Course Objectives
This course enables the students to
Course Outcomes(COs):
Learning Outcome (at course level)
| Learning and teaching strategies | Assessment Strategies |
| Approach in teaching: Interactive Lectures, Discussion, Demonstration with real world examples, Role plays, tool based experiment
Learning activities for the students: Self-learning assignments, Quiz activity, Effective questions, case study based learning approach, presentation, flip classroom
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Data Warehousing: Basic Concepts, Architecture of Data Warehouse, OLAP and Data Cubes, Dimensional Data Modeling-star, snowflake schemas , Data Preprocessing – Need, Data Cleaning, Data Integration &Transformation, Data Reduction
Introduction to Data Mining: Basic Data Mining Tasks, Data Mining versus Knowledge Discovery process , Data Mining Issues, Data Mining Metrics, Social Implications of Data Mining, Overview of Applications of Data Mining
Data Mining Techniques: Frequent item-sets and Association rule mining: Apriori algorithm, Use of sampling for frequent item-set, FP tree algorithm
Mining Various Kinds of Association Rules – Association Mining to Correlation Analysis – Constraint-Based Association Mining.
Classification & Prediction: Decision tree learning: Construction, performance, attribute selection Issues: Over-fitting, tree pruning methods, missing values, continuous classes Classification and Regression Trees (CART) , Bayesian Classification: Bayes Theorem, Naïve Bayes classifier, Bayesian Networks Inference , Parameter and structure learning: Linear classifiers, Least squares, logistic, perceptron and SVM classifiers, KNN classifiers, Prediction: Linear regression, Non-linear regression
Accuracy Measures: Precision, recall, F-measure, confusion matrix, cross-validation, bootstrap, Clustering: k-means, k-medoids, Expectation Maximization (M) algorithm, Hierarchical clustering, Correlation clustering. Brief overview of advanced techniques: Active learning, Reinforcement learning, Text mining, Graphical models, Web Mining , Basics of Data Mining Tools
· Jiawei Han & Micheline Kamber, “Data Mining: Concepts & Techniques”, Morgan Kaufmann Publishers,3rd Edition, 2011
· Mohanty, Soumendra, “Data Warehousing: Design, Development and Best Practices”, Tata McGraw Hill, 2006
· W. H. Inmon, “Building the Data Warehouse”, Wiley Dreamtech India Pvt. Ltd., 4th Edition, 2005
Suggested Readings:
· Pieter Adriaans & Dolf Zentinge, “Data Mining”, Addison-Wesley, Pearson, 2000.
· Daniel T. Larose, “Data Mining Methods & Models”, Wiley-India, 2007.
· Vikram Pudi & P. Radha Krishnan, “Data Mining”, Oxford University Press, 2009.
· Alex Berson & Stephen J. Smith, “Data Warehousing, Data Mining & OLAP”, Tata McGraw-Hill, 2004.
· Michael J. A. Berry & Gordon S. Linoff, “Data Mining Techniques”, Wiley-India, 2008.
· Richard J. Roiger & Michael W. Geatz, “Data Mining – a Tutorial-based Primer”, Pearson Education, 2005.
· Margaret H. Dunham & S. Sridhar, “Data Mining: Introductory and Advanced Topics”, Pearson Education, 2008.
G. K. Gupta, “Introduction to Data Mining with Case Studies”, EEE, PHI, 2006.
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