10:00am-10:00pm (Fri Off)

061-6511828, 061-6223080 / 0333-6110619, 0371-0621455

Data Mining: Concepts and Techniques 4th Edition 
by Jiawei Han (Author), Jian Pei (Author), Hanghang Tong (Author)
Quality: White Paper Pakistan Print


Data Mining: Concepts and Techniques (4th Edition)
from The Morgan Kaufmann Series in Data Management Systems is a definitive guide for students, professionals, and researchers looking to explore the field of data mining and knowledge discovery from data (KDD). This book provides a thorough introduction to data mining concepts, principles, and practical applications, offering insights into methods for pattern recognition, classification, clustering, and outlier detection from massive data sets.

Key Features:

  • Comprehensive Coverage: Covers fundamental concepts such as frequent pattern mining, classification, clustering, and outlier detection.
  • New Chapter on Deep Learning: Includes the latest deep learning advancements, such as CNNs, RNNs, and training optimization techniques.
  • Advanced Data Mining Applications: Explores applications like sentiment analysis, truth discovery, and information propagation.
  • Practical Approach: Emphasizes scalability, effectiveness, and real-world applicability of data mining techniques.
  • Illustrative Examples: Step-by-step explanations and practical case studies to enhance understanding.
  • Emerging Trends: Covers recent advancements in text mining, spatiotemporal data, and graph/network analysis.
  • Exercises & Bibliographic Notes: Each chapter includes exercises for hands-on practice and further reading recommendations.

Topics Covered:

  1. Data Mining Basics – Concepts, types, and applications of data mining.
  2. Data Preprocessing – Data cleaning, transformation, and dimensionality reduction.
  3. Data Warehousing & OLAP – Concepts of data warehouses, schemas, and OLAP operations.
  4. Pattern Mining – Techniques for finding frequent itemsets, associations, and correlations.
  5. Classification Techniques – Decision trees, Bayesian classifiers, and SVMs.
  6. Clustering Methods – Hierarchical, density-based, and high-dimensional clustering techniques.
  7. Outlier Detection – Identifying anomalies using statistical and machine learning approaches.
  8. Deep Learning Concepts – Training models and working with CNNs, RNNs, and GNNs.
  9. Future Trends in Data Mining – Mining social media, spatiotemporal data, and ethical considerations.

Ideal For:

  • Students pursuing degrees in computer science, data science, and business analytics.
  • Professionals and Researchers in AI, machine learning, and big data analytics.
  • Data Analysts seeking to enhance their technical knowledge in pattern recognition and classification.
  • Industry Practitioners looking for insights into practical applications of data mining techniques.

Recently Viewed Products