The course will enable the students to
Course Outcomes (COs):
Learning Outcome (at course level) | Learning and teaching strategies | Assessment Strategies |
---|---|---|
CO 62 Explain basic concepts of Web mining. CO 63 Compare types of web data and web mining methods CO 64 Develop skills of using WEKA tool to perform preprocessing, clustering, classification on web data. CO 65 Explain structure of data on web. CO 66 Demonstrate various pattern discovery and analysis techniques | Interactive Lectures, Discussion, Tutorials, reading assignments, Demonstrations, Team teaching, Teaching using advanced IT audio-video tools, G-suite. Self-learning assignments, Effective questions, Simulation, Seminar presentation | Class test, Semester end examinations, Quiz, Solving problems in tutorials, Assignments, Presentation, Individual and group projects |
Data mining and knowledge discovery, The KDD process, Data preparation for knowledge discovery, Introduction of various data mining techniques (Clustering, Classification, and Association rule mining), Supervised, semi supervised and unsupervised learning,
WWW, Web Mining, Web mining and Data mining, Types of web mining (Content, Usage and Structure), Types of data: Structured and Unstructured Data, Sources of Data, Stages of web mining (Preprocessing, Pattern discovery and analysis), Privacy Tradeoff.
Web Link Mining, Hyperlink based Ranking, Page Rank, Link-Based Similarity Search -Enhanced Techniques for Page Ranking, Implementation Issues, Web Crawlers
Click stream Analysis, Web Server Log Files, Pattern discovery and pattern analysis techniques (Session and Visitor Analysis, Cluster Analysis (K means clustering) and Visitor Segmentation, Association and Correlation Analysis, Analysis of Sequential Patterns, Classification and Prediction based on Web (Decision tree))
Personalized Customer Experience in B2C E-commerce, Web Search, Web wide user tracking, Auction Sites, Information Retrieval systems, Targeted marketing.