The Elements of Statistical Learning 2nd Edition by Trevor Hastie (Author)
- Publisher: COMPUTER SCIENCE
- Availability: In Stock
- SKU: 59317
- Number of Pages: 767
Rs.1,690.00
Rs.2,095.00
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📖 Title Name: The Elements of Statistical Learning: Data Mining, Inference, and Prediction (2nd Edition)
✍️ Author: Trevor Hastie, Robert Tibshirani, Jerome Friedman
📦 Quality: White Paper Pakistan Print
🔹 Introduction:
The Elements of Statistical Learning is a foundational text in data science, offering a deep and comprehensive understanding of statistical modeling, machine learning, and predictive analytics. Written by leading experts, this book bridges theory and practical application, making it essential for students, researchers, and professionals working with data mining and inference techniques.
🔑 Key Points:
- Covers core concepts of statistical learning, including supervised and unsupervised methods.
- Explains advanced models like decision trees, neural networks, and support vector machines.
- Focuses on data mining techniques for extracting meaningful insights from large datasets.
- Provides mathematical foundations for inference and prediction models.
- Combines theory with practical examples for real-world data analysis.
🕌 Conclusion:
This book stands as a cornerstone in the field of data science and machine learning. With its rigorous approach and detailed explanations, it equips readers with the knowledge needed to build, evaluate, and apply predictive models effectively.