. The application domains for the recommendation models and systems are summarised. The Internet-scale algorithms using rule-based and parameter-based techniques are given. Further optimisation based on recent advancements in deep learning is also discussed. The various data analytics tasks in the recommendation problems are given based on the previously studied data mining models, such as clustering, frequent pattern mining, and association rule mining.
What's included
12 videos3 readings12 assignments
12 videos•Total 79 minutes
- Social Recommendation Approaches•5 minutes
- Cross-Domain Recommendation Approaches•4 minutes
- Web Intelligence-Powered Recommendation•7 minutes
- Recommender System Design•6 minutes
- Memory-Based Methods•5 minutes
- Factorisation Machines•8 minutes
- Computational Optimization Algorithms•10 minutes
- Neural Factorisation Machines•6 minutes
- Clustering Algorithms•7 minutes
- Frequent Pattern Mining Algorithms•9 minutes
- Association Rule Mining Algorithms•10 minutes
- Module Wrap-Up•1 minute
3 readings•Total 55 minutes
- Recommended Reading: Practical Realisations of Collective Intelligence•20 minutes
- Recommended Reading: Recommendation Algorithms•20 minutes
- Recommended Reading: Knowledge Discovery Methods•15 minutes
12 assignments•Total 156 minutes
- Graded Quiz - Week 5 and 6 •90 minutes
- Social Recommendation Approaches•6 minutes
- Cross-Domain Recommendation Approaches•6 minutes
- Web Intelligence-Powered Recommendation•6 minutes
- Recommender System Design•6 minutes
- Memory-Based Methods•6 minutes
- Factorisation Machines•6 minutes
- Computational Optimization Algorithms•6 minutes
- Neural Factorisation Machines•6 minutes
- Clustering Algorithms•6 minutes
- Frequent Pattern Mining Algorithms•6 minutes
- Association Rule Mining Algorithms•6 minutes
This module provides the characterisation of big data generated on social media platforms. It provides an introduction to the adaptations of the data analytics tasks for processing big data. Complex graph analysis is explained in terms of dynamic networks formed on social media datasets. The corresponding mathematical properties to be satisfied by the complex datasets, such as non-stationarity and causality, are then incorporated into the data analytics algorithms. The resultant downstream applications are discussed with reference to recent developments in Agentic AI. Emerging technologies based on AI robustness and fairness are also introduced with reference to misinformation, disinformation, and the weaponisation of social media in multi-stage cyber attack campaigns.
What's included
10 videos2 readings8 assignments
10 videos•Total 107 minutes
- Predictive Modelling•13 minutes
- Data Stream Mining•14 minutes
- Non-Stationary Data Analytics•10 minutes
- Dynamic Network Analysis•12 minutes
- Virtual Assistants•12 minutes
- Agentic AI Evolution•10 minutes
- Adversarial Robustness•10 minutes
- Information Asymmetry - Part 1•8 minutes
- Information Asymmetry - Part 2•8 minutes
- Information Asymmetry - Part 3•10 minutes
2 readings•Total 40 minutes
- Recommended Reading: Neuro-Symbolic AI•20 minutes
- Recommended Reading: Agentic AI•20 minutes
8 assignments•Total 48 minutes
- Predictive Modelling•6 minutes
- Data Stream Mining•6 minutes
- Non-stationary Data Analytics•6 minutes
- Dynamic Network Analysis•6 minutes
- Virtual Assistants•6 minutes
- Agentic AI Evolution•6 minutes
- Adversarial Robustness•6 minutes
- Information Asymmetry•6 minutes
This module introduces robust and privacy-aware algorithm design for social media systems operating under adversarial conditions. It covers polarization mitigation through network interventions and adversarial perturbations, misinformation detection, encryption and anonymization techniques, reinforcement and bandit learning for adaptive recommendation, and hybrid deep learning models. The module also integrates MLOps practices for deploying, monitoring, and maintaining responsible ML-driven platforms.
What's included
11 videos3 readings12 assignments
11 videos•Total 95 minutes
- Strategic Classification•8 minutes
- Prediction Games•9 minutes
- Counterfactual Fairness•5 minutes
- Machine Unlearning•6 minutes
- Social Media Polarisation•4 minutes
- Privacy Preservation•9 minutes
- Data Encryption•10 minutes
- Bandit Learning•12 minutes
- Robustness of Recommendation•12 minutes
- Hybrid Learning Systems•10 minutes
- MLOps •9 minutes
3 readings•Total 60 minutes
- Recommended Reading: Responsible AI•20 minutes
- Recommended Reading: Robust AI•20 minutes
- Recommended Reading: Hybrid AI•20 minutes
12 assignments•Total 126 minutes
- Graded Quiz - Week 7 and 8•60 minutes
- Strategic Classification•6 minutes
- Prediction Games•6 minutes
- Counterfactual Fairness•6 minutes
- Machine Unlearning•6 minutes
- Social Media Polarisation•6 minutes
- Privacy Preservation•6 minutes
- Data Encryption•6 minutes
- Bandit Learning•6 minutes
- Robustness of Recommendation•6 minutes
- Hybrid Learning Systems•6 minutes
- MLOps•6 minutes
This module examines advanced content-based and personalised recommendation frameworks in social media ecosystems. It introduces language modelling, topic modelling, and novelty-detection filters for analysing multilingual and multimedia content. Knowledge representation through semantic web architectures, ontology engineering, and knowledge graphs is integrated with web data mining techniques. The module further explores transformer architectures, foundation models, multimodal learning systems, and adversarial deep learning in black-box environments. Privacy-preserving analytics and adversarial attacks on data privacy models are discussed within the broader context of responsible and scalable social media intelligence systems.
What's included
8 videos2 readings8 assignments
8 videos•Total 81 minutes
- Content-Based Filtering•9 minutes
- Novelty Detection Filters - Part 1•10 minutes
- Novelty Detection Filters - Part 2•12 minutes
- Topic Modelling•8 minutes
- Semantic Web Mining•9 minutes
- Natural Language Generation•10 minutes
- Transformer Models•11 minutes
- Adversarial Learning in Foundation Models•13 minutes
2 readings•Total 40 minutes
- Recommended Reading: Text Analytics•20 minutes
- Recommended Reading: Large Language Models•20 minutes
8 assignments•Total 48 minutes
- Content-Based Filtering•6 minutes
- Novelty Detection Filters - Part 1•6 minutes
- Novelty Detection Filters - Part 2•6 minutes
- Topic Modelling•6 minutes
- Semantic Web Mining•6 minutes
- Natural Language Generation•6 minutes
- Transformer Models•6 minutes
- Adversarial Learning in Foundation Models•6 minutes
This module examines algorithmic approaches to detecting and countering malicious content and adversarial behaviour in digital ecosystems. It covers fake news characterization, misinformation propagation patterns, feature engineering, and graph-based detection models. Image forensics and deepfake generation and detection are analysed using adversarial learning, geometric features, and decision boundary sensitivity analysis. The module further explores cyberbullying detection, phishing and URL analysis, information warfare strategies, and adversarial deep learning in attack–defense scenarios. Applications include LLMs, foundation models, wargaming simulations, multi-agent systems, and game-theoretic frameworks for AI-driven cybersecurity and strategic decision-making environments.
What's included
9 videos3 readings9 assignments
9 videos•Total 105 minutes
- Fake News Detection•16 minutes
- Deepfakes•14 minutes
- Cyberbullying Detection •8 minutes
- Cybercrime Detection•13 minutes
- Adversarial AI in Information Warfare•16 minutes
- Computational Red Teaming•12 minutes
- Advanced Persistent Threats•10 minutes
- Wargaming•13 minutes
- Course Wrapup•4 minutes
3 readings•Total 50 minutes
- Recommended Reading: Digital Forensics•20 minutes
- Recommended Reading: Information Warfare•20 minutes
- Course Summary•10 minutes
9 assignments•Total 108 minutes
- Graded Quiz - Week 9 and 10 •60 minutes
- Fake News Detection•6 minutes
- Deepfakes•6 minutes
- Cyberbullying Detection •6 minutes
- Cybercrime Detection•6 minutes
- Adversarial AI in Information Warfare•6 minutes
- Computational Red Teaming•6 minutes
- Advanced Persistent Threats•6 minutes
- Wargaming•6 minutes
Build toward a degree
This course is part of the following degree program(s) offered by Birla Institute of Technology & Science, Pilani. If you are admitted and enroll, your completed coursework may count toward your degree learning and your progress can transfer with you.¹
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